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A co-training algorithm for multi-view data with applications in data fusion

机译:一种多视图数据协同训练算法及其在数据融合中的应用

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摘要

In several scientific applications, data are generated from two or more diverse sources (views) with the goal of predicting an outcome of interest. Often it is the case that the outcome is not associated with any single view. However, the synergy of all measurements from each view may yield a more predictive classifier. For example, consider a drug discovery application in which individual molecules are described partially by several assay screens based on diverse profiles and partially by their chemical structural fingerprints. A common classification problem is to determine whether the molecule is associated with a particular disease. In this paper, a co-training algorithm is developed to utilize data from diverse sources to predict the common class variable. Novel enhancements for variable importance, robustness to a mislabeled class variable, and a technique to handle unbalanced classes are applied to the motivating data set, highlighting that the approach attains strong performance and provides useful diagnostics for data analytic purposes. In addition, comparisons to a framework with data fusion using partial least squares (PLS) are also assessed on real data. An R package for performing the proposed approach is provided as Supporting information.
机译:在一些科学应用中,数据是从两个或多个不同的源(视图)生成的,目的是预测感兴趣的结果。通常情况下,结果与任何单个视图都没有关联。但是,从每个角度进行的所有测量的协同作用可能会产生更具预测性的分类器。例如,考虑一种药物发现应用程序,其中单个分子的一部分通过基于不同特征的几种测定屏幕进行描述,部分通过其化学结构指纹进行描述。常见的分类问题是确定分子是否与特定疾病相关。在本文中,开发了一种协同训练算法,以利用来自各种来源的数据来预测公共类别变量。针对变量重要性的新增强功能,对标签错误的类变量的鲁棒性以及处理不平衡类的技术已应用于激励数据集,从而突出说明了该方法具有强大的性能并为数据分析目的提供了有用的诊断方法。此外,还对真实数据评估了与使用偏最小二乘(PLS)进行数据融合的框架的比较。提供用于执行建议方法的R包作为支持信息。

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