Collabortive filtering using machine learning and statistical techniques
Collaborative filtering (CF), a very successful recommender system, is one of the applications of data mining for incomplete data. The main objective of CF is to make accurate recommendations from highly sparse user rating data. My contributions to this research topic include proposing the framework...
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ndltd-fau.edu-oai-fau.digital.flvc.org-fau_28682019-07-04T03:51:01Z Collabortive filtering using machine learning and statistical techniques Su, Xiaoyuan. Text Electronic Thesis or Dissertation Florida Atlantic University English xv, 139 p. : ill. (some col.). electronic Collaborative filtering (CF), a very successful recommender system, is one of the applications of data mining for incomplete data. The main objective of CF is to make accurate recommendations from highly sparse user rating data. My contributions to this research topic include proposing the frameworks of imputation-boosted collaborative filtering (IBCF) and imputed neighborhood based collaborative filtering (INCF). We also proposed a model-based CF technique, TAN-ELR CF, and two hybrid CF algorithms, sequential mixture CF and joint mixture CF. Empirical results show that our proposed CF algorithms have very good predictive performances. In the investigation of applying imputation techniques in mining incomplete data, we proposed imputation-helped classifiers, and VCI predictors (voting on classifications from imputed learning sets), both of which resulted in significant improvement in classification performance for incomplete data over conventional machine learned classifiers, including kNN, neural network, one rule, decision table, SVM, logistic regression, decision tree (C4.5), random forest, and decision list (PART), and the well known Bagging predictors. The main imputation techniques involved in these algorithms include EM (expectation maximization) and BMI (Bayesian multiple imputation). by Xiaoyuan Su. Vita. Thesis (Ph.D.)--Florida Atlantic University, 2008. Includes bibliography. Electronic reproduction. Boca Raton, Fla., 2008. Mode of access: World Wide Web. Filters (Mathematics) Machine learning Data mining--Technological innovations Database management Combinatorial group theory http://purl.flvc.org/FAU/186301 317858043 186301 FADT186301 fau:2868 College of Engineering and Computer Science Department of Computer and Electrical Engineering and Computer Science http://rightsstatements.org/vocab/InC/1.0/ https://fau.digital.flvc.org/islandora/object/fau%3A2868/datastream/TN/view/Collabortive%20filtering%20using%20machine%20learning%20and%20statistical%20techniques.jpg |
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Filters (Mathematics) Machine learning Data mining--Technological innovations Database management Combinatorial group theory Collabortive filtering using machine learning and statistical techniques |
description |
Collaborative filtering (CF), a very successful recommender system, is one of the applications of data mining for incomplete data. The main objective of CF is to make accurate recommendations from highly sparse user rating data. My contributions to this research topic include proposing the frameworks of imputation-boosted collaborative filtering (IBCF) and imputed neighborhood based collaborative filtering (INCF). We also proposed a model-based CF technique, TAN-ELR CF, and two hybrid CF algorithms, sequential mixture CF and joint mixture CF. Empirical results show that our proposed CF algorithms have very good predictive performances. In the investigation of applying imputation techniques in mining incomplete data, we proposed imputation-helped classifiers, and VCI predictors (voting on classifications from imputed learning sets), both of which resulted in significant improvement in classification performance for incomplete data over conventional machine learned classifiers, including kNN, neural network, one rule, decision table, SVM, logistic regression, decision tree (C4.5), random forest, and decision list (PART), and the well known Bagging predictors. The main imputation techniques involved in these algorithms include EM (expectation maximization) and BMI (Bayesian multiple imputation). === by Xiaoyuan Su. === Vita. === Thesis (Ph.D.)--Florida Atlantic University, 2008. === Includes bibliography. === Electronic reproduction. Boca Raton, Fla., 2008. Mode of access: World Wide Web. |
author2 |
Su, Xiaoyuan. |
author_facet |
Su, Xiaoyuan. |
title |
Collabortive filtering using machine learning and statistical techniques |
title_short |
Collabortive filtering using machine learning and statistical techniques |
title_full |
Collabortive filtering using machine learning and statistical techniques |
title_fullStr |
Collabortive filtering using machine learning and statistical techniques |
title_full_unstemmed |
Collabortive filtering using machine learning and statistical techniques |
title_sort |
collabortive filtering using machine learning and statistical techniques |
publisher |
Florida Atlantic University |
url |
http://purl.flvc.org/FAU/186301 |
_version_ |
1719218850392702976 |