An art painting style explainable classifier grounded on logical and commonsense reasoning
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comunitat-uji-handle2:10234/7036
comunitat-uji-handle3:10234/8620
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Title
An art painting style explainable classifier grounded on logical and commonsense reasoningDate
2023-05-17Publisher
SpringerISSN
1432-7643; 1433-7479Bibliographic citation
Costa, V., Alonso-Moral, J.M., Falomir, Z. et al. An art painting style explainable classifier grounded on logical and commonsense reasoning. Soft Comput (2023). https://doi.org/10.1007/s00500-023-08258-xType
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Abstract
This paper presents the art painting style explainable classifier named ANYXI. The classifier is based on art specialists’ knowledge of art styles and human-understandable color traits. ANYXI overcomes the principal ... [+]
This paper presents the art painting style explainable classifier named ANYXI. The classifier is based on art specialists’ knowledge of art styles and human-understandable color traits. ANYXI overcomes the principal flaws in the few art painting style classifiers in the literature. In this way, we first propose, using the art specialists’ studies, categorizations of the Baroque, Impressionism, and Post-Impressionism. Second, we carry out a human survey with the aim of validating the appropriateness of the color features used in the categorizations for human understanding. Then, we analyze and discuss the accuracy and interpretability of the ANYXI classifier. The study ends with an evaluation of the rationality of explanations automatically generated by ANYXI. We enrich the discussion and empirical validation of ANYXI by considering a quantitative and qualitative comparison versus other explainable classifiers. The reported results show how ANYXI is outstanding from the point of view of interpretability while keeping high accuracy (comparable to non-explainable classifiers). Moreover, automated generations are endowed with a good level of rationality. [-]
Funder Name
MCIN/AEI/10.13039/501100011033 | Galician Ministry of Culture, Education, Professional Training and University | European Union and FEDER/ERDF (European Regional Development Funds) | H2020-MSCARISE- 2020 project MOSAIC | Ramon-y-Cajal fellowship | Ministerio de Ciencia, Innovación y Universidades
Project code
PID2021-123152OB-C21 | PID2021-123152OB-C22 | RED2022-134315-T | ED431G2019/04 | ED431C2022/19 | 101007627 | RYC2019-027177-I / AEI / 10.13039/501100011033 | FJC2021-047274-I
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© The Author(s) 2023
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info:eu-repo/semantics/openAccess
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