2022
DOI: 10.48550/arxiv.2203.12978
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Effective Explanations for Entity Resolution Models

Abstract: Entity resolution (ER) aims at matching records that refer to the same real-world entity. Although widely studied for the last 50 years, ER still represents a challenging data management problem, and several recent works have started to investigate the opportunity of applying deep learning (DL) techniques to solve this problem. In this paper, we study the fundamental problem of explainability of the DL solution for ER. Understanding the matching predictions of an ER solution is indeed crucial to assess the tru… Show more

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“…We perform separate experiments for saliency and counterfactual explanations, considering appropriate baseline methods respectively (further experiments, including a case study, are presented in an extended version of this paper [31]).…”
Section: A Experimental Setupmentioning
confidence: 99%
“…We perform separate experiments for saliency and counterfactual explanations, considering appropriate baseline methods respectively (further experiments, including a case study, are presented in an extended version of this paper [31]).…”
Section: A Experimental Setupmentioning
confidence: 99%