Telecommunications Science ›› 2023, Vol. 39 ›› Issue (5): 101-115.doi: 10.11959/j.issn.1000-0801.2023111
• Research and Development • Previous Articles Next Articles
Min LU1, Juan HU1,2, Xianchao ZHANG2, Weijian DING1,2, Guangxue YUE2
Revised:
2023-05-11
Online:
2023-05-20
Published:
2023-05-01
Supported by:
CLC Number:
Min LU, Juan HU, Xianchao ZHANG, Weijian DING, Guangxue YUE. Personalized recommendation model based on users multi-features fusion[J]. Telecommunications Science, 2023, 39(5): 101-115.
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ID | 名称 |
0 | other or not specified(其他或未指定) |
1 | academic/educator(学术/教育工作者) |
2 | artist(艺术家) |
3 | clerical/admin(文书/行政) |
4 | college/grad student(大学/研究生) |
5 | customer service(客户服务) |
6 | doctor/health care(医生/医疗保健) |
7 | executive/managerial(执行/管理) |
8 | farmer(农民) |
9 | homemaker(操持家务者) |
10 | K-12 student(K-12学生) |
11 | lawyer(律师) |
12 | programmer(程序员) |
13 | retired(已退休人员) |
14 | sales/marketing(销售/营销) |
15 | scientist(科学家) |
16 | self-employed(个体经营者) |
17 | technician/engineer(技术员/工程师) |
18 | tradesman/craftsman(商人/工匠) |
19 | unemployed(失业人员) |
20 | writer(作家) |
"
潜在特征向量维度/维 | MLP0 | MLP1 | MLP2 | MLP3 | MLP4 | MLP5 | MLP6 | MLP7 | MLP8 |
10 | 0.708 4 | 0.578 9 | 0.785 4 | 0.569 6 | 0.804 3 | 0.742 0 | 0.857 9 | 0.949 8 | 0.871 2 |
20 | 0.734 4 | 0.685 1 | 0.828 3 | 0.844 7 | 0.892 4 | 0.948 0 | 0.956 1 | 0.975 8 | 0.979 1 |
30 | 0.691 0 | 0.769 0 | 0.678 9 | 0.921 8 | 0.927 3 | 0.953 8 | 0.968 7 | 0.980 4 | 0.977 6 |
40 | 0.710 2 | 0.594 3 | 0.800 0 | 0.886 6 | 0.943 4 | 0.971 5 | 0.964 4 | 0.980 3 | 0.975 8 |
50 | 0.688 8 | 0.776 0 | 0.889 9 | 0.922 4 | 0.974 8 | 0.977 6 | 0.980 5 | 0.983 1 | 0.980 0 |
60 | 0.706 0 | 0.596 2 | 0.879 0 | 0.974 2 | 0.970 2 | 0.976 1 | 0.980 2 | 0.978 9 | 0.980 6 |
70 | 0.735 6 | 0.659 6 | 0.958 9 | 0.973 6 | 0.972 4 | 0.981 4 | 0.982 1 | 0.978 9 | 0.980 3 |
80 | 0.726 7 | 0.615 4 | 0.890 9 | 0.952 8 | 0.974 5 | 0.979 9 | 0.978 4 | 0.981 1 | 0.983 4 |
"
潜在特征向量维度/维 | MLP0 | MLP1 | MLP2 | MLP3 | MLP4 | MLP5 | MLP6 | MLP7 | MLP8 |
10 | 0.605 7 | 0.450 5 | 0.727 5 | 0.470 0 | 0.757 0 | 0.717 0 | 0.843 0 | 0.940 9 | 0.860 2 |
20 | 0.651 6 | 0.595 7 | 0.785 1 | 0.841 9 | 0.881 5 | 0.939 9 | 0.948 8 | 0.968 8 | 0.972 5 |
30 | 0.596 5 | 0.709 0 | 0.625 0 | 0.912 0 | 0.919 0 | 0.945 3 | 0.960 6 | 0.972 5 | 0.969 0 |
40 | 0.627 0 | 0.499 3 | 0.774 2 | 0.871 0 | 0.933 7 | 0.962 7 | 0.956 0 | 0.972 7 | 0.969 1 |
50 | 0.612 8 | 0.741 6 | 0.874 8 | 0.913 3 | 0.967 33 | 0.969 9 | 0.973 1 | 0.974 9 | 0.973 5 |
60 | 0.640 7 | 0.508 1 | 0.864 4 | 0.966 7 | 0.962 5 | 0.968 2 | 0.973 8 | 0.972 2 | 0.974 3 |
70 | 0.673 6 | 0.599 8 | 0.948 9 | 0.968 3 | 0.965 0 | 0.973 1 | 0.975 1 | 0.971 5 | 0.973 5 |
80 | 0.672 7 | 0.542 1 | 0.872 4 | 0.944 3 | 0.967 8 | 0.973 6 | 0.971 4 | 0.974 3 | 0.975 5 |
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