43 results on '"Luca Trapin"'
Search Results
2. Structural change to the persistence of the urban heat island
- Author
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Debbie J Dupuis and Luca Trapin
- Subjects
urbanization ,extreme temperature ,clustering ,Environmental technology. Sanitary engineering ,TD1-1066 ,Environmental sciences ,GE1-350 ,Science ,Physics ,QC1-999 - Abstract
The term urban heat island (UHI) is used to describe the effect of urban temperatures rising several degrees above concurrent temperatures in surrounding suburban or rural areas. This is typically assessed through records of daily extreme temperatures. However, on a hot day the temperature can exceed an extreme threshold for several consecutive hours, forming a cluster of extremes. We use the statistical theory of extreme values combined with a model that allows structural breaks to show that there has been a significant upward shift in the length of clusters in New York City. No such shift is found at a Connecticut location where the usual UHI assessment indicates that the two sites are comparable. Our study is the first to highlight this danger of the UHI. Prolonged exposure to extreme temperatures has deleterious effects on both health and the environment.
- Published
- 2020
- Full Text
- View/download PDF
3. Testing liquidity: A statistical theory based on asset staleness
- Author
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Davide Pirino, Alessandro Pollastri, and Luca Trapin
- Subjects
Statistics and Probability ,Economics and Econometrics ,Settore SECS-S/06 ,Statistics, Probability and Uncertainty - Published
- 2022
4. Estimating and Forecasting Conditional Risk Measures with Extreme Value Theory: A Review
- Author
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Marco Bee and Luca Trapin
- Subjects
Extreme Value Theory ,volatility ,risk ,quantile ,Insurance ,HG8011-9999 - Abstract
One of the key components of financial risk management is risk measurement. This typically requires modeling, estimating and forecasting tail-related quantities of the asset returns’ conditional distribution. Recent advances in the financial econometrics literature have developed several models based on Extreme Value Theory (EVT) to carry out these tasks. The purpose of this paper is to review these methods.
- Published
- 2018
- Full Text
- View/download PDF
5. Realized Peaks over Threshold: A Time-Varying Extreme Value Approach with High-Frequency-Based Measures*
- Author
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Debbie J. Dupuis, Luca Trapin, Marco Bee, Bee, Marco, Dupuis, Debbie J, and Trapin, Luca
- Subjects
Economics and Econometrics ,tailrisk ,Settore SECS-S/03 - STATISTICA ECONOMICA ,Realized variance ,forecasting ,Conditional risk measures, forecasting, peaks-over-threshold, realized volatility, tailrisk ,realized volatility ,Settore SECS-P/05 - ECONOMETRIA ,Conditional risk measures ,Forecasting ,Peaks-over-threshold ,Realized volatility ,Tail risk ,Statistical physics ,Extreme value theory ,peaks-over-threshold ,Conditional risk measure ,Finance ,Mathematics - Abstract
Recent contributions to the financial econometrics literature exploit high-frequency (HF) data to improve models for daily asset returns. This paper proposes a new class of dynamic extreme value models that profit from HF data when estimating the tails of daily asset returns. Our realized peaks-over-threshold approach provides estimates for the tails of the time-varying conditional return distribution. An in-sample fit to the S&P 500 index returns suggests that HF data convey information on daily extreme returns beyond that included in low frequency (LF) data. Finally, out-of-sample forecasts of conditional risk measures obtained with HF measures outperform those obtained with LF measures.
- Published
- 2019
6. Cluster analysis of weighted bipartite networks: a new copula-based approach.
- Author
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Alessandro Chessa, Irene Crimaldi, Massimo Riccaboni, and Luca Trapin
- Subjects
Medicine ,Science - Abstract
In this work we are interested in identifying clusters of "positional equivalent" actors, i.e. actors who play a similar role in a system. In particular, we analyze weighted bipartite networks that describes the relationships between actors on one side and features or traits on the other, together with the intensity level to which actors show their features. We develop a methodological approach that takes into account the underlying multivariate dependence among groups of actors. The idea is that positions in a network could be defined on the basis of the similar intensity levels that the actors exhibit in expressing some features, instead of just considering relationships that actors hold with each others. Moreover, we propose a new clustering procedure that exploits the potentiality of copula functions, a mathematical instrument for the modelization of the stochastic dependence structure. Our clustering algorithm can be applied both to binary and real-valued matrices. We validate it with simulations and applications to real-world data.
- Published
- 2014
- Full Text
- View/download PDF
7. Estimating large losses in insurance analytics and operational risk using the g-and-h distribution
- Author
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Luca Trapin, Julien Hambuckers, Marco Bee, Bee M., Hambuckers J., and Trapin L.
- Subjects
Estimation ,050208 finance ,Extreme risk and insurance ,Distribution (number theory) ,business.industry ,Computer science ,Computational finance ,05 social sciences ,Actuarial science ,Operational risk ,Tail analysis ,Analytics ,0502 economics and business ,Econometrics ,050207 economics ,business ,General Economics, Econometrics and Finance ,Advanced econometric ,Finance - Abstract
In this paper, we study the estimation of parameters for g-and-h distributions. These distributions find applications in modeling highly skewed and fat-tailed data, like extreme losses in the banking and insurance sector. We first introduce two estimation methods: a numerical maximum likelihood technique, and an indirect inference approach with a bootstrap weighting scheme. In a realistic simulation study, we show that indirect inference is computationally more efficient and provides better estimates than the maximum likelihood method in the case of extreme features in the data. Empirical illustrations on insurance and operational losses illustrate these findings.
- Published
- 2021
8. Testing a parameter restriction on the boundary for the g-and-h distribution: a simulated approach
- Author
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Luca Trapin, Flavio Santi, Marco Bee, Julien Hambuckers, Bee M., Hambuckers J., Santi F., and Trapin L.
- Subjects
Statistics and Probability ,likelihood ratio ,Distribution (number theory) ,Monte Carlo method ,skewness ,Asymptotic distribution ,01 natural sciences ,010104 statistics & probability ,0502 economics and business ,value-at-risk ,Null distribution ,Applied mathematics ,0101 mathematics ,Power function ,050205 econometrics ,Mathematics ,kurtosis ,05 social sciences ,Skewne ,Computational Mathematics ,likelihood ratio, skewness, kurtosis, value-at-risk ,Skewness ,Log-normal distribution ,Kurtosis ,Kurtosi ,Statistics, Probability and Uncertainty - Abstract
We develop a likelihood-ratio test for discriminating between the g-and-h and the g distribution, which is a special case of the former obtained when the parameter h is equal to zero. The g distribution is a shifted lognormal, and is therefore suitable for modeling economic and financial quantities. The g-and-h is a more flexible distribution, capable of fitting highly skewed and/or leptokurtic data, but is computationally much more demanding. Accordingly, in practical applications the test is a valuable tool for resolving the tractability-flexibility trade-off between the two distributions. Since the classical result for the asymptotic distribution of the test is not valid in this setup, we derive the null distribution via simulation. Further Monte Carlo experiments allow us to estimate the power function and to perform a comparison with a similar test proposed by Xu and Genton (Comput Stat Data Anal 91:78–91, 2015). Finally, the practical relevance of the test is illustrated by two risk management applications dealing with operational and actuarial losses.
- Published
- 2021
9. Managing liquidity with portfolio staleness
- Author
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Giuseppe Buccheri, Luca Trapin, Davide Pirino, Buccheri, Giuseppe, Pirino, Davide, and Trapin, Luca
- Subjects
Computer science ,Settore SECS-P/05 ,Portfolio liquidity ,Investments ,Price staleness ,HAR ,Asset allocation ,Dynamic asset allocation ,Minimum-variance unbiased estimator ,0502 economics and business ,Econometrics ,050207 economics ,Constraint (mathematics) ,050205 econometrics ,Settore SECS-S/03 ,05 social sciences ,Settore SECS-S/06 ,Risk factor (finance) ,Market liquidity ,Portfolio ,Investment ,Price stalene ,General Economics, Econometrics and Finance ,Finance ,Public finance - Abstract
Liquidity is a risk factor of primary relevance that can significantly affect the asset allocation decisions of investors. In this paper, we introduce the concept of portfolio staleness and propose a simple framework to manage portfolio liquidity, intended as the cost needed to liquidate the portfolio. Within this framework, the traditional minimum variance problem is solved under the additional constraint that portfolio staleness must be smaller than a given threshold. We show that a dynamic asset allocation strategy based on the staleness constrained portfolio can significantly enhance portfolio liquidity over the standard minimum variance solution. Meanwhile, the increase in portfolio risk is limited, generating large liquidity gains per unit of risk.
- Published
- 2020
10. Can Volatility Models Explain Extreme Events?*
- Author
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Luca Trapin and Trapin, Luca
- Subjects
Economics and Econometrics ,return predictability ,050208 finance ,Realized variance ,05 social sciences ,Extreme events ,extremal dependence ,Extremal dependence ,01 natural sciences ,tail risk ,realized volatility ,010104 statistics & probability ,volatility models ,Settore SECS-P/05 - ECONOMETRIA ,0502 economics and business ,Econometrics ,Tail risk ,0101 mathematics ,Volatility (finance) ,Empirical evidence ,extremal dependence, realized volatility, return predictability, tail risk, volatility models ,Finance ,Serial dependence ,Mathematics - Abstract
This paper revisits several existing volatility models by the light of extremal dependence, that is, serial dependence in extreme returns. First, we investigate the extremal properties of different high-frequency-based volatility processes and show that only a subset of them can generate dependence in the extremes. Second, we corroborate the empirical evidence on extremal dependence in financial returns, showing that extreme returns present strong and persistent correlation and that extreme negative returns are much more correlated than positive ones. Finally, a large empirical analysis suggests that only models exhibiting extremal dependence and endowed with a leverage component can appropriately explain extreme events.
- Published
- 2017
11. Estimating Value-at-Risk for the g-and-h distribution: an indirect inference approach
- Author
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Julien Hambuckers, Marco Bee, Luca Trapin, Bee, Marco, Hambuckers, Julien, and Trapin, Luca
- Subjects
Settore SECS-S/03 - STATISTICA ECONOMICA ,050208 finance ,Distribution (number theory) ,Value-at-Risk ,g-and-h distribution ,loss model ,indirect inference ,05 social sciences ,Estimator ,Indirect Inference ,Settore SECS-P/05 - ECONOMETRIA ,0502 economics and business ,Statistics ,050207 economics ,General Economics, Econometrics and Finance ,Finance ,Value at risk ,Mathematics ,Quantile - Abstract
The g-and-h distribution is able to handle well the complex behavior of loss data and applied to operational losses suggests that indirect inference estimators of VaR outperform quantile-based estimators.
- Published
- 2019
12. Ground-level ozone: Evidence of increasing serial dependence in the extremes
- Author
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Luca Trapin, Debbie J. Dupuis, Dupuis, Debbie J, and Trapin, Luca
- Subjects
Statistics and Probability ,Ozone ,Series (mathematics) ,Ground Level Ozone ,Estimator ,Extremal dependence ,Trawl process ,Atmospheric sciences ,chemistry.chemical_compound ,chemistry ,Hierarchical models ,Modeling and Simulation ,Change point ,Threshold exceedances ,Settore SECS-P/05 - ECONOMETRIA ,Environmental science ,Respiratory function ,Statistics, Probability and Uncertainty ,Extreme value theory ,Hierarchical model ,Serial dependence ,Threshold exceedance - Abstract
As exposure to successive episodes of high ground-level ozone concentrations can result in larger changes in respiratory function than occasional exposure buffered by lengthy recovery periods, the analysis of extreme values in a series of ozone concentrations requires careful consideration of not only the levels of the extremes but also of any dependence appearing in the extremes of the series. Increased dependence represents increased health risks and it is thus important to detect any changes in the temporal dependence of extreme values. In this paper we establish the first test for a change point in the extremal dependence of a stationary time series. The test is flexible, easy to use and can be extended along several lines. The asymptotic distributions of our estimators and our test are established. A large simulation study verifies the good finite sample properties. The test allows us to show that there has been a significant increase in the serial dependence of the extreme levels of ground-level ozone concentrations in Bloomsbury (UK) in recent years.
- Published
- 2019
13. A simple approach to the estimation of Tukey's gh distribution
- Author
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Marco Bee, Luca Trapin, Bee, Marco, and Trapin, Luca
- Subjects
Statistics and Probability ,Approximate maximum likelihood ,Restricted maximum likelihood ,01 natural sciences ,approximate Bayesian computation ,010104 statistics & probability ,0502 economics and business ,Statistics ,Statistics::Methodology ,Applied mathematics ,0101 mathematics ,050205 econometrics ,Mathematics ,accept–reject algorithm ,risk measurement ,Modeling and Simulation ,Statistics, Probability and Uncertainty ,Applied Mathematics ,Tukey lambda distribution ,Estimation theory ,05 social sciences ,Estimator ,Maximum likelihood sequence estimation ,Statistics::Computation ,Posterior predictive distribution ,Settore SECS-P/05 - ECONOMETRIA ,Probability and Uncertainty ,Likelihood function ,Quantile - Abstract
The Tukey's gh distribution is widely used in situations where skewness and elongation are important features of the data. As the distribution is defined through a quantile transformation of the normal, the likelihood function cannot be written in closed form and exact maximum likelihood estimation is unfeasible. In this paper we exploit a novel approach based on a frequentist reinterpretation of Approximate Bayesian Computation for approximating the maximum likelihood estimates of the gh distribution. This method is appealing because it only requires the ability to sample the distribution. We discuss the choice of the input parameters by means of simulation experiments and provide evidence of superior performance in terms of Root-Mean-Square-Error with respect to the standard quantile estimator. Finally, we give an application to operational risk measurement.
- Published
- 2016
14. Realizing the extremes: Estimation of tail-risk measures from a high-frequency perspective
- Author
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Marco Bee, Debbie J. Dupuis, Luca Trapin, Bee, Marco, Dupuis, Debbie J, and Trapin, Luca
- Subjects
Economics and Econometrics ,Realized variance ,Studentized residual ,01 natural sciences ,Realized volatility, High-frequency data, Extreme Value Theory, Value-at-Risk, Expected Shortfall ,Expected Shortfall ,Extreme Value Theory ,High-frequency data ,Realized volatility ,Value-at-Risk ,Finance ,010104 statistics & probability ,0502 economics and business ,Statistics ,Econometrics ,Economics ,050207 economics ,0101 mathematics ,Extreme value theory ,Estimation ,05 social sciences ,Filter (signal processing) ,Expected shortfall ,Settore SECS-P/05 - ECONOMETRIA ,Tail risk ,Value at risk - Abstract
This article applies realized volatility forecasting to Extreme Value Theory (EVT). We propose a two-step approach where returns are first pre-whitened with a high-frequency based volatility model, and then an EVT based model is fitted to the tails of the standardized residuals. This realized EVT approach is compared to the conditional EVT of McNeil & Frey (2000). We assess both approaches' ability to filter the dependence in the extremes and to produce stable out-of-sample VaR and ES estimates for one-day and ten-day time horizons. The main finding is that GARCH-type models perform well in filtering the dependence, while the realized EVT approach seems preferable in forecasting, especially at longer time horizons.
- Published
- 2016
15. Realized extreme quantile: A joint model for conditional quantiles and measures of volatility with EVT refinements
- Author
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Marco Bee, Debbie J. Dupuis, Luca Trapin, Bee, Marco, Dupuis, Debbie J., and Trapin, Luca
- Subjects
Quasi-maximum likelihood ,Social Sciences (miscellaneous) ,Economics and Econometrics ,Statistics::Theory ,Statistics::Applications ,05 social sciences ,Estimator ,01 natural sciences ,Quantile regression ,Statistics::Computation ,010104 statistics & probability ,0502 economics and business ,Settore SECS-P/05 - ECONOMETRIA ,Econometrics ,Statistics::Methodology ,0101 mathematics ,Volatility (finance) ,Extreme value theory ,050205 econometrics ,Quantile ,Mathematics - Abstract
We propose a new framework exploiting realized measures of volatility to estimate and forecast extreme quantiles. Our realized extreme quantile (REQ) combines quantile regression with extreme value theory and uses a measurement equation that relates the realized measure to the latent conditional quantile. Model estimation is performed by quasi maximum likelihood, and a simulation experiment validates this estimator in finite samples. An extensive empirical analysis shows that high‐frequency measures are particularly informative of the dynamic quantiles. Finally, an out‐of‐sample forecast analysis of quantile‐based risk measures confirms the merit of the REQ.
- Published
- 2018
16. Measuring the propagation of financial distress with Granger-causality tail risk networks
- Author
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Fulvio Corsi, Fabrizio Lillo, Davide Pirino, Luca Trapin, Corsi, Fulvio, Lillo, Fabrizio, Pirino, Davide, and Trapin, Luca
- Subjects
Settore SECS-S/03 - STATISTICA ECONOMICA ,Financial stability ,C12 ,Flight-to-quality ,G00 ,G01 ,G21 ,Granger-causality ,H63 ,Illiquidity ,Sovereign debt crisis ,Systemic risk propagation ,Finance ,Economics, Econometrics and Finance (all)2001 Economics, Econometrics and Finance (miscellaneous) ,Economics ,Social connectedness ,Economic ,Sovereign debt crisi ,HG ,Econometrics and Finance (all)2001 Economics ,Granger causality ,0502 economics and business ,Econometrics ,Systemic risk ,Econometrics and Finance (all)2001 Economic ,050207 economics ,Settore SECS-S/06 - Metodi mat. dell'economia e Scienze Attuariali e Finanziarie ,050208 finance ,Bond ,05 social sciences ,Financial market ,Settore SECS-P/05 - ECONOMETRIA ,Econometrics and Finance (miscellaneous) ,Tail risk ,General Economics, Econometrics and Finance ,European debt crisis - Abstract
Using the test of Granger-causality in tail of Hong et al. (2009), we define and construct Granger-causality tail risk networks between 33 systemically important banks (G-SIBs) and 36 sovereign bonds worldwide. Our purpose is to exploit the structure of the Granger-causality tail risk networks to identify periods of distress in financial markets and possible channels of systemic risk propagation. Combining measures of connectedness of these networks with the ratings of the sovereign bonds, we propose a flight-to-quality indicator to identify periods of turbulence in the market. Our measure clearly peaks at the onset of the European sovereign debt crisis, signaling the instability of the financial system. Finally, we use the connectedness measures of the networks to forecast the quality of sovereign bonds. We find that connectedness is a significant predictor of the cross-section of bond quality.
- Published
- 2018
17. Estimating and Forecasting Conditional Risk Measures with Extreme Value Theory: A Review
- Author
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Luca Trapin, Marco Bee, Bee, Marco, and Trapin, Luca
- Subjects
Conditional risk ,Strategy and Management ,Economics, Econometrics and Finance (miscellaneous) ,volatility ,lcsh:HG8011-9999 ,lcsh:Insurance ,quantile ,Accounting ,0502 economics and business ,Extreme Value Theory ,risk ,ddc:330 ,Economics ,Econometrics ,050207 economics ,Extreme value theory ,050208 finance ,05 social sciences ,Financial risk management ,Conditional probability distribution ,Asset return ,Settore SECS-P/05 - ECONOMETRIA ,Financial econometrics ,Volatility (finance) ,Quantile - Abstract
One of the key components of financial risk management is risk measurement. This typically requires modeling, estimating and forecasting tail-related quantities of the asset returns’ conditional distribution. Recent advances in the financial econometrics literature have developed several models based on Extreme Value Theory (EVT) to carry out these tasks. The purpose of this paper is to review these methods.
- Published
- 2018
18. A characteristic function-based approach to approximate maximum likelihood estimation
- Author
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Marco Bee, Luca Trapin, Bee, Marco, and Trapin, Luca
- Subjects
0301 basic medicine ,Statistics and Probability ,Estimation theory ,Restricted maximum likelihood ,Characteristic function ,Intractable likelihood ,Summary statistics ,κ-Nearest neighbor entropy ,Maximum likelihood sequence estimation ,01 natural sciences ,Likelihood principle ,Marginal likelihood ,010104 statistics & probability ,03 medical and health sciences ,Characteristic function, Intractable likelihood, k-Nearest neighbor entropy, Summary statistics ,030104 developmental biology ,Settore SECS-P/05 - ECONOMETRIA ,Statistics ,Expectation–maximization algorithm ,Maximum a posteriori estimation ,Applied mathematics ,0101 mathematics ,Likelihood function ,Mathematics - Abstract
The choice of the summary statistics in approximate maximum likelihood is often a crucial issue. We develop a criterion for choosing the most effective summary statistic and then focus on the empirical characteristic function. In the iid setting, the approximating posterior distribution converges to the approximate distribution of the parameters conditional upon the empirical characteristic function. Simulation experiments suggest that the method is often preferable to numerical maximum likelihood. In a time-series framework, no optimality result can be proved, but the simulations indicate that the method is effective in small samples.
- Published
- 2017
- Full Text
- View/download PDF
19. US stock returns: are there seasons of excesses?
- Author
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Debbie J. Dupuis, Marco Bee, Luca Trapin, Bee, Marco, Dupuis, Debbie J, and Trapin, Luca
- Subjects
050208 finance ,Financial economics ,Economics ,05 social sciences ,Monte Carlo method ,Extreme value theory ,Financial time series ,Seasonality ,medicine.disease ,Econometrics and Finance (all)2001 Economics ,0502 economics and business ,Parametric model ,Econometrics and Finance (miscellaneous) ,Settore SECS-P/05 - ECONOMETRIA ,medicine ,Econometrics ,Change-point algorithm ,Finance ,Economics, Econometrics and Finance (all)2001 Economics, Econometrics and Finance (miscellaneous) ,050207 economics ,General Economics, Econometrics and Finance ,Stock (geology) - Abstract
This article explores the existence of seasonality in the tails of stock returns. We use a parametric model to describe the returns, and obtain a proxy of the innovation distribution via a pre-processing model. Then, we develop a change-point algorithm capturing changes in the tails of the innovations. We confirm the good performance of the procedure through extensive Monte Carlo experiments. An empirical investigation using US stocks data shows that while the lower tail of the innovations is approximately constant over the year, the upper tail is larger in Winter than in Summer, in 9 out of 12 industries.
- Published
- 2016
20. Measuring Flight-to-Quality with Granger-Causality Tail Risk Networks
- Author
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Fulvio Corsi, Luca Trapin, Fabrizio Lillo, and Davide Pirino
- Subjects
Granger causality ,Flight-to-quality ,Financial economics ,Bond ,Systemic risk ,Econometrics ,Equity (finance) ,Business ,Tail risk ,Centrality ,European debt crisis - Abstract
We introduce an econometric method to detect and analyze events of flight-to-quality by financial institutions. Specifically, using the recently proposed test for the detection of Granger causality in risk (Hong et al. 2009), we construct a bipartite network of systemically important banks and sovereign bonds, where the presence of a link between two nodes indicates the existence of a tail causal relation. This means that tail events in the equity variation of a bank helps in forecasting a tail event in the price variation of a bond. Inspired by a simple theoretical model of flight-to-quality, we interpret links of the bipartite networks as distressed trading of banks directed toward the sovereign debt market and we use them for defining indicators of flight-to-quality episodes. Based on the quality of the involved bonds, we distinguish different patterns of flight-to-quality in the 2006-2014 period. In particular, we document that, during the recent Eurozone crisis, banks with a considerable systemic importance have significantly impacted the sovereign debt market chasing the top-quality government bonds. Finally, an out of sample analysis shows that connectedness and centrality network metrics have a significant cross-sectional forecasting power of bond quality measures.
- Published
- 2015
21. Cluster analysis of weighted bipartite networks: A new copula-based approach
- Author
-
Massimo Riccaboni, Irene Crimaldi, Alessandro Chessa, Luca Trapin, Alessandro, Chessa, Irene, Crimaldi, Massimo, Riccaboni, Trapin, Luca, Chessa, Alessandro, Crimaldi, Irene, and Riccaboni, Massimo
- Subjects
FOS: Computer and information sciences ,Genetics and Molecular Biology (all) ,Theoretical computer science ,Clustering, complex network, copula function, positional analysis, weighted bipartite network ,Economics ,Binary number ,Social Sciences ,lcsh:Medicine ,Bioinformatics ,Biochemistry ,Copula (probability theory) ,Mathematical and Statistical Techniques ,Sociology ,Theoretical ,Models ,Algorithms ,Humans ,Cluster Analysis ,Computer Simulation ,Models, Theoretical ,Medicine (all) ,Biochemistry, Genetics and Molecular Biology (all) ,Agricultural and Biological Sciences (all) ,lcsh:Science ,Physics ,Multidisciplinary ,Commerce ,Computer Science - Social and Information Networks ,Clustering, Copula, Bipartite Networks ,Mathematical instrument ,Social Networks ,Physical Sciences ,Bipartite graph ,Network Analysis ,Statistics (Mathematics) ,Network analysis ,Research Article ,Physics - Physics and Society ,Computer and Information Sciences ,Econophysics ,FOS: Physical sciences ,Physics and Society (physics.soc-ph) ,Research and Analysis Methods ,Statistical Methods ,Cluster analysis ,jel:C6 ,Social and Information Networks (cs.SI) ,lcsh:R ,Statistical model ,Probability and statistics ,International Trade ,Physics - Data Analysis, Statistics and Probability ,jel:F1 ,Settore SECS-P/05 - ECONOMETRIA ,lcsh:Q ,Data Analysis, Statistics and Probability (physics.data-an) ,Mathematics - Abstract
In this work we are interested in identifying clusters of "positional equivalent" actors, i.e. actors who play a similar role in a system. In particular, we analyze weighted bipartite networks that describes the relationships between actors on one side and features or traits on the other, together with the intensity level to which actors show their features. The main contribution of our work is twofold. First, we develop a methodological approach that takes into account the underlying multivariate dependence among groups of actors. The idea is that positions in a network could be defined on the basis of the similar intensity levels that the actors exhibit in expressing some features, instead of just considering relationships that actors hold with each others. Second, we propose a new clustering procedure that exploits the potentiality of copula functions, a mathematical instrument for the modelization of the stochastic dependence structure. Our clustering algorithm can be applied both to binary and real-valued matrices. We validate it with simulations and applications to real-world data.
- Published
- 2014
22. Trade_data
- Author
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Luca Trapin, Irene Crimaldi, Massimo Riccaboni, Alessandro Chessa, Luca Trapin, Irene Crimaldi, Massimo Riccaboni, and Alessandro Chessa
- Published
- 2014
- Full Text
- View/download PDF
23. Description of the code
- Author
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Luca Trapin, Irene Crimaldi, Massimo Riccaboni, Alessandro Chessa, Luca Trapin, Irene Crimaldi, Massimo Riccaboni, and Alessandro Chessa
- Published
- 2014
- Full Text
- View/download PDF
24. Justice_data
- Author
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Luca Trapin and Luca Trapin
- Published
- 2014
- Full Text
- View/download PDF
25. QUASI MAXIMUM LIKELIHOOD ESTIMATION AND INFERENCE OF LARGE APPROXIMATE DYNAMIC FACTOR MODELS VIA THE EM ALGORITHM.
- Author
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Barigozzi, Matteo and Luciani, Matteo
- Subjects
MAXIMUM likelihood statistics ,EXPECTATION-maximization algorithms ,KALMAN filtering ,LEAST squares ,PRINCIPAL components analysis - Abstract
We study estimation of large Dynamic Factor models implemented through the Expectation Maximization (EM) algorithm, jointly with the Kalman smoother. We prove that as both the cross-sectional dimension, n, and the sample size, T, diverge to infinity: (i) the estimated loadings are √ T-consistent, asymptotically normal and equivalent to their Quasi Maximum Likelihood estimates; (ii) the estimated factors are √ n-consistent, asymptotically normal and equivalent to their Weighted Least Squares estimates. Moreover, the estimated loadings are asymptotically as efficient as those obtained by Principal Components analysis, while the estimated factors are more efficient if the idiosyncratic covariance is sparse enough. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
26. A SHARP model of bid–ask spread forecasts
- Author
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Cattivelli, Luca and Pirino, Davide
- Published
- 2019
- Full Text
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27. Macroeconomic environment, money demand and portfolio choice
- Author
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Lioui, Abraham and Tarelli, Andrea
- Published
- 2019
- Full Text
- View/download PDF
28. Nonstandard Errors.
- Author
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MENKVELD, ALBERT J., DREBER, ANNA, HOLZMEISTER, FELIX, HUBER, JUERGEN, JOHANNESSON, MAGNUS, KIRCHLER, MICHAEL, NEUSÜß, SEBASTIAN, RAZEN, MICHAEL, WEITZEL, UTZ, ABAD‐DÍAZ, DAVID, ABUDY, MENACHEM, ADRIAN, TOBIAS, AIT‐SAHALIA, YACINE, AKMANSOY, OLIVIER, ALCOCK, JAMIE T., ALEXEEV, VITALI, ALOOSH, ARASH, AMATO, LIVIA, AMAYA, DIEGO, and ANGEL, JAMES J.
- Subjects
DATA analysis ,PARAMETER estimation ,STATISTICAL hypothesis testing ,REPRODUCIBLE research ,SCHOLARLY peer review ,MEASUREMENT uncertainty (Statistics) ,SAMPLING errors ,STANDARD deviations - Abstract
In statistics, samples are drawn from a population in a data‐generating process (DGP). Standard errors measure the uncertainty in estimates of population parameters. In science, evidence is generated to test hypotheses in an evidence‐generating process (EGP). We claim that EGP variation across researchers adds uncertainty—nonstandard errors (NSEs). We study NSEs by letting 164 teams test the same hypotheses on the same data. NSEs turn out to be sizable, but smaller for more reproducible or higher rated research. Adding peer‐review stages reduces NSEs. We further find that this type of uncertainty is underestimated by participants. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
29. A tale of two sentiment scales: Disentangling short-run and long-run components in multivariate sentiment dynamics
- Author
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Vassallo, Danilo, Bormetti, Giacomo, and Lillo, Fabrizio
- Subjects
Quantitative Finance - General Finance ,Quantitative Finance - Statistical Finance ,Statistics - Applications - Abstract
We propose a novel approach to sentiment data filtering for a portfolio of assets. In our framework, a dynamic factor model drives the evolution of the observed sentiment and allows to identify two distinct components: a long-term component, modeled as a random walk, and a short-term component driven by a stationary VAR(1) process. Our model encompasses alternative approaches available in literature and can be readily estimated by means of Kalman filtering and expectation maximization. This feature makes it convenient when the cross-sectional dimension of the portfolio increases. By applying the model to a portfolio of Dow Jones stocks, we find that the long term component co-integrates with the market principal factor, while the short term one captures transient swings of the market associated with the idiosyncratic components and captures the correlation structure of returns. Using quantile regressions, we assess the significance of the contemporaneous and lagged explanatory power of sentiment on returns finding strong statistical evidence when extreme returns, especially negative ones, are considered. Finally, the lagged relation is exploited in a portfolio allocation exercise., Comment: 37 pages, 8 figures. The authors thank Thomson Reuters for kindly providing Thomson Reuters MarketPsych Indices time series. We benefited from discussion with Giuseppe Buccheri, Fulvio Corsi, Luca Trapin, as well as with conference participants to the Quantitative Finance Workshop 2019 at ETH in Zurich and the AMASES XLIII Conference in Perugia
- Published
- 2019
30. A tale of two sentiment scales: disentangling short-run and long-run components in multivariate sentiment dynamics.
- Author
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Vassallo, Danilo, Bormetti, Giacomo, and Lillo, Fabrizio
- Subjects
RANDOM walks ,QUANTILE regression ,AUTOREGRESSIVE models ,MARKET sentiment ,INVESTMENT analysis - Abstract
The digitalization of news and social media provides an unprecedented source to investigate the role of information on market dynamics. However, the observed sentiment time-series represent a noisy proxy of the true investor sentiment. Moreover, modeling the joint dynamics of different sentiment series can be beneficial for the assessment of their economic relevance. The main methodological contribution of this paper is twofold: (i) we filter the latent sentiment signals in a genuinely multivariate model; (ii) we propose a decomposition into a long-term random walk component, named long-term sentiment, and a short-term component driven by a stationary Vector Autoregressive process of order one, named short-term sentiment. The proposed framework is a dynamic factor model describing the joint evolution of the observed sentiments of a portfolio of assets. Empirically, we find that the long-term sentiment co-integrates with the market price factor, while the short-term sentiment captures transient and firm-specific swings. By means of quantile regressions, we assess the significance of the explanatory power of filtered present sentiment on future returns. Then, we demonstrate how the lagged relation can be successfully exploited in a portfolio allocation exercise. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
31. Testing a parameter restriction on the boundary for the g-and-h distribution: a simulated approach.
- Author
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Bee, Marco, Hambuckers, Julien, Santi, Flavio, and Trapin, Luca
- Subjects
ASYMPTOTIC distribution ,LIKELIHOOD ratio tests ,ECONOMIC models ,KURTOSIS ,LOGNORMAL distribution ,SKEWNESS (Probability theory) ,VALUE at risk - Abstract
We develop a likelihood-ratio test for discriminating between the g-and-h and the g distribution, which is a special case of the former obtained when the parameter h is equal to zero. The g distribution is a shifted lognormal, and is therefore suitable for modeling economic and financial quantities. The g-and-h is a more flexible distribution, capable of fitting highly skewed and/or leptokurtic data, but is computationally much more demanding. Accordingly, in practical applications the test is a valuable tool for resolving the tractability-flexibility trade-off between the two distributions. Since the classical result for the asymptotic distribution of the test is not valid in this setup, we derive the null distribution via simulation. Further Monte Carlo experiments allow us to estimate the power function and to perform a comparison with a similar test proposed by Xu and Genton (Comput Stat Data Anal 91:78–91, 2015). Finally, the practical relevance of the test is illustrated by two risk management applications dealing with operational and actuarial losses. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
32. Adaptive Lasso for vector Multiplicative Error Models.
- Author
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Cattivelli, Luca and Gallo, Giampiero M.
- Subjects
MONTE Carlo method ,PUBLIC debts - Abstract
In this paper we adopt Adaptive Lasso techniques in vector Multiplicative Error Models (vMEM), and we show that they provide asymptotic consistency in variable selection and the same efficiency as if the set of true predictors were known in advance (oracle property). A Monte Carlo exercise demonstrates the good performance of this approach and an empirical application shows its effectiveness in studying the network of volatility spillovers among European financial indices, during and after the sovereign debt crisis. We conclude demonstrating the superior volatility forecast ability of Adaptive Lasso techniques also when a common trend is removed prior to multivariate volatility spillover analysis. [ABSTRACT FROM AUTHOR]
- Published
- 2020
- Full Text
- View/download PDF
33. Realized Peaks over Threshold: A Time-Varying Extreme Value Approach with High-Frequency-Based Measures.
- Author
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Bee, Marco, Dupuis, Debbie J, and Trapin, Luca
- Subjects
PROBABILITY theory ,COMPUTER simulation ,NUMERICAL analysis ,MATHEMATICAL models ,ALGORITHMS - Abstract
Recent contributions to the financial econometrics literature exploit high-frequency (HF) data to improve models for daily asset returns. This paper proposes a new class of dynamic extreme value models that profit from HF data when estimating the tails of daily asset returns. Our realized peaks-over-threshold approach provides estimates for the tails of the time-varying conditional return distribution. An in-sample fit to the S&P 500 index returns suggests that HF data convey information on daily extreme returns beyond that included in low frequency (LF) data. Finally, out-of-sample forecasts of conditional risk measures obtained with HF measures outperform those obtained with LF measures. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
34. Realized extreme quantile: A joint model for conditional quantiles and measures of volatility with EVT refinements.
- Author
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Bee, Marco, Dupuis, Debbie J., and Trapin, Luca
- Subjects
MARKET volatility ,QUANTILES ,SIMULATION methods & models ,EXTREME value theory ,VALUE at risk - Abstract
Summary: We propose a new framework exploiting realized measures of volatility to estimate and forecast extreme quantiles. Our realized extreme quantile (REQ) combines quantile regression with extreme value theory and uses a measurement equation that relates the realized measure to the latent conditional quantile. Model estimation is performed by quasi maximum likelihood, and a simulation experiment validates this estimator in finite samples. An extensive empirical analysis shows that high‐frequency measures are particularly informative of the dynamic quantiles. Finally, an out‐of‐sample forecast analysis of quantile‐based risk measures confirms the merit of the REQ. [ABSTRACT FROM AUTHOR]
- Published
- 2018
- Full Text
- View/download PDF
35. Can Volatility Models Explain Extreme Events?
- Author
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Trapin, Luca
- Subjects
MARKET volatility ,RATE of return ,FINANCIAL risk ,FINANCIAL econometrics ,BUSINESS forecasting - Abstract
This paper revisits several existing volatility models by the light of extremal dependence, that is, serial dependence in extreme returns. First, we investigate the extremal properties of different high-frequency-based volatility processes and show that only a subset of them can generate dependence in the extremes. Second, we corroborate the empirical evidence on extremal dependence in financial returns, showing that extreme returns present strong and persistent correlation and that extreme negative returns are much more correlated than positive ones. Finally, a large empirical analysis suggests that only models exhibiting extremal dependence and endowed with a leverage component can appropriately explain extreme events. [ABSTRACT FROM AUTHOR]
- Published
- 2018
- Full Text
- View/download PDF
36. US stock returns: are there seasons of excesses?
- Author
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Bee, Marco, Dupuis, Debbie J., and Trapin, Luca
- Subjects
STOCKS (Finance) ,MONTE Carlo method ,ALGORITHM software ,CAPITAL market ,MATHEMATICAL models ,FINANCIAL markets - Abstract
This article explores the existence of seasonality in the tails of stock returns. We use a parametric model to describe the returns, and obtain a proxy of the innovation distribution via a pre-processing model. Then, we develop a change-point algorithm capturing changes in the tails of the innovations. We confirm the good performance of the procedure through extensive Monte Carlo experiments. An empirical investigation using US stocks data shows that while the lower tail of the innovations is approximately constant over the year, the upper tail is larger in Winter than in Summer, in 9 out of 12 industries. [ABSTRACT FROM AUTHOR]
- Published
- 2016
- Full Text
- View/download PDF
37. Contents of Current Periodicals.
- Published
- 2016
38. Cluster Analysis of Weighted Bipartite Networks: A New Copula-Based Approach.
- Author
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Chessa, Alessandro, Crimaldi, Irene, Riccaboni, Massimo, and Trapin, Luca
- Subjects
BIPARTITE graphs ,COPULA functions ,MULTIVARIATE analysis ,METHODOLOGY ,STOCHASTIC analysis - Abstract
In this work we are interested in identifying clusters of “positional equivalent” actors, i.e. actors who play a similar role in a system. In particular, we analyze weighted bipartite networks that describes the relationships between actors on one side and features or traits on the other, together with the intensity level to which actors show their features. We develop a methodological approach that takes into account the underlying multivariate dependence among groups of actors. The idea is that positions in a network could be defined on the basis of the similar intensity levels that the actors exhibit in expressing some features, instead of just considering relationships that actors hold with each others. Moreover, we propose a new clustering procedure that exploits the potentiality of copula functions, a mathematical instrument for the modelization of the stochastic dependence structure. Our clustering algorithm can be applied both to binary and real-valued matrices. We validate it with simulations and applications to real-world data. [ABSTRACT FROM AUTHOR]
- Published
- 2014
- Full Text
- View/download PDF
39. Acknowledgment to Reviewers of Energies in 2021.
- Subjects
SCHOLARLY publishing - Abstract
Thanks to the contribution of our reviewers, in 2021, the median time to first decision was 17 days and the median time to publication was 40 days. The editors would like to extend their gratitude and recognition to the following reviewers for their precious time and dedication, regardless of whether the papers they reviewed were finally published: Rigorous peer-reviews are the basis of high-quality academic publishing. [Extracted from the article]
- Published
- 2022
- Full Text
- View/download PDF
40. A tale of two sentiment scales: Disentangling short-run and long-run components in multivariate sentiment dynamics
- Author
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Giacomo Bormetti, Fabrizio Lillo, Danilo Vassallo, Vassallo, Danilo, Bormetti, Giacomo, Lillo, Fabrizio, Danilo Vassallo, Giacomo Bormetti, and Fabrizio Lillo
- Subjects
FOS: Computer and information sciences ,Computer science ,Statistics - Applications ,quantile regressions ,FOS: Economics and business ,Component (UML) ,Econometrics ,Applications (stat.AP) ,Sentiment analysi ,Settore SECS-S/06 - Metodi mat. dell'economia e Scienze Attuariali e Finanziarie ,Statistical Finance (q-fin.ST) ,Short run ,Sentiment analysis ,Quantitative Finance - Statistical Finance ,Random walk ,Term (time) ,Quantile regression ,expectation maximization ,Portfolio ,Kalman filter ,General Finance (q-fin.GN) ,Investment analysi ,Quantitative Finance - General Finance ,General Economics, Econometrics and Finance ,Finance ,Quantile - Abstract
We propose a novel approach to sentiment data filtering for a portfolio of assets. In our framework, a dynamic factor model drives the evolution of the observed sentiment and allows to identify two distinct components: a long-term component, modeled as a random walk, and a short-term component driven by a stationary VAR(1) process. Our model encompasses alternative approaches available in literature and can be readily estimated by means of Kalman filtering and expectation maximization. This feature makes it convenient when the cross-sectional dimension of the portfolio increases. By applying the model to a portfolio of Dow Jones stocks, we find that the long term component co-integrates with the market principal factor, while the short term one captures transient swings of the market associated with the idiosyncratic components and captures the correlation structure of returns. Using quantile regressions, we assess the significance of the contemporaneous and lagged explanatory power of sentiment on returns finding strong statistical evidence when extreme returns, especially negative ones, are considered. Finally, the lagged relation is exploited in a portfolio allocation exercise., 37 pages, 8 figures. The authors thank Thomson Reuters for kindly providing Thomson Reuters MarketPsych Indices time series. We benefited from discussion with Giuseppe Buccheri, Fulvio Corsi, Luca Trapin, as well as with conference participants to the Quantitative Finance Workshop 2019 at ETH in Zurich and the AMASES XLIII Conference in Perugia
- Published
- 2019
41. Forward-Looking Volatility Estimation for Risk-Managed Investment Strategies during the COVID-19 Crisis.
- Author
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Di Persio, Luca, Garbelli, Matteo, Wallbaum, Kai, and Trapin, Luca
- Subjects
COVID-19 pandemic ,INVESTMENT policy ,ARTIFICIAL neural networks ,COVID-19 ,GARCH model - Abstract
Under the impact of both increasing credit pressure and low economic returns characterizing developed countries, investment levels have decreased over recent years. Moreover, the recent turbulence caused by the COVID-19 crisis has accelerated the latter process. Within this scenario, we consider the so-called Volatility Target (VolTarget) strategy. In particular, we focus our attention on estimating volatility levels of a risky asset to perform a VolTarget simulation over two different time horizons. We first consider a 20 year period, from January 2000 to January 2020, then we analyse the last 12 months to emphasize the effects related to the COVID-19 virus's diffusion. We propose a hybrid algorithm based on the composition of a GARCH model with a Neural Network (NN) approach. Let us underline that, as an alternative to standard allocation methods based on realized and backward oriented volatilities, we exploited an innovative forward-looking estimation process exploiting a Machine Learning (ML) solution. Our solution provides a more accurate volatility estimation, allowing us to derive an effective investor risk-return profile during market crisis periods. Moreover, we show that, via a forward-looking VolTarget strategy while using an ML-based prediction as the input, the average outcome for an investment in a drawdown plan is more sustainable while representing an efficient risk-control solution for long time period investments. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
42. Estimating and Forecasting Conditional Risk Measures with Extreme Value Theory: A Review.
- Author
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Bee, Marco and Trapin, Luca
- Subjects
EXTREME value theory ,FINANCIAL risk management ,FINANCIAL econometrics ,MARKET volatility ,BUSINESS models - Abstract
One of the key components of financial risk management is risk measurement. This typically requires modeling, estimating and forecasting tail-related quantities of the asset returns’ conditional distribution. Recent advances in the financial econometrics literature have developed several models based on Extreme Value Theory (EVT) to carry out these tasks. The purpose of this paper is to review these methods. [ABSTRACT FROM AUTHOR]
- Published
- 2018
- Full Text
- View/download PDF
43. Managing liquidity with portfolio staleness
- Author
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Buccheri, Giuseppe, Pirino, Davide, and Trapin, Luca
- Published
- 2021
- Full Text
- View/download PDF
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