In this modern technological era, categorization and ranking of research journals is gaining popularity among researchers and scientists. It plays a significant role for publication of their research findings in a quality journal. Although, many research works exist on journal categorization and ranking, however, there is a lack of research works to categorize and predict the journals using suitable machine learning techniques. This work aims to categorize and predict various academic research journals. This work suggests a hybrid predictive model comprising of five steps. The first step is to prepare the dataset with twenty features. The second step is to pre-process the dataset. The third step is to apply an appropriate clustering algorithm for categorization. The fourth step is to apply appropriate feature selection techniques to get an effective subset of features. The fifth step involves some ensemble plus non ensemble methods to train the model. The model is trained on a full set of features, and a selected subset of features is obtained by applying three feature selection techniques. After model training, the prediction results are evaluated in terms of precision, recall, and accuracy. The results can help the researchers and the practitioners in predicting the journal category.
翻译:在这个现代技术时代,研究期刊的分类和排名在研究人员和科学家中越来越受欢迎,在质量杂志中发表研究成果方面起着重要作用。虽然在期刊分类和排名方面有许多研究工作存在,但缺乏利用适当的机器学习技术对期刊进行分类和预测的研究工作。这项工作旨在对各种学术研究期刊进行分类和预测。这项工作提出了一个由五个步骤组成的混合预测模型。第一步是编制具有20个特点的数据集。第二步是预处理数据集。第三步是应用适当的分类组合算法。第四步是应用适当的特征选择技术来取得一套有效的特征。第五步涉及一些共同的加非共同的方法来培训模型。该模型经过全套特征的培训,通过应用三个特征选择技术获得一组选定的特征。在进行模型培训后,对预测结果进行精确、回顾和准确性评估。其结果可以帮助研究人员和从业人员预测期刊类别。