Providing natural language explanations for recommendations is particularly useful from the perspective of a non-expert user. Although several methods for providing such explanations have recently been proposed, we argue that an important aspect of explanation quality has been overlooked in their experimental evaluation. Specifically, the coherence between generated text and predicted rating, which is a necessary condition for an explanation to be useful, is not properly captured by currently used evaluation measures. In this paper, we highlight the issue of explanation and prediction coherence by 1) presenting results from a manual verification of explanations generated by one of the state-of-the-art approaches 2) proposing a method of aut...
Explaining recommendations helps users to make more accurate and effective decisions and improves sy...
Recommender systems have become ubiquitous in contentbased web applications, from news to shopping ...
In this article we propose a framework that generates natural language explanations supporting the s...
ACM IUI '18: 23rd International Conference on Intelligent User Interfaces Companion, Tokyo, Japan, 7...
In this article, we present a framework to build post hoc natural language justifications that suppo...
We examine the problem of incoherence in text and propose an integrated framework for judging it. In...
Modern recommender systems face an increasing need to explain their recommendations. Despite conside...
UMAP'19: 27th Conference on User Modeling, Adaptation and Personalization, Larnaca, Cyprus, 9-12 Jun...
This chapter gives an overview of the area of explanations in recommender systems. We approach the l...
Recommender systems have become a popular technique for helping users select desirable books, movies...
The Thirty-First International FLAIRS Conference (FLAIRS-31), Florida, United States of America, 21-...
The 24th Irish Conference on Artificial Intelligence and Cognitive Science, University College Dubli...
In recommender systems, explanations serve as an additional type of information that can help users ...
Recent models can generate fluent and grammatical synthetic reviews while accurately predicting user...
This paper reports and summarizes the methodology presented in [16] and accepted for publication at ...
Explaining recommendations helps users to make more accurate and effective decisions and improves sy...
Recommender systems have become ubiquitous in contentbased web applications, from news to shopping ...
In this article we propose a framework that generates natural language explanations supporting the s...
ACM IUI '18: 23rd International Conference on Intelligent User Interfaces Companion, Tokyo, Japan, 7...
In this article, we present a framework to build post hoc natural language justifications that suppo...
We examine the problem of incoherence in text and propose an integrated framework for judging it. In...
Modern recommender systems face an increasing need to explain their recommendations. Despite conside...
UMAP'19: 27th Conference on User Modeling, Adaptation and Personalization, Larnaca, Cyprus, 9-12 Jun...
This chapter gives an overview of the area of explanations in recommender systems. We approach the l...
Recommender systems have become a popular technique for helping users select desirable books, movies...
The Thirty-First International FLAIRS Conference (FLAIRS-31), Florida, United States of America, 21-...
The 24th Irish Conference on Artificial Intelligence and Cognitive Science, University College Dubli...
In recommender systems, explanations serve as an additional type of information that can help users ...
Recent models can generate fluent and grammatical synthetic reviews while accurately predicting user...
This paper reports and summarizes the methodology presented in [16] and accepted for publication at ...
Explaining recommendations helps users to make more accurate and effective decisions and improves sy...
Recommender systems have become ubiquitous in contentbased web applications, from news to shopping ...
In this article we propose a framework that generates natural language explanations supporting the s...