【24h】

Asymmetric response aggregation heuristics for rating prediction and recommendation

机译:不对称反应聚合启发式评级预测和推荐

获取原文
获取原文并翻译 | 示例
获取外文期刊封面目录资料

摘要

User-based collaborative filtering is widely used in recommendation systems, which normally comprises three steps: (1) finding the nearest conceptual neighbors, (2) aggregating the neighbors' ratings to predict the ratings of unrated items, and (3) generating recommendations based on the prediction. Existing algorithms mainly focus on steps 1 and 3 but neglect subtle treatments of aggregating neighbors' suggestions in step 2. Based on the discovery of psychology that (i) users' responses to positive and negative suggestions are different, and (ii) users may respond differently from one another, this paper proposes a Personal Asymmetry Response-based Suggestions Aggregation (PARSA) algorithm, which first uses a linear regression method to learn each user's response to negative/positive suggestions from neighbors and then uses a gradient descent algorithm for optimizing them. In addition, this paper designs an Identical Asymmetry Response-based Suggestions Aggregation (IARSA) baseline algorithm, which assumes that all the users' responses to suggestions are identical as references to verify the key contribution of the heuristics employed in our PARSA algorithm that user may responses differently to positive and negative suggestions. Three sets of experiments are designed and implemented over two real-life datasets (i.e., Eachmovie and Netflix) to evaluate the performance of our algorithms. Further, in order to eliminate the influence of different similarity measures, this paper selects three kinds of similarity measures to discover neighbors. Experimental results demonstrate that most people indeed pay more attention to negative suggestions and our algorithms achieve better prediction and recommendation performances than the compared algorithms under various similarity measures.
机译:基于用户的协作过滤广泛用于推荐系统,通常包含三个步骤:(1)找到最近的概念邻居,(2)聚合邻居的额定值以预测基于未分类项目的额定值,以及(3)基于生成的建议关于预测。现有算法主要关注步骤1和3,而是忽略了在步骤2中忽略了聚合邻国建议的微妙处理。基于心理学的发现,(i)用户对正负建议的反应不同,(ii)用户可能会响应本文从彼此不同,提出了基于个人不对称响应的建议聚合(PARSA)算法,首先使用线性回归方法来学习每个用户对来自邻居的负/正建议的响应,然后使用梯度血换算法来优化它们。此外,本文设计了一种相同的不对称响应响应的建议聚合(IARSA)基线算法,该算法假设所有用户对建议的响应是相同的,以验证用户可能的ParSA算法中所采用的启发式的关键贡献响应与积极和负面建议不同。三组实验是在两个现实生活数据集(即,Allimovie和Netflix)上进行设计和实现,以评估我们的算法的性能。此外,为了消除不同相似度措施的影响,本文选择了三种相似度措施来发现邻居。实验结果表明,大多数人确实重视负面建议,我们的算法可以实现比各种相似措施下的比较算法更好的预测和推荐表演。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号