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Multi-dimension Tensor Factorization Collaborative Filtering Recommendation for Academic Profiles

机译:学术档案的多维张量因子分解协同过滤建议

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The choice of academic itineraries and/or optional subjects to attend is not usually an easy decision since, in most cases, students lack the information, maturity, and knowledge required to make right decisions. This paper evaluates the support of Collaborative Systems for helping and guiding students in this decision-making process, considering the behavior and impact of these systems on the use of data different from the formal information the students usually use. For this purpose, the research applied the clustering based Multi-dimension Tensor Factorization approach to build a recommendation system and confirm that the increment in tensors improves the recommendation accuracy. As a result, this approach permits the user to take advantage of the contextual information to reduce the sparsity issue and increase the recommendation accuracy.
机译:通常,选择学术路线和/或可选科目通常不是一个容易的决定,因为在大多数情况下,学生缺乏做出正确决定所需的信息,成熟度和知识。本文评估了协作系统在此决策过程中帮助和指导学生的支持,考虑了这些系统对数据使用的行为和影响,这些数据与学生通常使用的正式信息不同。为此,研究应用了基于聚类的多维张量因子分解方法来构建推荐系统,并确认张量的增量可以提高推荐精度。结果,该方法允许用户利用上下文信息来减少稀疏性问题并提高推荐准确性。

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