Techniques Using Artificial Intelligence to Solve Stock Market Forecast, Sales Estimating and Market Division Issues
Journal of Contemporary Issues in Business and Government,
2021, Volume 27, Issue 3, Pages 209-215
10.47750/cibg.2021.27.03.030
Abstract
This research paper would discuss the use of artificial intelligence (AI) in stock market modelling, sales forecasting, and market segmentation problems, with a focus on convolutional neural networks (CNN) and fuzzy logic. Backpropagation algorithms were used to solve the first two problems, while self-organizing maps were used to solve the third (SOM).
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