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A NOVEL CLASSIFICATION METHOD OF MICROARRAY WITH RELIABILITY AND CONFIDENCE

机译:一种具有可靠性和信心的微阵列的新型分类方法

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Most of state-of-the-art machine learning algorithms cannot provide a reliable measure of their classifications and predictions. This paper addresses the importance of reliability and confidence for classification, and presents a novel method based on a combination of the unexcelled ensemble method, random forest (RF), and transductive confidence machine (TCM) which we call TCM-RF. The new algorithm hedges the predictions of RF and gives a well-calibrated region prediction by using the proximity matrix generated with RF as a nonconformity measure of examples. The new method takes advantage of RF and possesses a more precise and robust nonconformity measure. It can deal with redundant and noisy data with mixed types of variables, and is less sensitive to parameter settings. Experiments on benchmark datasets show it is more effective and robust than other TCMs. Further study on a real-world lymphoma microarray dataset shows its superiority over SVM with the ability of controlling the risk of error.
机译:大多数最先进的机器学习算法无法提供可靠的分类和预测量度。本文涉及对分类的可靠性和信心的重要性,并提出了一种基于我们称之为TCM-RF的未开口集合方法,随机森林(RF)和转换置信机(TCM)的组合的新方法。新算法对RF的预测扰断了RF的预测,并通过使用RF产生的接近矩阵作为实施例的非圆形度量来给出良好的校准区域预测。新方法利用RF并拥有更精确且坚固的不合格度量。它可以处理具有混合类型的变量的冗余和嘈杂的数据,对参数设置不太敏感。基准数据集的实验表明它比其他TCMS更有效和强大。进一步研究现实世界淋巴瘤微阵列数据集显示其对SVM的优越性,具有控制误差风险的能力。

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