Robust Explainable Recommendation
Sairamvinay Vijayaraghavan, Prasant Mohapatra

TL;DR
This paper introduces a versatile framework for feature-aware explainable recommenders that enhances robustness against attacks and maintains explanation quality across various datasets and models.
Contribution
The work presents a novel, model-agnostic framework that improves the robustness and generalizability of explainable recommendation algorithms under noisy and adversarial conditions.
Findings
Enhanced robustness of explanations under noisy environments
Improved explanation quality across different datasets
Framework applicable to various model architectures
Abstract
Explainable Recommender Systems is an important field of study which provides reasons behind the suggested recommendations. Explanations with recommender systems are useful for developers while debugging anomalies within the system and for consumers while interpreting the model's effectiveness in capturing their true preferences towards items. However, most of the existing state-of-the-art (SOTA) explainable recommenders could not retain their explanation capability under noisy circumstances and moreover are not generalizable across different datasets. The robustness of the explanations must be ensured so that certain malicious attackers do not manipulate any high-stake decision scenarios to their advantage, which could cause severe consequences affecting large groups of interest. In this work, we present a general framework for feature-aware explainable recommenders that can withstand…
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Taxonomy
TopicsBig Data Technologies and Applications · Recommender Systems and Techniques · Explainable Artificial Intelligence (XAI)
