This paper reports and summarizes the methodology presented in [16] and accepted for publication at ACM RecSys 20191. In this work we present a methodology to justify recommendations that relies on the information extracted from users’ reviews discussing the available items. The intuition behind the approach is to conceive the justification as a summary of the most relevant and distinguishing aspects of the item, automatically obtained by analyzing its reviews. To this end, we designed a pipeline of natural language processing techniques including aspect extraction, sentiment analysis and text summarization to gather the reviews, process the relevant excerpts, and generate a unique synthesis presenting the main characteristics of the item. ...
22nd International Conference on Case-Based Reasoning, Cork, Ireland, 29 September - 01 October 2014...
Abstract: Sentiment analysis, also known as Opinion Mining, is an essential aspect of Natural Langua...
When it comes to purchasing a product or attending an event, most people want to know what others th...
In this article, we present a framework to build post hoc natural language justifications that suppo...
In this paper we present a methodology to justify the suggestions generated by a recommendation algo...
In this paper we present a methodology to generate context-aware natural language justifications sup...
Twenty-Sixth International Joint Conference on Artificial Intelligence (IJCAI-17), Melbourne, Austra...
This research paper proposes a rating-based recommender system that leverages Natural Language Proce...
Explaining recommendations helps users to make more accurate and effective decisions and improves sy...
Social recommender systems harness knowledge from social content, experiences and interactions to pr...
In this paper, we propose a technique to automatically describe items based on users' reviews in ord...
Recent models can generate fluent and grammatical synthetic reviews while accurately predicting user...
IUI 2016. 21st International Conference on Intelligent User Interfaces, Sonoma, California, USAThis ...
In this paper we present a methodology to generate context-aware natural language justifications sup...
Abstract — As the number of transactions in E-market places is growing, more and more product inform...
22nd International Conference on Case-Based Reasoning, Cork, Ireland, 29 September - 01 October 2014...
Abstract: Sentiment analysis, also known as Opinion Mining, is an essential aspect of Natural Langua...
When it comes to purchasing a product or attending an event, most people want to know what others th...
In this article, we present a framework to build post hoc natural language justifications that suppo...
In this paper we present a methodology to justify the suggestions generated by a recommendation algo...
In this paper we present a methodology to generate context-aware natural language justifications sup...
Twenty-Sixth International Joint Conference on Artificial Intelligence (IJCAI-17), Melbourne, Austra...
This research paper proposes a rating-based recommender system that leverages Natural Language Proce...
Explaining recommendations helps users to make more accurate and effective decisions and improves sy...
Social recommender systems harness knowledge from social content, experiences and interactions to pr...
In this paper, we propose a technique to automatically describe items based on users' reviews in ord...
Recent models can generate fluent and grammatical synthetic reviews while accurately predicting user...
IUI 2016. 21st International Conference on Intelligent User Interfaces, Sonoma, California, USAThis ...
In this paper we present a methodology to generate context-aware natural language justifications sup...
Abstract — As the number of transactions in E-market places is growing, more and more product inform...
22nd International Conference on Case-Based Reasoning, Cork, Ireland, 29 September - 01 October 2014...
Abstract: Sentiment analysis, also known as Opinion Mining, is an essential aspect of Natural Langua...
When it comes to purchasing a product or attending an event, most people want to know what others th...