首页> 外文会议>ICANN 2009;International conference on artificial neural networks >Noiseless Independent Factor Analysis with Mixing Constraints in a Semi-supervised Framework. Application to Railway Device Fault Diagnosis
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Noiseless Independent Factor Analysis with Mixing Constraints in a Semi-supervised Framework. Application to Railway Device Fault Diagnosis

机译:半监督框架中具有混合约束的无噪声独立因素分析。在铁路设备故障诊断中的应用

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In Independent Factor Analysis (IFA), latent components (or sources) are recovered from only their linear observed mixtures. Both the mixing process and the source densities (that are assumed to be generated according to mixtures of Gaussians) are learned from observed data. This paper investigates the possibility of estimating the IFA model in its noiseless setting when two kinds of prior information are incorporated: constraints on the mixing process and partial knowledge on the cluster membership of some examples. Semi-supervised or partially supervised learning frameworks can thus be handled. These two proposals have been initially motivated by a real-world application that concerns fault diagnosis of a railway device. Results from this application are provided to demonstrate the ability of our approach to enhance estimation accuracy and remove indeterminacy commonly encountered in unsupervised IFA such as source permutations.
机译:在独立因子分析(IFA)中,仅从其线性观察到的混合物中回收潜在组分(或来源)。混合过程和源密度(假定是根据高斯混合产生的)都是从观测数据中获悉的。当结合两种先验信息时,本文研究了在无噪声环境中估计IFA模型的可能性:某些示例对混合过程的约束和对集群成员的部分了解。因此,可以处理半监督或部分监督的学习框架。这两个建议最初是由涉及铁路设备故障诊断的实际应用激发的。提供了此应用程序的结果,以证明我们的方法具有增强估计准确度和消除不确定性IFA中常见遇到的不确定性(如源排列)的能力。

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