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A retrieval method adaptively reducing user's subjective impression gap

机译:一种自适应减少用户主观印象差距的检索方法

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摘要

As an approach to search/retrieve such objects as pictures, music, perfumes and apparels on the Internet, sensitivity-vectors or kansei-veetors are useful since textual keywords are not sufficient to find objects that users want. The sensitivity-vector is an array of values. Each value indicates a degree of feeling or impression represented by a sensitivity word or kansei word. However, due to the gap between user's subjective sensitivity (impression, image and feeling) degree and the corresponding value in the database. Also, such an approach is not enough to retrieve what users want. This paper proposes a retrieval method to automatically and dynamically reduce such gaps by estimating a subjective criterion deviation (we call "SCD") using the user's retrieval history and fuzzy modeling. Additionally, the proposed method can avoid users' burden caused by conventional methods such as completing required questionnaires. This method can also reflect the dynamic change of user's preference which cannot be accomplished by using questionnaires. For the evaluation, an experiment was performed by building and using a perfume retrieval system. Through observing the transition of the deviation reduction degree, it was clarified that the proposed method is effective. In the experiment, the machine could learn users' subjective criteria deviation as well as its dynamic change caused by factors such as user's preference, if the learning rate is well adjusted.
机译:作为一种在Internet上搜索/检索图片,音乐,香水和服装等对象的方法,敏感度矢量或看似简单的对象很有用,因为文本关键字不足以找到用户想要的对象。灵敏度向量是一个值数组。每个值表示由敏感度词或感性词表示的感觉或印象的程度。但是,由于用户的主观敏感度(印象,图像和感觉)程度与数据库中的相应值之间存在差距。而且,这种方法还不足以检索用户想要的内容。本文提出了一种检索方法,该方法通过使用用户的检索历史和模糊建模来估计主观标准偏差(我们称为“ SCD”),从而自动动态地减少此类差距。另外,所提出的方法可以避免由诸如完成所需问卷之类的常规方法所引起的用户负担。该方法还可以反映用户偏好的动态变化,而动态变化是无法通过使用问卷来完成的。为了评估,通过建立和使用香水检索系统进行了实验。通过观察偏差减小程度的变化,可以看出该方法是有效的。在实验中,如果学习速度调整得很好,该机器可以学习用户的主观标准偏差以及由诸如用户的偏好之类的因素引起的动态变化。

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