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ML-Schema: Exposing the Semantics of Machine Learning with Schemas and Ontologies

Authors :
Publio, Gustavo Correa
Esteves, Diego
Ławrynowicz, Agnieszka
Panov, Panče
Soldatova, Larisa
Soru, Tommaso
Vanschoren, Joaquin
Zafar, Hamid
Publication Year :
2018

Abstract

The ML-Schema, proposed by the W3C Machine Learning Schema Community Group, is a top-level ontology that provides a set of classes, properties, and restrictions for representing and interchanging information on machine learning algorithms, datasets, and experiments. It can be easily extended and specialized and it is also mapped to other more domain-specific ontologies developed in the area of machine learning and data mining. In this paper we overview existing state-of-the-art machine learning interchange formats and present the first release of ML-Schema, a canonical format resulted of more than seven years of experience among different research institutions. We argue that exposing semantics of machine learning algorithms, models, and experiments through a canonical format may pave the way to better interpretability and to realistically achieve the full interoperability of experiments regardless of platform or adopted workflow solution.<br />Comment: Poster, selected for the 2nd Reproducibility in Machine Learning Workshop at ICML 2018, Stockholm, Sweden

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1807.05351
Document Type :
Working Paper