基于轮盘遗传算法(IGCRWGA)的信息增益聚类:一种个性化冷启动问题的新启发式方法

Mohd Abdul Hameed, S. Ramachandram, O. Jadaan
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引用次数: 2

摘要

基于轮盘遗传算法(IGCRWGA)的信息增益聚类是一种用于推荐系统解决个性化问题的新型启发式算法。为了更好地了解轮盘遗传算法在冷启动问题个性化推荐系统中的行为和效果,本文对轮盘遗传算法进行了开发和实验。与其他用于冷启动问题个性化的启发式方法(如通过分割k均值算法(IGCN)的信息增益聚类邻居,通过遗传算法(GCEGA)的信息增益聚类等)的比较表明,IGCRWGA对于大推荐规模(即大于30个项目)产生了最佳推荐,因为它与最小的平均绝对误差(MAE)相关联,这是本工作中使用的评估指标。
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Information Gain Clustering through Roulette Wheel Genetic Algorithm (IGCRWGA): A Novel Heuristic Approach for Personalisation of Cold Start Problem
Information Gain Clustering through Roulette Wheel Genetic Algorithm (IGCRWGA) is a novel heuristic used in Recommender System (RS) for solving personalization problems. In a bid to generate information on the behavior and effects of Roulette Wheel Genetic Algorithm (RWGA) in Recommender System (RS) used in personalization of cold start problem, IGCRWGA is developed and experimented upon in this work / paper. A comparison with other heuristics for personalization of cold start problem - such as Information Gain Clustering Neighbor through Bisecting K-Mean Algorithm (IGCN), Information Gain Clustering through Genetic Algorithm (GCEGA), among others -- showed that IGCRWGA produced the best recommendation for large recommendation size (i.e. greater than 30 items) since it is associated with the least Mean Absolute Error (MAE), the evaluation metric used in this work.
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