结构化数据的多实例回归

K. Wagstaff, T. Lane, A. Roper
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引用次数: 31

摘要

我们提出了一种多实例回归算法,该算法对袋子内部结构进行建模,以识别与袋子标签最相关的物品。多实例回归(multi -instance regression, MIR)对一组具有实值标签的袋子进行操作,每个袋子包含一组未标记的物品,其中每个物品与其袋子标签的相关性是未知的。目标是根据内容物来预测新袋子的标签。与以前的MIR方法不同,MI-ClusterRegress可以对包进行操作,因为包的结构包含从许多不同(但未知)分布中提取的项。mi - clusterregression同时学习袋子内部结构的模型、每个物品的相关性,以及准确预测新袋子标签的回归模型。我们在具有挑战性的遥感作物产量预测MIR问题上对该方法进行了评估。mi - clusterregression提供的预测比使用非多实例方法或MIR方法获得的预测更准确,这些方法没有对袋子结构进行建模。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiple-Instance Regression with Structured Data
We present a multiple-instance regression algorithm that models internal bag structure to identify the items most relevant to the bag labels. Multiple-instance regression (MIR) operates on a set of bags with real-valued labels, each containing a set of unlabeled items, in which the relevance of each item to its bag label is unknown. The goal is to predict the labels of new bags from their contents. Unlike previous MIR methods, MI-ClusterRegress can operate on bags that are structured in that they contain items drawn from a number of distinct (but unknown) distributions. MI-ClusterRegress simultaneously learns a model of the bagpsilas internal structure, the relevance of each item, and a regression model that accurately predicts labels for new bags. We evaluated this approach on the challenging MIR problem of crop yield prediction from remote sensing data. MI-ClusterRegress provided predictions that were more accurate than those obtained with non-multiple-instance approaches or MIR methods that do not model the bag structure.
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