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동의어 포함
Title Page
Abstract
Contents
1. Introduction 13
1.1. Research motivation and objective 13
1.2. Research issues 14
1.2.1. Issue 1: Deriving implicit rating information 14
1.2.2. Issue 2: Integrating implicit rating-based CF and SPA 15
1.2.3. Issue 3: Integrating multiple perspectives of similarity concept 16
1.2.4. Issue 4: Identifying more reliable neighbors 17
1.2.5. Issue 5: Finding different neighbors for each different target item 18
1.2.6. Issue 6: Utilizing temporal information 19
1.3. Organization 21
2. Literature review on recommendation systems 22
2.1. General classification of recommendation systems 22
2.1.1. Content-based filtering (CBF) 22
2.1.2. Collaborative filtering (CF) 24
2.1.3. Rule-based approach 26
2.2. Limitations of recommendation techniques 27
3. Proposed approach to resolving research issues 1 and 2 33
3.1. Overall framework 33
3.2. Collaborative filtering (CF) - based recommendation 34
3.2.1. Deriving implicit ratings of users on items 34
3.2.2. Calculating similarity score based on implicit ratings 36
3.2.3. Selecting neighbors 38
3.2.4. Calculating CF-based predicted preference (CFPP) 38
3.3. Sequential pattern analysis (SPA) - based recommendation 39
3.3.1. Deriving sequential patterns 39
3.3.2. Matching subsequences of a target user with derived sequential patterns 39
3.3.3. Calculating SPA-based predicted preference (SPAPP) 40
3.4. Integrating CF-based and SPA-based Recommendations 40
3.5. Recommending items 41
3.6. An illustration with an example 41
4. Experiments for research issues 1 and 2 45
4.1. Experimental design 45
4.2. Experimental results and analysis 47
4.2.1. Experiment 1: Similarity function 47
4.2.2. Experiment 2: Minimum support 51
4.2.3. Experiment 3: Weight adjustment 52
4.2.4. Experiment 4: Hybrid of CF and SPA 53
4.3. Discussions 54
5. Proposed approach to resolving research issues 3 to 6 56
5.1. Overall framework 56
5.2. Building user profiles 58
5.3. Calculating similarity scores and selecting neighbors 59
5.3.1. Integrating similarity scores 59
5.3.2. Identifying more reliable neighbors 61
5.3.3. Selecting different neighbors for each different target item 62
5.4. Predicting preference scores on items to recommend 66
5.5. Combining predicted preference scores, considering time periods 67
5.6. Recommending items 69
6. Experiments for research issues 3 to 6 70
6.1. Experimental design 70
6.2. Experimental results and analysis 73
6.2.1. Experiment A. 73
6.2.1.1. Experiment A.1: Similarity integration 74
6.2.1.2. Experiment A.2: Relative degree of match (DOM) 76
6.2.1.3. Experiment A.3: Similarity integration and DOM 78
6.2.1.4. Experiment A.4: Different neighbors of a target user for each different target item 81
6.2.1.5. Experiment A.5: Similarity integration, DOM, and different neighbors of a target user for each different target item 84
6.2.2. Experiment B. 88
6.2.2.1. Experiment B.1: Temporal information 88
6.2.2.2. Experiment B.2: Temporal information, similarity integration, DOM, and different neighbors of a target user for each target item 90
6.3. Discussions 92
7. Conclusions 95
References 97
Fig. 1. Overall framework of HOPE system 34
Fig. 2. Different perspectives of three similarity functions 38
Fig. 3. Dataset partitioning 46
Fig. 4. Comparison among CF-based recommendation systems using different similarity function, when the number of neighbors is set to 3 50
Fig. 5. Comparison among SPA-based recommendation systems, each of which is implemented with different minimum support 51
Fig. 6. Adjustment of integration weight 52
Fig. 7. Comparison among three approaches 54
Fig. 8. Overall framework of the proposed recommendation system 58
Fig. 9. Comparison among systems in groups 1-A and 1-B 76
Fig. 10. Comparison among systems in groups 1-A and 1-C 78
Fig. 11. Comparison among systems in groups 1-C and 1-D 80
Fig. 12. Comparison in MAE among systems in groups A to D 80
Fig. 13. Comparison among CF_P and systems in group 1-E 83
Fig. 14. Comparison in MAE among systems in groups 1-A, 1-E, 1-F, and 1-G 84
Fig. 15. Comparison among CF_I(D), CF_P_P, and CF_I(D)_I(D) 86
Fig. 16. Comparison in MAE among CF_I(D), CF_P_D, and CF_I(D)_I(D) 87
Fig. 17. Comparison among systems in groups 2-A and 2-B 90
Fig. 18. Comparison among systems in groups 2-B and 2-C 92
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