Real or Fake Job Posting Detection

K. Sridevi, G. Likitha, P. Chandana, Shrutika Shamarthi
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Abstract

This research presents a machine learning approach to distinguish between legitimate and fraudulent job postings in the recruiting sector. The dataset used, labelled as 'authentic list,' comprises approximately 17,880 entries from Kaggle and includes various attributes such as job title, location, salary range, company profile, job description, industry, and indicators of fraudulent activity in job advertisements. The proposed methodology begins with Exploratory Data Analysis (EDA) to gain insights into the multi-class classification of different features and to identify correlations within the dataset. Data pre-processing techniques, including Natural Language Processing (NLP), are employed to prepare the datasets for training and testing. Several machine learning algorithms such as K-Nearest Neighbours (KNN), Support Vector Machine (SVM), Random Forest, Logistic Regression, Naive Bayes, and AdaBoost are used to classify job listings as legitimate or fraudulent. The performance of each classifier is evaluated using qualitative metrics such as accuracy, precision, recall, F1-score, selectivity, and specificity. The results show the effectiveness of the system, achieving an accuracy of 99.20% in classifying job postings using the Random Forest classifier.
真假职位发布检测
本研究提出了一种机器学习方法,用于区分招聘领域的合法招聘信息和欺诈性招聘信息。所使用的数据集被标记为 "真实列表",由来自 Kaggle 的约 17,880 个条目组成,包括各种属性,如职位名称、地点、薪资范围、公司简介、职位描述、行业以及招聘广告中的欺诈活动指标。所提出的方法从探索性数据分析(EDA)开始,以深入了解不同特征的多类分类,并识别数据集中的相关性。采用包括自然语言处理(NLP)在内的数据预处理技术,为训练和测试准备数据集。一些机器学习算法,如 K-Nearest Neighbours (KNN)、支持向量机 (SVM)、随机森林 (Random Forest)、逻辑回归 (Logistic Regression)、Naive Bayes 和 AdaBoost 等,被用来对招聘信息进行合法或欺诈性分类。使用准确率、精确度、召回率、F1 分数、选择性和特异性等定性指标对每个分类器的性能进行评估。结果显示了系统的有效性,使用随机森林分类器对招聘信息进行分类的准确率达到了 99.20%。
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