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Sequential analysis and clustering to investigate users' online shopping behaviors based on need-states

机译:顺序分析和聚类以研究基于需求状态的用户的在线购物行为

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摘要

With the fast growth of e-commerce and the emerging new retail trend-online and offline integration-it is important to recognize the target market and satisfy customers with different needs by analyzing their online search behaviors. Accordingly, we propose sequential search pattern analysis and clustering to analyze consumers' search behavior throughout the entire shopping process from the perspective of consumer need-states. We seek to understand how recommendation functions (RFs) or popular non-RF web features help consumers to shop online from a need-state perspective. We adopt maximal repeat patterns (MRPs) and lag sequential analysis (LSA) to analyze the sequence of search paths and identify significant repeated search patterns. Furthermore, to investigate the behaviors of customers with different types of need-states, we analyze webpages related to RFs and non-RF features using clustering to connect the evaluation results of search patterns with page traversal behaviors. This yields four groups of consumers who browse for information, adopt recommendations, consult reviews, and conduct searches with different levels of goal-oriented or exploratory-based need-states. The results show that consumers with strong goal-oriented need-states have the simplest search paths compared to other groups, whereas exploratory-based consumers have the most complicated search paths. Furthermore, consumers with higher need-states tend to search directly, consult reviews carefully, and have stored sequential search patterns, whereas consumers with exploratory-based need-states tend to explore the categories of products and adopt product classification hierarchy as a pivot to explore web features and then adopt specific types of RFs. Interestingly, consumers in the review-consulting group all belong to the goal-oriented need-states type with strong knowledge-building behaviors compared to others. The results reveal that each group employs its own particular web features to facilitate the shopping process and we can identify consumer types based on shopping behavior in the early stage of shopping. This suggests that e-store sellers can refine web features and deploy marketing strategies tailored to the search patterns for different levels of need-states.
机译:随着电子商务的快速增长和新兴的新零售趋势在线和离线集成 - 通过分析在线搜索行为来识别目标市场并满足客户的满足客户满意的客户。因此,我们提出了顺序搜索模式分析和聚类,从消费者需求的角度来分析整个购物过程中的消费者的搜索行为。我们寻求了解建议功能(RFS)或流行的非RF Web功能如何帮助消费者从需要状态的角度在线购物。我们采用最大重复模式(MRPS)和LAG顺序分析(LSA)来分析搜索路径的序列并识别重要的重复搜索模式。此外,要调查具有不同类型的需求状态的客户的行为,我们使用聚类分析与RFS和非RF功能相关的网页,以将搜索模式的评估结果与页面遍历行为连接。这产生了四组消费者浏览信息,采用建议,查询审查和进行不同程度的面向目标或探索的需求的搜索。结果表明,与其他群体相比,具有强大目标需求的消费者具有最简单的搜索路径,而基于探索性的消费者具有最复杂的搜索路径。此外,有更高的需求状态的消费者倾向于直接搜索,仔细查阅评论,并储存顺序搜索模式,而基于探索性的需求的消费者倾向于探索产品类别,并采用产品分类层次作为探索的枢轴Web功能然后采用特定类型的RFS。有趣的是,审查咨询集团的消费者都属于与他人相比具有强大知识建设行为的面向目标的需求状态类型。结果表明,每个小组都使用自己的特定网络功能,以方便购物过程,我们可以根据购物早期阶段的购物行为识别消费者类型。这表明电子商店销售商可以改进Web功能,并部署针对不同水平的搜索模式量身定制的营销策略。

著录项

  • 来源
    《Information Processing & Management》 |2020年第6期|102323.1-102323.18|共18页
  • 作者

    I-Chin Wu; Hsin-Kai Yu;

  • 作者单位

    Graduate Institute of Library and Information Studies School of Learning Informatics National Taiwan Normal University No. 162 Sec. 1 Heping East Rd Da-An District Taipei 10610 Taiwan;

    Graduate Institute of Library and Information Studies School of Learning Informatics National Taiwan Normal University No. 162 Sec. 1 Heping East Rd Da-An District Taipei 10610 Taiwan;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Clustering; Lag Sequential Analysis; Web Features; Need-states; Sequential Search Patterns;

    机译:聚类;滞后分析;Web功能;需要 - 州;顺序搜索模式;

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