发明申请
US20080301069A1 SYSTEM AND METHOD FOR LEARNING BALANCED RELEVANCE FUNCTIONS FROM EXPERT AND USER JUDGMENTS
有权
从专家和用户判断中学习平衡相关函数的系统和方法
- 专利标题: SYSTEM AND METHOD FOR LEARNING BALANCED RELEVANCE FUNCTIONS FROM EXPERT AND USER JUDGMENTS
- 专利标题(中): 从专家和用户判断中学习平衡相关函数的系统和方法
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申请号: US11755134申请日: 2007-05-30
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公开(公告)号: US20080301069A1公开(公告)日: 2008-12-04
- 发明人: Keke Chen , Ya Zhang , Zhaohui Zheng , Hongyuan Zha , Gordon Sun
- 申请人: Keke Chen , Ya Zhang , Zhaohui Zheng , Hongyuan Zha , Gordon Sun
- 主分类号: G06F15/18
- IPC分类号: G06F15/18
摘要:
The present invention relates to systems and methods for determining a content item relevance function. The method comprises collecting user preference data at a search provider for storage in a user preference data store and collecting expert-judgment data at the search provider for storage in an expert sample data store. A modeling module trains a base model through the use of the expert-judgment data and tunes the base model through the use of the user preference data to learn a set of one or more tuned models. A measure (B measure) is designed to evaluate the balanced performance of tuned model over expert judgment and user preference. The modeling module generates or selects the content item relevance function from the tuned models with B measure as the selection criterion.
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