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A multiple source based transfer learning framework for marketing campaigns
James BROWNLOW
, Charles CHU
,
Guandong XU
, Ben CULBERT
, Bin FU
, And Qinxue MENG
Offices of the President (P)
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:
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Keyphrases
Transfer Learning
100%
Learning Framework
100%
Source Domain
100%
Target Domain
100%
Source-driven
100%
Marketing Campaign
100%
Learning Task
66%
Knowledge Transfer
33%
Copyright
33%
Machine Learning Models
33%
Learning Performance
33%
Learning Model
33%
Efficient Learning
33%
Rapid Growing
33%
Inductive Learning
33%
Transductive Learning
33%
Prospective Customers
33%
Computer Science
Learning Framework
100%
Transfer Learning
100%
Marketing Campaign
100%
Machine Learning
33%
Learning Performance
33%
Prospective Customer
33%
Transductive Learning
33%
Chemical Engineering
Learning System
100%