Customer data extraction techniques based on natural language processing for e-commerce business analytics

Abdul B. Maqsood, Angelica Maag, Indra Seher, Md Sayfullah
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Abstract

Natural language processing (NLP) is the a types of artificial intelligence approach used to maintain the decision making and data interaction process with high accuracy and reliability rate. It is also used to maintain the computer-human interaction for better understanding and result. The aim of this work is to review the data extraction techniques with NLP for a better business and user analysis process. For data analysis and user experience analysis process data analytic, K-neighbor techniques are used that are obtained using the method a lLiterature review. This process aims to review the current research articles that are focused on data extraction and analytic techniques. Besides, it is focused on NLP techniques for improving the analysis and extraction process. The Factorization, FCMA, and soft computing algorithms with NLP are reviewed that maintain precision and accuracy rate. Different tools, such as visualization, decision-making, consumer identification, and behavior analysis, are considered during the review process. In this review process, PRM and embedding matrix approaches are considered for an accurate analysis process. The data extraction, feature extraction, and machine learning model with data extraction techniques are reviewed to manage consumer experience and error estimation. This study introduces customer behavior data, Natural processing-based data extraction, e-commerce business effectiveness and evaluation as the major factors of this work.
基于自然语言处理的电子商务业务分析客户数据提取技术
自然语言处理(NLP)是一种人工智能方法,用于维持决策和数据交互过程的高精度和可靠性。它还用于维护人机交互,以便更好地理解和结果。这项工作的目的是回顾NLP的数据提取技术,以便更好地进行业务和用户分析过程。对于数据分析和用户体验分析过程数据分析,使用k邻居技术,该技术是通过文献综述的方法获得的。这个过程的目的是回顾当前的研究文章,集中在数据提取和分析技术。此外,重点介绍了用于改进分析和提取过程的自然语言处理技术。本文综述了基于自然语言处理的因子分解、FCMA和软计算算法,这些算法都能保持精度和正确率。不同的工具,如可视化、决策、消费者识别和行为分析,在审查过程中被考虑。在这个回顾的过程中,考虑到PRM和嵌入矩阵的方法,以准确的分析过程。回顾了数据提取、特征提取和带有数据提取技术的机器学习模型,以管理消费者体验和误差估计。本研究将顾客行为数据、基于自然处理的数据提取、电子商务业务有效性及评价作为本工作的主要因素。
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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