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Markov Networks for Detecting Overlapping Elements in Sequence Data

机译:马尔可夫网络用于检测序列数据中的重叠元素

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Many sequential prediction tasks involve locating instances of pat-terns in sequences. Generative probabilistic language models, such as hidden Markov models (HMMs), have been successfully applied to many of these tasks. A limitation of these models however, is that they cannot naturally handle cases in which pattern instances overlap in arbitrary ways. We present an alternative approach, based on conditional Markov networks, that can naturally represent arbitrarily overlapping elements. We show how to efficiently train and perform inference with these models. Experimental results from a genomics domain show that our models are more accurate at locating instances of overlapping patterns than are baseline models based on HMMs.
机译:许多连续预测任务涉及在序列中定位Pat-Terns的实例。 生成概率语言模型,如隐藏的马尔可夫模型(HMMS),已成功应用于许多这些任务。 然而,对这些模型的限制是它们不能自然地处理模式实例以任意方式重叠的情况。 我们提出了一种基于条件马尔可夫网络的替代方法,可以自然地代表任意重叠的元素。 我们展示了如何有效地培训和执行这些模型的推断。 基因组织结构域的实验结果表明,我们的模型在定位重叠模式的情况下更准确,而不是基于HMMS的基线模型。

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