Eva Zangerle
Eva Zangerle
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Evaluation
Beyond Top-1: Addressing Inconsistencies in Evaluating Counterfactual Explanations for Recommender Systems
Explainability in recommender systems (RS) remains a pivotal yet challenging research frontier. Among state-of-the-art techniques, …
Amir Reza Mohammadi
,
Andreas Peintner
,
Michael Müller
,
Eva Zangerle
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Are We Explaining the Same Recommenders? Incorporating Recommender Performance for Evaluating Explainers
Explainability in recommender systems is both crucial and challenging. Among the state-of-the-art explanation strategies, …
Amir Reza Mohammadi
,
Andreas Peintner
,
Michael Müller
,
Eva Zangerle
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Exploring the Landscape of Recommender Systems Evaluation: Practices and Perspectives
Recommender systems research and practice are fast-developing topics with growing adoption in a wide variety of information access …
Christine Bauer
,
Eva Zangerle
,
Alan Said
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Introduction to the Special Issue on Perspectives on Recommender Systems Evaluation
Evaluation plays a vital role in recommender systems—in research and practice—whether for confirming algorithmic concepts or assessing …
Christine Bauer
,
Alan Said
,
Eva Zangerle
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Second Workshop: Perspectives on the Evaluation of Recommender Systems (PERSPECTIVES 2022)
Eva Zangerle
,
Christine Bauer
,
Alan Said
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