Please use this identifier to cite or link to this item: http://dspace.azjhpc.org/xmlui/handle/123456789/166
Title: PROVIDE A MODEL BASED SENTIMENT ANALYSIS SYSTEM FOR SALES PREDICTION IN MARKETING ACCORDING TO THE AGA-LSTM NEURAL NETWORK MODEL
Authors: Babaei, Shiva
Sharabyan, Mohammad Tahghighi
Babaei, Akbar
Qasabeh, Zahra Tayyebi
Keywords: Sentiment Analysis System;Sales Forecasting;AGA-LSTM Neural Network Marketing;Adaptive Genetic Algorithm
Issue Date: Jun-2023
Publisher: Azerbaijan Journal of High Performance Computing
Abstract: 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.
URI: http://dspace.azjhpc.org/xmlui/handle/123456789/166
ISSN: 2616-6127
2617-4383
DOI: https://doi.org/10.32010/26166127.2023.6.1.30.48
Journal Title: Azerbaijan Journal of High Performance Computing
Volume: 6
Issue: 1
First page number: 30
Last page number: 48
Number of pages: 19
Appears in Collections:Azerbaijan Journal of High Performance Computing

Files in This Item:
File Description SizeFormat 
doi.org.10.32010.26166127.2023.6.1.30.48.pdf2.07 MBAdobe PDFView/Open


Items in DSpace are protected by copyright, with all rights reserved, unless otherwise indicated.