Prediction on Intent Classification of Java and C# Web queries using Semi-supervision

Md. Ashfaqul Haque, Israt Jahan Dristy, Mohammad Tariqul Islam Tuhin, Ali Hossain Sagar, Jayed Mohammad Barek
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Abstract

Proper intent classification of web queries is significant in providing users with accurate search results. For STEM-related searches, the generalized search engine provides some discrete results, and it becomes challenging to find the desired ones. Here, in our work, we have used a semi-supervised process and compared it with supervising approaches. This process has been done on Java and C# Bing web queries. From the performance comparison, we have found that our semi-supervised model has performed better than others according to accuracy and f1-score. We have also analyzed the performance by changing training data size, doing error analysis on all models, and finished by presenting how this prediction can be used on a search data fetching process.
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基于半监督的Java和c# Web查询意图分类预测
对网络查询进行适当的意图分类对于为用户提供准确的搜索结果非常重要。对于与stem相关的搜索,广义搜索引擎提供了一些离散的结果,因此很难找到所需的结果。在这里,在我们的工作中,我们使用了半监督过程,并将其与监督方法进行了比较。这个过程已经在Java和c# Bing web查询中完成。从性能比较中,我们发现我们的半监督模型在准确率和f1-score上都比其他模型表现得更好。我们还通过改变训练数据大小来分析性能,对所有模型进行错误分析,最后展示了如何将这种预测用于搜索数据获取过程。
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