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  Cognitive User Modeling Computed by a Proposed Dialogue Strategy Based on an Inductive Game Theory

Asai, H., Koshizen T, Watanabe, M., Tsujino, H., & Aihara, K. (2005). Cognitive User Modeling Computed by a Proposed Dialogue Strategy Based on an Inductive Game Theory. In Machine Learning and Robot Perception (pp. 325-351). Berlin, Germany: Springer.

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Asai, H, Autor
Koshizen T, Watanabe, M1, Autor           
Tsujino, H, Autor
Aihara, K, Autor
Apolloni, Herausgeber
B., Herausgeber
Ghosh, A., Herausgeber
Alpaslan, F., Herausgeber
Jain, L.C., Herausgeber
Patnaik, S., Herausgeber
Affiliations:
1Department Physiology of Cognitive Processes, Max Planck Institute for Biological Cybernetics, Max Planck Society, ou_1497798              

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 Zusammenfassung: This paper advocates the concept of user modeling (UM), which involves dialogue strategies. We focus on human-machine collaboration, which is endowed with human-like capabilities and in this regard, UM could be related to cognitive modeling, which deals with issues of perception, behavioral decision and selective attention by humans. In our UM, approximating a pay-off matrix or function will be the method employed in order to estimate user’s pay-offs, which is basically calculated by user’s action. Our proposed computation method allows dialogue strategies to be determined by maximizing mutual expectations of the pay-off matrix. We validated the proposed computation using a social game called “Iterative Prisoner’s Dilemma (IPD)” that is usually used for modeling social relationships based on reciprocal altruism. Furthermore, we also allowed the pay-off matrix to be used with a probability distribution function. That is, we assumed that a person’s pay-off could fluctuate over time, but that the fluctuation could be utilized in order to avoid dead reckoning in a true pay-off matrix. Accordingly, the computational structure is reminiscent of the regularization implicated by the machine learning theory. In a way, we are convinced that the crucial role of dialogue strategies is to enable user models to be smoother by approximating probabilistic pay-off functions. That is, their user models can be more accurate or more precise since the dialogue strategies induce the on-line maintenance of models. Consequently, our improved computation allowing the pay-off matrix to be treated as a probabilistic density function has led to better performance, Because the probabilistic pay-off function can be shifted in order to minimize error between approximated and true pay-offs in others. Moreover, our results suggest that in principle the proposed dialogue strategy should be implemented to achieve maximum mutual expectation and uncertainty reduction regarding pay-offs for others. Our work also involves analogous correspondences on the study of pattern regression and user modeling in accordance with machine learning theory.

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 Datum: 2005
 Publikationsstatus: Erschienen
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Titel: Machine Learning and Robot Perception
Genre der Quelle: Buch
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Ort, Verlag, Ausgabe: Berlin, Germany : Springer
Seiten: - Band / Heft: - Artikelnummer: - Start- / Endseite: 325 - 351 Identifikator: -