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Selective Sampling with a Hierarchical Latent Variable Model

机译:具有分层潜变量模型的选择性采样

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We present a new method with combines a hierarchical stochastic latent variable mode and a selective sampling strategy, for learning from co-occurrence events, i.e. a fundamental issue in intelligent data analysis. The hierarchical stochastic latent variable model we employ enables us to use existing background knowledge of observable co-occurrence events as a latent variable. The selective sampling strategy we use iterates selecting plausible non-noise examples from a given data set and running the learning of a component stochastic model alternately and then improves the predictive performance of a component model. Combining the model and the strategy is expected to be effective for enhancing the performance of learning from real-world co-occurrence events. We have empirically tested the performance of our method using a real data set of protein-protein interactions, a typical data set of co-occurrence events. The experimental results have shown that the presented methodology significantly outperformed an existing approach and other machine learning methods compared, and that the presented method is highly effective for unsupervised learning form co-occurrence events.
机译:我们提出用联合收割机的新方法分层随机潜变量模式和选择性抽样策略,从共同出现的事件,即一个是智能数据分析的根本问题学习。分层随机潜变量模型,我们采用使我们能够观察到的使用共发生事件的现有背景知识的潜在变量。我们使用迭代从给定的数据组中选择合理的非噪声的实施例和运行交替的成分的随机模型的学习,然后选择性采样策略提高一个组件模型的预测性能。结合模型和策略预计将有效地增强来自真实世界的共生事件中学习的表现。我们实证检验使用蛋白质 - 蛋白质相互作用,共同出现的事件一个典型的数据集的真实数据集我们的方法的性能。实验结果表明,所提出的方法显著优于现有方法和其他机器学习方法相比,认为所提出的方法是一种用于无监督学习形式共现事件高度有效的。

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