使用概率语法的数据挖掘

Aljoharah Algwaiz, S. Rajasekaran, R. Ammar
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引用次数: 2

摘要

随着数据收集和存储技术的飞速发展,高效、准确的数据挖掘变得至关重要。研究人员已经为数据挖掘提出了各种有价值的机器学习算法。然而,使用正式方法的并不多。本文提出了一种基于概率上下文无关语法(pcfg)的数据挖掘方法。在这项工作中,我们使用pcfg从大型异构数据集中进行挖掘。我们感兴趣的数据挖掘问题是分类。首先,从已知分类的数据集推断概率语法。然后,学习到的模型可以用于对任何未知数据进行分类。具体来说,对于每一个未知的数据点,该模型可以用来计算该点属于各种可能的类的概率。一种简单的解析策略是将该点与最大概率对应的类关联起来。为了证明我们的方法的适用性,我们考虑了识别拼接连接的问题。使用PCFG,输入DNA序列被分类为供体、受体或两者都不是。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data mining using Probabilistic Grammars
Efficient and accurate data mining has become vital as technology advancements in data collection and storage soar. Researchers have proposed various valuable machine learning algorithms for data mining. However, not many have utilized formal methods. This paper proposes a data mining approach using Probabilistic Context Free Grammars (PCFGs). In this work we have employed PCFGs to mine from large heterogeneous datasets. The data mining problem of our interest is classification. To start with a probabilistic grammar is inferred from datasets for which classifications are known. The learnt model can then be used to classify any unknown data. Specifically, for each unknown data point, the model can be used to calculate probabilities that this point belongs to the various possible classes. A simple resolution strategy could be to associate the point with the class that corresponds to the maximum probability. To demonstrate the applicability of our approach we consider the problem of identifying splice junctions. Using a PCFG, an input DNA sequence is classified as donor, acceptor, or neither.
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