Research on the impact of artificial intelligence-based e-commerce personalization on traditional accounting methods

Pan Cao
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Abstract

With the development of artificial intelligence technology in various fields, the traditional accounting method is no longer applicable to the personalized development of e-commerce industry; Therefore, it is essential to improve the accounting method and construct a personalized recommendation model for e-commerce. Based on this background, this study firstly reconstructs the steps of accounting element recognition in the traditional accounting system and constructs an automated accounting recognition mechanism using BP neural network algorithm, aiming to improve the accuracy and efficiency of accounting element recognition; Secondly, a personalized e-commerce recommendation model based on multiple intelligence is built, which uses intelligent Q-learning algorithm to optimize the recommendation module, aiming to improve the accuracy of personalized recommendation. By comparing the performance of different accounting models under different personalized e-commerce systems, the accounting model proposed in this paper can predict the accounting entries well under the three-layer BP neural network, and the error between the maximum predicted value and the actual value is 0.23%. The recommendation model proposed in the study outperforms the traditional recommendation model and the recommendation model under collaborative filtering algorithm in predicting customers' personal preferences, whose predicted value is closer to the real situation. In summary, both the accounting method and the personalized recommendation model for e-commerce proposed in this study can achieve better application results, thus providing a new idea for the development of the e-commerce industry.

基于人工智能的电子商务个性化对传统会计方法的影响研究
随着人工智能技术在各个领域的发展,传统的会计核算方法已不再适用于电子商务行业的个性化发展;因此,有必要改进会计核算方法,构建电子商务个性化推荐模型。基于这一背景,本研究首先重构了传统会计系统中会计要素识别的步骤,并利用BP神经网络算法构建了自动化的会计识别机制,旨在提高会计要素识别精度和效率;其次,建立了一个基于多元智能的个性化电子商务推荐模型,利用智能Q学习算法对推荐模块进行优化,旨在提高个性化推荐的准确性。通过比较不同会计模型在不同个性化电子商务系统下的表现,本文提出的会计模型可以在三层BP神经网络下很好地预测会计分录,研究中提出的推荐模型在预测客户个人偏好方面优于传统推荐模型和协同过滤算法下的推荐模型,其预测值更接近真实情况。总之,本研究提出的电子商务核算方法和个性化推荐模型都能取得较好的应用效果,从而为电子商务行业的发展提供了新的思路。
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