A Meta-Heuristic Algorithm Approximating Optimized Recommendations for E-Commerce Business Promotions

Shalini Gupta, V. S. Dixit
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Abstract

To provide personalized services such as online-product recommendations, it is usually necessary to model clickstream behavior of users if implicit preferences are taken into account. To accomplish this, web log mining is a promising approach that mines clickstream sessions and depicts frequent sequential paths that a customer follows while browsing e-commerce websites. Strong attributes are identified from the navigation behavior of users. These attributes reflect absolute preference (AP) of the customer towards a product viewed. The preferences are obtained only for the products clicked. These preferences are further refined by calculating the sequential preference (SP) of the user for the products. This paper proposes an intelligent recommender system known as SAPRS (sequential absolute preference-based recommender system) that embed these two approaches that are integrated to improve the quality of recommendation. The performance is evaluated using information retrieval methods. Extensive experiments were carried out to evaluate the proposed approach against state-of-the-art methods.
一种近似优化电子商务促销推荐的元启发式算法
为了提供个性化的服务,如在线产品推荐,如果考虑到隐含的偏好,通常有必要对用户的点击流行为进行建模。为了实现这一点,web日志挖掘是一种很有前途的方法,它可以挖掘点击流会话,并描述客户在浏览电子商务网站时遵循的频繁顺序路径。从用户的导航行为中识别强属性。这些属性反映了客户对所查看产品的绝对偏好(AP)。只获取点击的产品的首选项。通过计算用户对产品的顺序偏好(SP),可以进一步细化这些偏好。本文提出了一种基于顺序绝对偏好的智能推荐系统SAPRS (sequential absolute preference-based recommendation system),该系统将这两种方法集成在一起,以提高推荐质量。使用信息检索方法对性能进行评估。进行了大量的实验,以评估所提出的方法与最先进的方法。
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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