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Classification of Medical Dataset Along with Topic Modeling Using LDA

机译:医疗数据集的分类以及使用LDA主题建模

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Nowadays, medical applications need a lot of storage for storing and providing access to the medical information seekers. Moreover in medical applications, information grows tremendously and hence they must be stored using a suitable storage structure so that it is possible to retrieve them faster from the text corpus in which the medical information is stored. The existing methods for storage and retrieval do not focus on classified organization. However, classified data storage will facilitate fast retrieval. Therefore, a new Latent Dirichlet Allocation (LDA) based topic modeling approach is proposed in this paper which uses temporal rules for effective manipulation of stored data. Therefore, a temporal rule based classification algorithm is proposed in this work by combining Naive Bayes Classifier with LDA and temporal rules to store the data more efficiently and it helps to retrieve the documents faster. From the experiments conducted in this work by storing and retrieving medical data in a corpus, it is proved that the proposed model is more efficient with respect to classification accuracy leading to organized storage and fast retrieval.
机译:如今,医疗应用需要大量存储来存储和提供医疗信息寻求者的访问。此外,在医疗应用中,信息大致增长,因此必须使用合适的存储结构存储,因此可以从存储医疗信息的文本语料库中更快地检索它们。现有的存储方法和检索方法不会专注于分类组织。但是,分类数据存储将有助于快速检索。因此,本文提出了一种基于新的潜在Dirichlet分配(LDA)主题建模方法,其使用时间规则来有效操纵存储的数据。因此,在这项工作中提出了一种基于时间规则的分类算法,通过将Naive Bayes分类器与LDA和时间规则组合以更有效地存储数据,并且有助于更快地检索文件。通过存储和检索语料库中的医疗数据在这项工作中进行的实验,证明所提出的模型对于导致组织存储和快速检索的分类准确性更有效。

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