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An effective recommender system based on personality traits, demographics and behavior of customers in time context

机译:一个有效的推荐系统基于性格特征、人口结构和行为客户时间上下文

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Purpose Improving the performance of recommender systems (RSs) has always been a major challenge in the area of e-commerce because the systems face issues such as cold start, sparsity, scalability and interest drift that affect their performance. Despite the efforts made to solve these problems, there is still no RS that can solve or reduce all the problems simultaneously. Therefore, the purpose of this study is to provide an effective and comprehensive RS to solve or reduce all of the above issues, which uses a combination of basic customer information as well as big data techniques. Design/methodology/approach The most important steps in the proposed RS are: (1) collecting demographic and behavioral data of customers from an e-clothing store; (2) assessing customer personality traits; (3) creating a new user-item matrix based on customer/user interest; (4) calculating the similarity between customers with efficient k-nearest neighbor (EKNN) algorithm based on locality-sensitive hashing (LSH) approach and (5) defining a new similarity function based on a combination of personality traits, demographic characteristics and time-based purchasing behavior that are the key incentives for customers' purchases. Findings The proposed method was compared with different baselines (matrix factorization and ensemble). The results showed that the proposed method in terms of all evaluation measures led to a significant improvement in traditional collaborative filtering (CF) performance, and with a significant difference (more than 40%), performed better than all baselines. According to the results, we find that our proposed method, which uses a combination of personality information and demographics, as well as tracking the recent interests and needs of the customer with the LSH approach, helps to improve the effectiveness of the recommendations more than the baselines. This is due to the fact that this method, which uses the above information in conjunction with the LSH technique, is more effective and more accurate in solving problems of cold start, scalability, sparsity and interest drift. Research limitations/implications The research data were limited to only one e-clothing store. Practical implications In order to achieve an accurate and real-time RS in e-commerce, it is essential to use a combination of customer information with efficient techniques. In this regard, according to the results of the research, the use of personality traits and demographic characteristics lead to a more accurate knowledge of customers' interests and thus better identification of similar customers. Therefore, this information should be considered as a solution to reduce the problems of cold start and sparsity. Also, a better judgment can be made about customers' interests by considering their recent purchases; therefore, in order to solve the problems of interest drifts, different weights should be assigned to purchases and launch time of products/items at different times (the more recent, the more weight). Finally, the LSH technique is used to increase the RS scalability in e-commerce. In total, a combination of personality traits, demographics and customer purchasing behavior over time with the LSH technique should be used to achieve an ideal RS. Using the RS proposed in this research, it is possible to create a comfortable and enjoyable shopping experience for customers by providing real-time recommendations that match customers' preferences and can result in an increase in the profitability of e-shops.
机译:目的提高推荐系统的性能系统(RSs)一直是一个重大的挑战在电子商务领域,因为系统面对问题,如冷启动,稀疏,可伸缩性和漂移,影响他们的兴趣的性能。这些问题,仍然没有RS同时解决或减少所有的问题。因此,本研究的目的提供一个有效的和全面的RS解决或减少上述问题,使用一个基本的客户信息的组合以及大数据技术。设计/方法/方法最重要提出RS的步骤:(1)收集人口结构和行为数据的客户e-clothing商店;人格特质;矩阵基于客户/用户利益;计算用户之间的相似性有效的再(EKNN)算法基于locality-sensitive散列(激光冲徊化)方法和(5)定义一个新的相似性函数基于个性的结合特征、人口特征和基于时间的购买行为的关键刺激顾客的购买。该方法与不同基线(矩阵分解和合奏)。结果表明,该方法所有评价措施导致了显著改善传统协同过滤(CF)性能,有显著性差异(40%以上),表现好于所有基线。结果,我们发现我们的方法,它使用的人格信息和人口,以及跟踪最近客户的利益和需求对于激光冲徊化方法,有助于改善超过建议的有效性基线。方法,该方法使用上述信息结合激光冲徊化技术,是多有效和更准确的解决问题冷启动、可伸缩性稀疏和兴趣漂移。研究数据仅限于只有一个e-clothing商店。一个准确和实时RS在电子商务,它是结合使用客户的关键信息与有效的技术。方面,根据研究的结果,性格特征和人口的使用特点导致更准确的知识客户的利益,从而更好识别类似的客户。这些信息应该被视为一种减少冷启动的问题和解决方案稀疏。通过考虑他们对客户的利益最近购买;兴趣漂移的问题,不同的应该分配给采购和权重在不同的时间推出的产品/项目(最近,更多的重量)。激光冲徊化技术是用于提高RS在电子商务的可伸缩性。性格特征、人口统计数据随着时间的推移和客户购买行为应该使用激光冲徊化技术来实现的理想的RS。使用RS在本研究提出,可以创建一个舒适为客户愉快的购物体验提供实时匹配的建议客户的偏好,可以导致增加e-shops的盈利能力。

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