首页> 外文会议>International Conference on Artificial Intelligence(IC-AI'04) vol.2 amp; International Conference on Machine Learning; Models, Technologies amp; Applications(MLMTA'04); 20040621-24; Las Vegas,NV(US) >An Objective Function Based on Bayesian Likelihoods of Necessity and Sufficiency for Concept Learning in the Absence of Labeled Counter-Examples
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An Objective Function Based on Bayesian Likelihoods of Necessity and Sufficiency for Concept Learning in the Absence of Labeled Counter-Examples

机译:在没有标记反例的情况下,基于贝叶斯必要性和充分性进行概念学习的目标函数

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Supervised machine learning techniques generally require that the training set on which learning is based contain sufficient examples representative of the target concept, as well as known counter-examples of the concept; however, in many application domains it is not possible to supply a set of labeled counter-examples. This paper proposes an objective function based on Bayesian likelihoods of necessity and sufficiency. This function can be used to guide search towards the discovery of a concept description given only a set of labeled positive examples of the target concept, and as a corpus of unlabeled examples. Results of experiments performed on several datasetsfrom the UCI repository show that the technique achieves comparable accuracy to conventional supervised learning techniques, despite the fact that the latter require a set of labeled counter-examples to be supplied. The technique can be applied in many domains in which the provision of labeled counter-examples is problematic.
机译:有监督的机器学习技术通常要求以学习为基础的训练集包含足够的代表目标概念的示例以及该概念的已知反示例。但是,在许多应用领域中,无法提供一组带标签的反例。本文提出了基于必要性和充分性的贝叶斯可能性的目标函数。该功能可用于仅在目标概念的一组带标签的肯定示例的情况下以及作为未带标签的示例的语料库,引导搜索向概念描述的发现迈进。对来自UCI储存库的几个数据集进行的实验结果表明,尽管该技术需要提供一组标记的反例,但该技术仍可达到与传统监督学习技术相当的准确性。该技术可以应用在很多领域,在这些领域中提供标记的反例是有问题的。

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