基于神经网络技术的数字财会智能学习

Yanhong Wu
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摘要

随着经济的快速发展,财务会计条件变得越来越重要。这是对会计职业发展历史进程的总结。实践表明,经济的发展离不开会计工作的更新和改革,会计的内容也需要与时俱进,不断完善,这就需要课堂上有更多的知识。神经网络技术主要应用于计算机网络,模拟人的思维来解决问题。将数字化、智能化的会计学习与神经网络相结合,可以大大提高财务学习的效率。本文采用理论研究与实证研究相结合的方法,在总结了近年来部分学者的观点和研究内容的基础上,介绍了本文的基本框架和研究内容,并对研究中收集到的数据进行了系统分析。对数字化会计智能学习的数据进行分析,总结出神经网络方案的相关特点。本文着重探讨财会智能学习环境下的个性化学习模式,以充分发挥智能学习的效果。研究的最终结果表明,与传统教学模式相比,网络智能学习实验班的考试成绩比控制班的70分高出76分。智能化的学习环境提高了会计学生的专业知识和知识水平。实践能力很有帮助。
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Intelligent Learning of Digital Finance and Accounting Based on Neural Network Technology
With the rapid economic growth, financial and accounting conditions have become more and more important. This is a summary of the historical process of accounting career development. Practice shows that economic development is inseparable from the update and reform of accounting work, and the content of accounting also needs to keep pace with the times and constantly improve, which requires more knowledge in the classroom. Neural network technology is mainly applied to computer networks to simulate human thinking to solve problems. When digital and intelligent accounting learning combined with neural network, the efficiency of financial learning can be greatly improved. This article uses a combination of theoretical research and empirical research, based on the views and research content of some scholars over the past few years, introduces the basic framework and research content of this article, and then systematically analyzes the data collected through the research. Analyze the data of the intelligent learning of digital accounting, and summarize the relevant characteristics of the neural network plan. This article focuses on exploring the personalized learning mode in the environment of smart learning in finance and accounting to give full play to the effects of smart learning. The final result of the research shows that compared with the traditional teaching model, the test scores of the experimental class of network intelligent learning are 76 points higher than the 70 points of the control class. The intelligent learning environment improves the professional knowledge and knowledge of accounting students. Practical ability is very helpful.
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