心理健康分析与预测的机器学习模型研究

Ajith Sankar R, S. Juliet
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引用次数: 0

摘要

机器学习技术被认为是最适合心理健康分析和预测的方法。精神疾病在世界范围内急剧增加,已成为一个亟待解决的严重的人类问题。从许多研究工作和研究文章中可以明显看出,机器学习算法可以成为发现精神疾病的有效方法。本文研究了不同的机器学习算法,以找到适合更准确、更快地预测人的心理健康状况的最佳模型。为了创建一个有效和快速运行的系统,本文研究了各种机器学习模型的性能,包括KNN,支持向量机,随机森林,逻辑回归,决策树等。在成功执行后,根据每种方法提供的精度对所有模型进行比较。
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Investigations on Machine Learning Models for Mental Health Analysis and Prediction
Machine learning Techniques are identified as the most suitable methods for mental health analysis and prediction. Mental illness among people has increased vastly around the world and has become a serious human problem to be solved. From much research work and research articles, it is evident that machine learning algorithms can be an effective approach to finding mental illness. In this paper, different machine learning algorithms are investigated to find the best model, suitable to predict the mental health of a person more accurately and at a faster rate. In order to create a system that operates effectively and quickly, this paper investigates the performance of various machine learning models, including KNN, Support Vector Machine, Random Forest, Logistic regression, Decision tree, etc. All the models are compared based on the accuracy that each method offers after successful execution.
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