- 专利标题: REGRESSION-TREE COMPRESSED FEATURE VECTOR MACHINE FOR TIME-EXPIRING INVENTORY UTILIZATION PREDICTION
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申请号: US15482453申请日: 2017-04-07
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公开(公告)号: US20170308846A1公开(公告)日: 2017-10-26
- 发明人: Spencer de Mars , Yangli Hector Yee , Peng Ye , Fenglin Liao , Li Zhang , Kim Pham , Julian Qian , Benjamin Yolken
- 申请人: Airbnb, Inc.
- 主分类号: G06Q10/08
- IPC分类号: G06Q10/08 ; G06N5/04 ; G06N99/00 ; G06Q10/06
摘要:
This disclosure includes systems for regression-tree-modified feature vector machine learning models for utilization prediction in time-expiring inventory. An online computing system receives a feature vector for a listing and inputs the feature vector and modified feature vectors into a demand function to generate demand estimates. The system inputs the demand estimates into a likelihood model to generate a set of request likelihoods, each request likelihood representing a likelihood that the time-expiring inventory will receive a transaction request at each of a set of test price and test times to expiration. The system further trains a regression tree model based on a set of training data comprising each of the request likelihoods from the set and the test price and test time period to expiration used to generate the demand estimate that was used to generate the request likelihood.
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