MCAEM : mixed-correlation analysis-based episodic memory for companion–user interactions
This paper considers episodic memory for companion–human interaction, aiming at improving user experience of interactions by endowing social companions with awareness of past experience. Due to noise and incomplete cues from natural language and speech in real-world interaction, accurate memory retr...
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sg-ntu-dr.10356-1046882020-03-07T11:49:02Z MCAEM : mixed-correlation analysis-based episodic memory for companion–user interactions Zhang, Juzheng Zheng, Jianmin Thalmann, Nadia Magnenat School of Computer Science and Engineering Institute for Media Innovation Episodic Memory Engineering::Computer science and engineering Companion–human Interaction This paper considers episodic memory for companion–human interaction, aiming at improving user experience of interactions by endowing social companions with awareness of past experience. Due to noise and incomplete cues from natural language and speech in real-world interaction, accurate memory retrieval is very challenging and the noise resistance is important in practice. To improve the robustness of companion–human interaction, we propose a mixed-correlation analysis-based episodic memory (MCAEM) model, in which the correlations between memory elements are analyzed and then utilized for memory retrieval. In particular, the correlations are analyzed in three aspects: the relations between elements, importance of attributes and order of events. Based on the mixed-correlation analysis, a new similarity measure is constructed, which has substantially enhanced the noise resistance of memory retrieval. Experiments on a dataset collected from interaction in movies quantitatively evaluate the MCAEM model and compare it with prior work. Also, a user study is conducted to investigate the benefits of integrating the MCAEM model into social companions. The results demonstrate that the companions equipped with the MCAEM model not only have better retrieval performance, but also improve user experience in many aspects. NRF (Natl Research Foundation, S’pore) Accepted version 2019-09-26T07:29:18Z 2019-12-06T21:37:35Z 2019-09-26T07:29:18Z 2019-12-06T21:37:35Z 2018 Journal Article Zhang, J., Zheng, J., & Thalmann, N. M. (2018). MCAEM : mixed-correlation analysis-based episodic memory for companion–user interactions. The Visual Computer, 34(6-8), 1129-1141. doi:10.1007/s00371-018-1537-3 0178-2789 https://hdl.handle.net/10356/104688 http://hdl.handle.net/10220/50023 10.1007/s00371-018-1537-3 en The Visual Computer © 2018 Springer-Verlag GmbH Germany, part of Springer Nature. All rights reserved. This paper was published in The Visual Computer and is made available with permission of Springer-Verlag GmbH Germany, part of Springer Nature. 13 p. application/pdf |
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Episodic Memory Engineering::Computer science and engineering Companion–human Interaction Zhang, Juzheng Zheng, Jianmin Thalmann, Nadia Magnenat MCAEM : mixed-correlation analysis-based episodic memory for companion–user interactions |
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This paper considers episodic memory for companion–human interaction, aiming at improving user experience of interactions by endowing social companions with awareness of past experience. Due to noise and incomplete cues from natural language and speech in real-world interaction, accurate memory retrieval is very challenging and the noise resistance is important in practice. To improve the robustness of companion–human interaction, we propose a mixed-correlation analysis-based episodic memory (MCAEM) model, in which the correlations between memory elements are analyzed and then utilized for memory retrieval. In particular, the correlations are analyzed in three aspects: the relations between elements, importance of attributes and order of events. Based on the mixed-correlation analysis, a new similarity measure is constructed, which has substantially enhanced the noise resistance of memory retrieval. Experiments on a dataset collected from interaction in movies quantitatively evaluate the MCAEM model and compare it with prior work. Also, a user study is conducted to investigate the benefits of integrating the MCAEM model into social companions. The results demonstrate that the companions equipped with the MCAEM model not only have better retrieval performance, but also improve user experience in many aspects. |
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School of Computer Science and Engineering |
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School of Computer Science and Engineering Zhang, Juzheng Zheng, Jianmin Thalmann, Nadia Magnenat |
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Article |
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Zhang, Juzheng Zheng, Jianmin Thalmann, Nadia Magnenat |
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Zhang, Juzheng |
title |
MCAEM : mixed-correlation analysis-based episodic memory for companion–user interactions |
title_short |
MCAEM : mixed-correlation analysis-based episodic memory for companion–user interactions |
title_full |
MCAEM : mixed-correlation analysis-based episodic memory for companion–user interactions |
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MCAEM : mixed-correlation analysis-based episodic memory for companion–user interactions |
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MCAEM : mixed-correlation analysis-based episodic memory for companion–user interactions |
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mcaem : mixed-correlation analysis-based episodic memory for companion–user interactions |
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2019 |
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https://hdl.handle.net/10356/104688 http://hdl.handle.net/10220/50023 |
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