基于ga - lstm神经网络模型,为市场营销中的销售预测提供了一个基于模型的情感分析系统

Shiva Babaei, Mohammad Tahghighi Sharabyan, Akbar Babaei, Zahra Tayyebi Qasabeh
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引用次数: 0

摘要

数据是当今最强大的工具;有价值的事实和信息可以通过使用适当的技术和算法进行分析来确定。同时,互联网技术的迅速普及使得分析网络上产生的数据比以前更加重要。本研究之前讨论的是市场营销中的销售预测,这是本课题中非常重要的一部分。市场营销是提高人们生活水平的一种工具,它是在销售之前和之后进行的。本文提出了一种基于AGA-LSTM神经网络模型的市场销售预测动态分析系统模型。即使对人类来说,用自然语言识别情绪也是一项挑战,而自动识别使其变得更加复杂。本研究提出了一种混合深度学习模型,用于实时多模态数据的准确情感预测。在提出的方法中,工作流程是在从社交网络中提取情感数据后,对其进行预处理并为模式发现做好准备。采用自适应遗传算法对数据进行评估,在设计的神经网络中发现模式,并在发现后发现该模式。销售政策的基石得到改善。采用自适应遗传算法对LSTM模型参数进行优化,该模型能够预测商品种类和网上零售总额。在本文方法的仿真中,经过3000轮的训练,达到了76的准确率,比原方法提高了11%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PROVIDE A MODEL BASED SENTIMENT ANALYSIS SYSTEM FOR SALES PREDICTION IN MARKETING ACCORDING TO THE AGA-LSTM NEURAL NETWORK MODEL
Data is today's most powerful tool; valuable facts and information can be determined by analyzing them using appropriate techniques and algorithms. Also, the rapid increase in access to Internet technology to a large mass of people worldwide has increased the importance of analyzing data generated on the web much more than before. The preceding discussion of this research is sales forecasting in marketing, which is very important in this topic. Marketing is a tool through which people's standard of living is developed, which is done before and after the sale. This research presents a model based on a dynamic analysis system for forecasting marketing sales based on the AGA-LSTM neural network model. It is challenging to recognize emotions in natural language, even for humans, and automatic recognition makes it more complicated. This research presents a hybrid deep-learning model for accurate sentiment prediction in real-time multimodal data. In the proposed method, the work process is such that after extracting emotional data from social networks, they are pre-processed and prepared for pattern discovery. The data is evaluated in the adaptive genetic algorithm, and the pattern is discovered in the designed neural network, and this pattern is discovered after discovery. The cornerstone of sales policies is improved. The adaptive genetic algorithm was used to optimize the parameters of the LSTM model, and the model can predict the types of goods and the total volume of online retail sales. In the simulation of the proposed method, in 3000 rounds of training, an accuracy of 76 has been achieved, which is an improvement of 11% compared to the primary method.
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