基于细粒度句子增强协同过滤的混合推荐系统

IF 0.7 4区 计算机科学 Q4 COMPUTER SCIENCE, SOFTWARE ENGINEERING
Rawaa Alatrash;Rojalina Priyadarshini
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引用次数: 0

摘要

开发在线教育平台需要采用新的智能程序,以改善学生的长期体验。目前,电子学习推荐系统依靠深度学习方法,根据学生的学习情况向他们推荐合适的电子学习材料。细粒度情感分析(FSA)可以用来丰富推荐系统。用户发布的评论和评分数据对于根据可比学习者发布的评论准确地将学生引导到合适的电子学习资源至关重要。在这项工作中,我们提出了一种基于个性化和 FSA 的新型电子学习推荐系统。通过将基于交替最小平方(ALS)的协同过滤(CF)与 FSA 相结合,提供了一个混合框架,以生成有效的电子内容推荐,命名为 HCFSAR。ALS 试图根据学习者的兴趣选择来捕捉学习者的潜在因素,从而建立学习者档案。我们提出了三个基于注意力机制和双向长短期记忆(bi-LSTM)的 FSA 模型,并用它们训练了十二个模型,以便根据提取的学习者档案从学习者发布的书评中预测新的评分。HCFSAR 使用乘法词嵌入来加强语料库表示,并在为教育背景生成的数据集上进行了训练,结果表明,名为基于乘法的 ABHR-2 的 MHAM(MHAAM)的最佳模型准确率高达 93.39%,比其他模型表现更好。通过搜索不同电子学习资源的评论创建的定制数据集被用来训练不同的建议模型,并根据公共数据集进行验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fine-Grained Sentiment-Enhanced Collaborative Filtering-Based Hybrid Recommender System
Developing online educational platforms necessitates the incorporation of new intelligent procedures in order to improve long-term student experience. Presently, e-learning recommender systems rely on deep learning methods to recommend appropriate e-learning materials to the students based on their learner profiles. Fine-grained sentiment analysis (FSA) can be leveraged to enrich the recommender system. User-posted reviews and rating data are vital in accurately directing the student to the appropriate e-learning resources based on posted comments by comparable learners. In this work, a new e-learning recommendation system is proposed based on individualization and FSA. A hybrid framework is provided by integrating alternating least square (ALS) based collaborative filtering (CF) with FSA to generate an effective e-content recommendation named HCFSAR. ALS attempts to capture the learner's latent factors based on their selections of interest to build the learner profile. Three FSA models based on attention mechanisms and bidirectional long short-term memory (bi-LSTM) are suggested and used to train twelve models in order to predict new ratings from learner-posted book reviews based on the extracted learner profile. HCFSAR used multiplication word embeddings for stronger corpus representation that were trained on a dataset generated for an educational context and showed a better accuracy of 93.39% for the best model entitled MHAM based ABHR-2 with multiplication (MHAAM), which performed better than other models. A tailored dataset that has been created by scraping reviews of different e-learning resources is leveraged to train different proposed models and validate against public datasets.
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来源期刊
Journal of Web Engineering
Journal of Web Engineering 工程技术-计算机:理论方法
CiteScore
1.80
自引率
12.50%
发文量
62
审稿时长
9 months
期刊介绍: The World Wide Web and its associated technologies have become a major implementation and delivery platform for a large variety of applications, ranging from simple institutional information Web sites to sophisticated supply-chain management systems, financial applications, e-government, distance learning, and entertainment, among others. Such applications, in addition to their intrinsic functionality, also exhibit the more complex behavior of distributed applications.
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