Providing Arguments in Discussions Based on the Prediction of Human Argumentative Behavior

Authors

  • Ariel Rosenfeld Bar-Ilan University
  • Sarit Kraus Bar-Ilan University

DOI:

https://doi.org/10.1609/aaai.v29i1.9333

Keywords:

Human-Computer Interaction, Argumentation Theory, Human Argumentation

Abstract

Argumentative discussion is a highly demanding task. In order to help people in such situations, this paper provides an innovative methodology for developing an agent that can support people in argumentative discussions by proposing possible arguments to them. By analyzing more than 130 human discussions and 140 questionnaires, answered by people, we show that the well-established Argumentation Theory is not a good predictor of people's choice of arguments. Then, we present a model that has 76% accuracy when predicting people’s top three argument choices given a partial deliberation. We present the Predictive and Relevance based Heuristic agent (PRH), which uses this model with a heuristic that estimates the relevance of possible arguments to the last argument given in order to propose possible arguments. Through extensive human studies with over 200 human subjects, we show that people’s satisfaction from the PRH agent is significantly higher than from other agents that propose arguments based on Argumentation Theory, predict arguments without the heuristics or only the heuristics. People also use the PRH agent's proposed arguments significantly more often than those proposed by the other agents.

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Published

2015-02-16

How to Cite

Rosenfeld, A., & Kraus, S. (2015). Providing Arguments in Discussions Based on the Prediction of Human Argumentative Behavior. Proceedings of the AAAI Conference on Artificial Intelligence, 29(1). https://doi.org/10.1609/aaai.v29i1.9333