Extraction of design variables using collaborative filtering for interactive genetic algorithms

T. Hiroyasu, Hisatake Yokouchi, Misato Tanaka, M. Miki
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引用次数: 9

Abstract

Interactive Genetic Algorithm (iGA) is one of evolutionary computations in which the design candidates are evaluated by human. Using iGA, the sensibility and subjective feelings of humans can be optimized by learning the user's evaluation of presented individuals. In this research, iGA was applied to product recommendation on shopping sites. One of the most difficult points to be addressed in construction of a product recommendation system is to taking a long time to extract and assign values to design variables from all of the actual products on the site. It is also difficult to define product design variables appropriately. To address these problems, we propose a method to generate design variables automatically based on a lot of users' preference data on the Web. We constructed the design variables using the relevance of products obtained by Collaborative Filtering and discussed them. Through the simulation experiments, the effectiveness of the proposed method is discussed.
基于协同过滤的交互式遗传算法的设计变量提取
交互式遗传算法(iGA)是一种由人对候选设计进行评价的进化计算方法。使用iGA,可以通过学习用户对呈现个体的评价来优化人类的敏感性和主观感受。本研究将iGA应用于购物网站的产品推荐。在产品推荐系统的构建中,需要解决的最困难的问题之一是从网站上的所有实际产品中提取设计变量并为其赋值需要花费很长时间。恰当地定义产品设计变量也很困难。为了解决这些问题,我们提出了一种基于Web上大量用户偏好数据自动生成设计变量的方法。利用协同过滤得到的产品相关性构造设计变量,并对其进行讨论。通过仿真实验,验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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