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REGRESSION-TREE COMPRESSED FEATURE VECTOR MACHINE FOR TIM-EXPIRING INVENTORY UTILIZATION PREDICTION

机译:回归树压缩特征向量机用于库存预测的优化

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.
机译:本公开包括用于回归树修改的特征向量机器学习模型的系统,以用于过期时间库存中的利用率预测。在线计算系统接收用于列表的特征向量,并将特征向量和修改后的特征向量输入到需求函数中以生成需求估计。系统将需求估计值输入到可能性模型中以生成一组请求可能性,每个请求可能性表示过期时间的库存将以一组测试价格和到期测试时间中的每一个接收交易请求的可能性。该系统还基于训练数据集来训练回归树模型,该训练数据集包括从该集合中的每个请求可能性以及测试价格和测试时间段到到期时间,该到期时间用于生成用于生成请求可能性的需求估计。

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