An article retrieval support system that learns user's Kansei

Yuichi Murakami, Shingo Nakamura, S. Hashimoto
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引用次数: 1

Abstract

Most of article retrieval systems using retrieval criteria of Kansei words have a gap between user's Kansei and system's Kansei model. Therefore, it is not always easy to retrieve the desired articles efficiently according to the user's preference. This paper proposed a system to retrieve the desired articles quickly and intuitively from the database. To achieve this aim, dimension of the retrieval space is compressed by a torus SOM (Self Organizing Maps), and a user can move in the retrieval space panoramically. A user can also choose an elimination method during search. By this method, the system estimates the significant Kansei parameters and makes the search more efficient. The system also has a function to eliminate the unselected articles and reduces the size of SOM. Additionally, the system learns the Kansei of individual user from the retrieval results by using neural networks. In evaluation experiments, we took actual painting as article, and confirmed the efficacy of the proposed method.
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一个学习用户感性的文章检索支持系统
大多数使用感性词检索标准的文章检索系统存在用户感性与系统感性模型之间的差距。因此,根据用户的偏好有效地检索想要的文章并不总是那么容易。本文提出了一种从数据库中快速直观地检索所需文章的系统。为了实现这一目标,检索空间的维度被一个环面SOM(自组织地图)压缩,用户可以在检索空间中全景移动。用户也可以在搜索过程中选择一种消除方法。通过该方法,系统可以估计出重要的感性参数,从而提高搜索效率。该系统还具有消除未选中文章和减小SOM大小的功能。此外,系统利用神经网络从检索结果中学习个人用户的感性特征。在评价实验中,我们以实际绘画为例,验证了所提出方法的有效性。
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