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Intelligent Recommender System for High Dimensional Transaction Data Set with Complex Relationships among the Variables

机译:变量之间具有复杂关系的高维交易数据集智能推荐系统

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Background/Objectives: This paper aims to develop a novel intelligent recommender system suitable for high dimensional data where multiple factor variables influence on multiple response variables. Methods/Statistical Analysis: This paper suggests that the structure of the cause-and-effect relations among the variables can be represented in a simple form called structured association network model (SANM). Based on the SANM and conventional data mining techniques such as association rule mining and na?ve Bayesian classifier, the proposed recommender system computes three novel recommendation scores for each response variables, and the variables with high scores can be selected for recommendation. Findings: For illustration, the proposed recommender system has been applied to a mass health examination result data set. Owing to its simple structure, a SANM for a given data set can be easily obtained by simply identifying the factor and the response variables, and the experiment results revealed that the proposed system can identify the recommendable items for the individuals more effectively than the traditional classification techniques such as na?ve Bayesian classifier. Consequently, we can conclude that the proposed recommender system can deal with high dimensional transaction data set in more effective manner than the traditional approaches where the underlying semantic relationships among the variables are not considered. Applications/Improvements: The proposed recommender system is useful for evaluation of the potential risks of specific diseases. Moreover, the recommendation scores can also be used as a tool for feature construction.
机译:背景/目的:本文旨在开发一种新颖的智能推荐系统,该系统适用于多因素变量影响多个响应变量的高维数据。方法/统计分析:本文建议变量之间因果关系的结构可以用称为结构化关联网络模型(SANM)的简单形式表示。基于SANM和常规数据挖掘技术(例如关联规则挖掘和朴素贝叶斯分类器),建议的推荐器系统为每个响应变量计算三个新颖的推荐分数,并且可以选择分数较高的变量进行推荐。调查结果:为说明起见,建议的推荐系统已应用于大众健康检查结果数据集。由于其简单的结构,只需识别因子和响应变量就可以轻松获得给定数据集的SANM,实验结果表明,与传统分类相比,该系统可以更有效地识别针对个人的推荐项目朴素贝叶斯分类器之类的技术。因此,我们可以得出结论,与不考虑变量之间的潜在语义关系的传统方法相比,所提出的推荐系统可以以更有效的方式处理高维交易数据集。应用/改进:推荐的推荐系统可用于评估特定疾病的潜在风险。此外,推荐分数也可以用作特征构建的工具。

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