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Real-Time Resume Classification System Using LinkedIn Profile Descriptions

机译:使用领英个人资料描述的实时简历分类系统

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In the domain of online job recruitment, accurate job and resume classification is vital for both the seeker and the recruiter. We have built an automatic text classification system that utilizes various techniques like Term frequency-inverse document frequency with Machine Learning and Convolution Neural network for training the model with texts and classifying them into labels and finally to compare their results. Using resume data of applicants, we have categorized them into different categories. Due to the sensitive nature of resume data, we have used domain adaptation. A classifier is trained on a large dataset of job description snippet, which is then used to classify resume data. Despite having a small dataset, consistent classification performance is seen. The primary filter for this type of work is the efficiency the system can provide. We aim to compare the results obtained by various algorithms that are generated using the same data so that the efficiency of each algorithm can be evaluated. From the result, it is evident that character-level CNN gives a better F1 score compared to other models.
机译:在线工作招聘领域,准确的工作和恢复分类对于寻求者和招聘人员至关重要。我们建立了一个自动文本分类系统,它利用各种技术,如术语频率 - 逆文档频率,具有机器学习和卷积神经网络,用于培训模型,并将它们分类为标签,最后进行比较它们的结果。使用申请人的恢复数据,我们已经将它们分为不同的类别。由于恢复数据的敏感性,我们使用了域适应。分类器在作业描述片段的大型数据集上培训,然后用于对恢复数据进行分类。尽管具有小数据集,但可以看到一致的分类性能。这种工作的主要过滤器是系统可以提供的效率。我们的目标是比较通过使用相同数据生成的各种算法获得的结果,从而可以评估每种算法的效率。从结果中,明显看出,与其他模型相比,字符级CNN提供更好的F1分数。

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