K. M. Rashedul Alam, K. Ahammed, Mohammad Abu Tareq Rony, Zannatul Ferdousi
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引用次数: 1
摘要
吸毒成瘾是全世界日益严重的威胁之一。据《达卡论坛报》报道,孟加拉国有超过750万人吸毒成瘾。吸毒成瘾者与非吸毒成瘾者在健康状况、社会生活、个人生活和家庭生活行为等方面存在很大差异。因此,应采取措施,以适当的治疗问题,以防止吸毒成瘾。在本文中,我们挖掘了吸毒成瘾的影响因素和可能的解决方案,以降低吸毒成瘾率。这项研究是在孟加拉国的达卡进行的。大多数吸毒成瘾者的数据是从“戒毒中心”收集的,而非吸毒成瘾者的数据则是从孟加拉国达卡的不同学校、学院和大学收集的。所有人都是男性,年龄在17至45岁之间。我们的原始数据集仅包含188个定性数据。采用了逻辑回归、决策树、随机森林、朴素贝叶斯、支持向量机等5种算法,并对其结果进行了比较。其中Random Forest的准确率最高,为97.3484%,XGBoost & Decision Tree Classifier的准确率分别为96.2768%和94.68%。
A Comparative Machine Learning Study to Predict Drug Addiction in Bangladesh
Drug Addiction is one of the growing threats all over the world. According to Dhaka Tribune, more than 7.5 million people are addicted to drugs in Bangladesh. There are a lot of differences between a drug-addicted and a non-addicted person on health condition, social life, personal life, and familial life behaviors. So, steps should be taken to prevent drug addiction with proper curative issues. In this paper, we dig for the influential factors behind drug addiction and possible solutions to reduce the drug addiction rate. The research is held on the people of Dhaka, Bangladesh. Most of the data of drug-addicted people are collected from ‘Drug Rehab’ and for non-addicted person data we have collected from different schools, colleges, and universities in Dhaka, Bangladesh. All are male and the age group of 17 to 45 years. Our primary data set is constructed including only 188 qualitative data. A total of 5 algorithms have been employed including Logistic Regression, Decision Tree, Random Forest, Naive Bayes, Support Vector Machine (SVM) and their results are compared. Among the algorithms Random Forest comes up with the highest accuracy of 97.3484%, XGBoost & Decision Tree Classifier delivers the accuracy of 96.2768% and 94.68%.