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Text Mining Approach for Prediction of Tumor Using Ontology Based Particle Swarm Optimization with Clustering Techniques

机译:基于本体的粒子群优化聚类技术的文本预测文本挖掘方法

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Text mining with Particle Swarm Optimization (PSO) Clustering Techniques to build a tumor prediction scheme. The proposed prediction scheme is based on Historical medical Reports associated with Tumor data. This research approach provides Effective Clustering by using Semantic Similarity that is calculated in Historical medical Reports Annotation Process. The Clustering Techniques group the reports into unsupervised cluster based on the features of the medical Reports. The Document Clustering is done through PSO. A PSO with ontology model of Clustering Knowledge Representation based on Historical medical report documents is presented and Compared to the traditional Support vector machine (SVM) approach. The SVM Methods to carry out the Integration of Medical ontology and the Text mining techniques is accomplished of mining the potential patterns and categorize clinical medical reports. Proposed ontology based frame work provides improved performance and better clustering compared to the traditional SVM Clustering.
机译:使用粒子群优化(PSO)聚类技术进行文本挖掘以构建肿瘤预测方案。提出的预测方案基于与肿瘤数据相关的历史医学报告。该研究方法通过使用历史医学报告注释过程中计算出的语义相似性来提供有效的聚类。聚类技术根据医疗报告的功能将报告分组为无监督的聚类。文档聚类通过PSO完成。提出了一种基于历史医学报告文档的具有聚类知识表示本体模型的PSO,并与传统的支持向量机(SVM)方法进行了比较。进行医学本体和文本挖掘技术集成的SVM方法是通过挖掘潜在模式和对临床医学报告进行分类来完成的。与传统的SVM群集相比,基于本体的拟议框架可以提供更好的性能和更好的群集。

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