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Iterative Multi-document Neural Attention for Multiple Answer Prediction (1702.02367v1)

Published 8 Feb 2017 in cs.CL

Abstract: People have information needs of varying complexity, which can be solved by an intelligent agent able to answer questions formulated in a proper way, eventually considering user context and preferences. In a scenario in which the user profile can be considered as a question, intelligent agents able to answer questions can be used to find the most relevant answers for a given user. In this work we propose a novel model based on Artificial Neural Networks to answer questions with multiple answers by exploiting multiple facts retrieved from a knowledge base. The model is evaluated on the factoid Question Answering and top-n recommendation tasks of the bAbI Movie Dialog dataset. After assessing the performance of the model on both tasks, we try to define the long-term goal of a conversational recommender system able to interact using natural language and to support users in their information seeking processes in a personalized way.

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Authors (5)
  1. Claudio Greco (5 papers)
  2. Alessandro Suglia (25 papers)
  3. Pierpaolo Basile (7 papers)
  4. Gaetano Rossiello (21 papers)
  5. Giovanni Semeraro (5 papers)
Citations (3)