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Sparse Fisher discriminant analysis with Jeffrey's hyperprior

机译:Jeffrey超优先级的稀疏Fisher判别分析

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The penalty function requires a choice of regularization parameter which controls the degree of parsimony in sparse kernel classifier. This involves an extra parameter apart from kernel parameter in the optimization which must be found via, e.g. cross-validation. This paper introduces a new parsimonious binary kernel Fisher discriminant analysis which does not require a regularization parameter. This can be done by using a Jeffrey's noninformative hyperprior. A Jeffrey's noninformative hyperprior is parameter-free and is adopted through a hierarchical-Bayes interpretation of the Laplacian prior distribution. This leads to a non-requirement of the regularization parameter. The proposed algorithm is compared with other machine learning methods on substantial benchmarks. Moreover, it is also compared with the leading machine learning in virtual screening application. It is found to be less accurate but it is still comparable in a number of cases.
机译:惩罚函数需要选择正则化参数,以控制稀疏内核分类器中的简约程度。这涉及除优化中的内核参数以外的额外参数,必须通过例如交叉验证。本文介绍了一种不需要正则化参数的新的简约二进制内核Fisher判别分析。这可以通过使用Jeffrey的非信息超优先级来完成。 Jeffrey的非信息性超优先级是无参数的,并且通过对Laplacian先验分布的贝叶斯分层解释来采用。这导致不需要正则化参数。将该算法与其他机器学习方法进行了实质性的比较。此外,它还与虚拟筛选应用中领先的机器学习进行了比较。人们发现它的准确性较差,但在许多情况下仍具有可比性。

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