论文提交推荐系统的简单对比学习

Duc H. Le, T. T. Doan, S. T. Huynh, Binh T. Nguyen
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摘要

. 推荐系统在许多领域,特别是学术领域发挥着至关重要的作用,支持研究人员通过会议或期刊的选择过程提交和提高他们的工作被接受。本研究提出一种基于转换的模型,利用迁移学习作为论文提交推荐系统的有效方法。通过将基本信息(如标题、摘要和关键词列表)与期刊的目标和范围相结合,该模型可以推荐最大限度地提高论文接受度的Top K期刊。我们的模型经历了两个阶段的发展:(i)用一个简单的对比学习框架对预训练语言模型(LM)进行微调。我们使用一个简单的监督对比目标来微调所有参数,鼓励LM有效地学习文档表示。(ii)然后在下游任务的不同特征组合上训练微调的LM。结合题目、摘要和关键词作为输入特征,在测试集上Top 1、Top 3、Top 5、Top 10的准确率分别达到0.5173、0.8097、0.8862、0.9496,与之前的方法相比,本文提出了一种更高级的方法来提高论文提交推荐系统的效率。结合期刊的目标和范围,我们的模型显示了一个令人兴奋的结果,分别得到0.5194,0.8112,0.8866,0.9496的前1,3,5和10。我们在https://github.com/hduc-le/SimCPSR上提供了进一步参考的实现和数据集。
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SimCPSR: Simple Contrastive Learning for Paper Submission Recommendation System
. The recommendation system plays a vital role in many areas, especially academic fields, to support researchers in submitting and increasing the acceptance of their work through the conference or journal selection process. This study proposes a transformer-based model using transfer learning as an efficient approach for the paper submission recommendation system. By combining essential information (such as the title, the abstract, and the list of keywords) with the aims & scopes of journals, the model can recommend the Top K journals that maximize the acceptance of the paper. Our model had developed through two states: (i) Fine-tuning the pre-trained language model (LM) with a simple contrastive learning framework. We utilized a simple supervised contrastive objective to fine-tune all parameters, encouraging the LM to learn the document representation effectively. (ii) The fine-tuned LM was then trained on different combinations of the features for the downstream task. This study suggests a more advanced method for enhancing the efficiency of the paper submission recommendation system compared to previous approaches when we respectively achieve 0.5173, 0.8097, 0.8862, 0.9496 for Top 1, 3, 5, 10 accuracies on the test set for combining the title, abstract, and keywords as input features. Incorpo-rating the journals’ aims and scopes, our model shows an exciting result by getting 0.5194, 0.8112, 0.8866, 0.9496 respective to Top 1, 3, 5, and 10. We provide the implementation and datasets for further reference at https://github.com/hduc-le/SimCPSR .
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