Search

Your search keyword '"Modèles et algorithmes pour l’intelligence artificielle (MAASAI)"' showing total 141 results

Search Constraints

Start Over You searched for: Author "Modèles et algorithmes pour l’intelligence artificielle (MAASAI)" Remove constraint Author: "Modèles et algorithmes pour l’intelligence artificielle (MAASAI)"
141 results on '"Modèles et algorithmes pour l’intelligence artificielle (MAASAI)"'

Search Results

1. A Deep Dynamic Latent Block Model for the Co-clustering of Zero-Inflated Data Matrices

2. DeepWILD: Wildlife Identification, Localisation and estimation on camera trap videos using Deep learning

3. AnoRand: A Semi Supervised Deep Learning Anomaly Detection Method by Random Labeling

4. A Sea of Words: An In-Depth Analysis of Anchors for Text Data

5. Fed-MIWAE: Federated Imputation of Incomplete Data via Deep Generative Models

6. Optimal transport for graph representation learning

7. Understanding Post-hoc Explainers: The Case of Anchors

8. Are labels informative in semi-supervised learning?Estimating and leveraging the missing-data mechanism

9. Machinery Anomaly Detection using artificial neural networks and signature feature extraction

10. Logic Explained Networks

11. The graph embedded topic model

12. Forward Approximate Solution for Linear Quadratic Tracking

13. R-miss-tastic: a unified platform for missing values methods and workflows

14. The Deep Latent Position Topic Model for Clustering and Representation of Networks with Textual Edges

15. DeepLTRS: A deep latent recommender system based on user ratings and reviews

16. Modèles probabilistes profonds pour les systèmes de recommandation et le clustering de réseaux

17. Concept Embedding Models

18. Can machines learn to see without visual databases?

19. Minimizing Cross Intersections in Graph Drawing via Linear Splines

20. Extending Logic Explained Networks to Text Classification

21. Auto-encoder Based Medicare Fraud Detection

22. Revisiting Artistic Style Transfer for Data Augmentation in A Real-Case Scenario

23. 18FDG PET/CT and Machine Learning for the prediction of lung cancer response to immunotherapy

24. Deep latent position model for node clustering in graphs

25. Embedded Topics in the Stochastic Block Model

26. Unsupervised Text Clusterisation to characterize Adverse Drug Reactions from hospitalization reports

27. Foveated Neural Computation

28. SMACE: A New Method for the Interpretability of Composite Decision Systems

29. Interpretable Prediction of Post-Infarct Ventricular Arrhythmia using Graph Convolutional Network

30. Clustering of recurrent events data applied to the re-admission of elderly people at hospital

31. Evolvable SPL management with partial knowledge: an application to anomaly detection in time series

32. Semi-relaxed Gromov-Wasserstein divergence for graphs classification

33. Scalable Architectures to Support Sustainable Advanced Information Technologies

34. Learning and Reasoning for Cultural Metadata Quality

35. Development and validation of a radiomic model for the diagnosis of dopaminergic denervation on [18F]FDOPA PET/CT

36. Continual Unsupervised Learning for Optical Flow Estimation with Deep Networks

37. Continual Learning through Hamilton Equations

38. Aspect-Based Sentiment Analysis with Deep Learning: A Multidomain and Multitask Approach

39. Comparing Feature Importance and Rule Extraction for Interpretability on Text Data

40. When Zero May Not Be Zero: A Cautionary Note on the Use of Inter-Rater Reliability in Evaluating Grant Peer Review

41. Toward a multitask aspect-based sentiment analysis model using deep learning

42. Co-clustering of evolving count matrices with the dynamic latent block model: application to pharmacovigilance

43. A Multi-stage deep architecture for summary generation of soccer videos

44. Clustering by Deep Latent Position Model with Graph Convolutional Network

45. Cumulative learning enables convolutional neural network representations for small mass spectrometry data classification

46. Greedy clustering of count data through a mixture of multinomial PCA

47. Co-Clustering of Ordinal Data via Latent Continuous Random Variables and Not Missing at Random Entries

48. Model-agnostic out-of-distribution detection using combined statistical tests

49. Don't fear the unlabelled: safe deep semi-supervised learning via simple debiasing

50. Machine Learning and Deep Learning Applications in Metagenomic Taxonomy and Functional Annotation

Catalog

Books, media, physical & digital resources