MRTensorCube: tensor factorization with data reduction for context-aware recommendations
  • Kim Svetlana
  • Lee Suan
  • Kim Jinho
  • Yoon Yong-Ik
Citations

WEB OF SCIENCE

3
Citations

SCOPUS

4

초록

Context information can be an important factor of user behavior modeling and various context recognition recommendations. However, state-of-the-art context modeling methods cannot deal with contexts of other dimensions such as those of users and items and cannot extract special semantics. On the other hand, some tasks for predicting multidimensional relationships can be used to recommend context recognition, but there is a problem with the generation recommendations based on a variety of context information. In this paper, we propose MRTensorCube, which is a large-scale data cube calculation based on distributed parallel computing using MapReduce computation framework and supports efficient context recognition. The basic idea of MRTensorCube is the reduction of continuous data combined partial filter and slice when calculating using a four-way algorithm. From the experimental results, it is clear that MRTensor is superior to all other algorithms. © 2017 The Author(s)

키워드

Context awarenessMapReduce frameworkTensor data cubeSemanticsTensorsContext recognitionContext- awarenessContext-aware recommendationsData cubeDistributed parallel computingMapreduce frameworksTensor factorizationUser behavior modelingBehavioral research
제목
MRTensorCube: tensor factorization with data reduction for context-aware recommendations
저자
Kim SvetlanaLee SuanKim JinhoYoon Yong-Ik
DOI
10.1007/s11227-017-2002-1
발행일
2020-10
유형
Article in Press
저널명
Journal of Supercomputing
76
10
페이지
7847 ~ 7857