PREDICTION USING THE SVM ALGORITHM IN MACHINE LEARNING
Keywords:
Machine learning, SVM algorithm, prediction, classification, data analysis, Flask, web integration.Abstract
This article explores the process of developing a system that predicts users' purchasing probability based on their socio-economic indicators using the Support Vector Machines (SVM) algorithm. The study covers the issues of data training, scaling, and integrating the trained model into a web interface via the Flask framework.
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