机器学习技术在孟加拉犯罪新闻分类中的应用

Nusrat Islam, Rokeya Siddiqua, S. Momen
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摘要

犯罪侦查、犯罪模式分类和犯罪倾向猜测的方法被称为犯罪分析与预测。犯罪自然是不可预测的,而且具有社会破坏性。随着孟加拉国人口的增加,犯罪的趋势也在增加,这正在以各种方式破坏我们的社会。因此,为了预测未来的犯罪类型,犯罪数据分析变得至关重要。在我们的研究论文中,使用了六种类型的机器学习算法来对犯罪新闻进行分类。犯罪新闻从网上的孟加拉报纸和电视频道使用Web Scraper获取。为了提取特征(重要的词),使用了两种类型的特征提取器,包括CountVectorizer和TfidfVectorizer,其中CountVectorizer来自一个著名的python预训练包BnVec。Logistic回归模型和SVM模型的准确率分别为87.69%和86.09%。此外,Logistic回归的假阴性结果较少,召回率为86.65%,f1得分为86.58%。这项研究有可能用于预防犯罪和逮捕、调查和起诉罪犯。
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Machine Learning Techniques Applied To Bangla Crime News Classification
The methodical approach to crime detection, crime pattern classification and crime tendency guessing is called crime analysis and prediction. Crime is naturally unpredictable and socially disruptive. With the increase in the population of Bangladesh, the tendency of crime is also increasing, which is destroying our society in various ways. Therefore, crime data analysis has become essential in order to predict future crime types. In our research paper, six types of Machine learning algorithms were used in order to classify the crime news. Crime news were fetched from online Bangla newspapers and TV channels using Web Scraper. In order to extract the features (important words), two types of feature extractors have been used including CountVectorizer and TfidfVectorizer where CountVectorizer was from a well-known python pre-trained package named BnVec. Accuracies of 87.69% and 86.09% were found from the Logistic Regression and SVM models respectively. Besides, Logistic regression provided less false negative with 86.65% recall and 86.58% F1-score. This research has a potential to be used to prevent crime and to apprehend, investigate and prosecute the criminals.
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