A critical aspect of any recommendation process is explaining the reasoning behind each recommendation. These explanations can not only improve users' experiences, but also change their perception of the recommendation quality. This work describes our human-centered design for our conversational movie recommendation agent, which explains its decisions as humans would. After exploring and analyzing a corpus of dyadic interactions, we developed a computational model of explanations. We then incorporated this model in the architecture of a conversational agent and evaluated the resulting system via a user experiment. Our results show that social explanations can improve the perceived quality of both the system and the interaction, regardless o...
The Thirty-First International FLAIRS Conference (FLAIRS-31), Florida, United States of America, 21-...
Abstract To improve the accuracy of recommendations, alleviate sparse data problems, and mitigate th...
More and more aspects of our everyday lives are influenced by automated decisions made by systems th...
A critical aspect of any recommendation process is explaining the reasoning behind each recommendati...
Recently, there has been extensive interest in developing intelligent human-centered AI (artificial ...
As AI systems become ever more intertwined in our personallives, the way in which they explain thems...
Existing explainable recommender systems have mainly modeled relationships between recommended and a...
A significant challenge for recommender systems (RSs), and in fact for AI systems in general, is the...
This paper describes work in progress that uses an interactive recommendation process to construct n...
Modern knowledge-based recommender systems enable the end-to-end generation of textual explanations....
Recommender systems help users to identify which items from a variety of choices best match their ne...
Recommender systems have become a popular technique for helping users select desirable books, movies...
Our increasing reliance on complex algorithms for recommendations calls for models and methods for e...
People like to watch movies, but they do not always know what they want to see. Although there exist...
During the last years, as virtual assistants such as Siri (Apple), Google Assistant, Amazon Alexa, s...
The Thirty-First International FLAIRS Conference (FLAIRS-31), Florida, United States of America, 21-...
Abstract To improve the accuracy of recommendations, alleviate sparse data problems, and mitigate th...
More and more aspects of our everyday lives are influenced by automated decisions made by systems th...
A critical aspect of any recommendation process is explaining the reasoning behind each recommendati...
Recently, there has been extensive interest in developing intelligent human-centered AI (artificial ...
As AI systems become ever more intertwined in our personallives, the way in which they explain thems...
Existing explainable recommender systems have mainly modeled relationships between recommended and a...
A significant challenge for recommender systems (RSs), and in fact for AI systems in general, is the...
This paper describes work in progress that uses an interactive recommendation process to construct n...
Modern knowledge-based recommender systems enable the end-to-end generation of textual explanations....
Recommender systems help users to identify which items from a variety of choices best match their ne...
Recommender systems have become a popular technique for helping users select desirable books, movies...
Our increasing reliance on complex algorithms for recommendations calls for models and methods for e...
People like to watch movies, but they do not always know what they want to see. Although there exist...
During the last years, as virtual assistants such as Siri (Apple), Google Assistant, Amazon Alexa, s...
The Thirty-First International FLAIRS Conference (FLAIRS-31), Florida, United States of America, 21-...
Abstract To improve the accuracy of recommendations, alleviate sparse data problems, and mitigate th...
More and more aspects of our everyday lives are influenced by automated decisions made by systems th...