基于阈值的序列模式支持向量机器学习算法

S. Imavathy, M. Chinnadurai
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引用次数: 1

摘要

模式识别是当前数据挖掘领域面临的主要挑战。研究人员专注于将数据挖掘应用于各种各样的应用,如市场购物篮分析,广告和医疗领域等,这里的转录数据库用于所有传统算法,这些算法基于对象的日常使用和/或患者的表现。本文提出的研究工作采用基于阈值的支持向量机学习(T-SVM)算法分类技术的顺序模式挖掘方法。模式挖掘是根据用户的兴趣,通过统计模型给出变量。本文提出的研究工作用于分析基因序列数据集。在此基础上,采用基于序列模式挖掘的T-SVM技术对数据集进行分类。特别是,基于阈值的模型用于通过顺序模式预测即将到来的感兴趣的状态。因为这样可以更深入地理解顺序输入数据,并通过提供阈值对结果进行分类。因此,该方法通过获得可实现的分类准确率、精密度、假阳性率、真阳性率的值,比传统方法效率高,并且减少了操作时间。该模型在MATLAB中进行了2018a的适配。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Threshold based Support Vector Machine Learning Algorithm for Sequential Patterns
Now a days the pattern recognition is the major challenge in the field of data mining. The researchers focus on using data mining for wide variety of applications like market basket analysis, advertisement, and medical field etc., Here the transcriptional database is used for all the conventional algorithms, which is based on daily usage of object and/or performance of patients. Here the proposed research work uses sequential pattern mining approach using classification technique of Threshold based Support Vector Machine learning (T-SVM) algorithm. The pattern mining is to give the variable according to the user’s interest by statistical model. Here this proposed research work is used to analysis the gene sequence datasets. Further, the T-SVM technique is used to classify the dataset based on sequential pattern mining approach. Especially, the threshold-based model is used for predicting the upcoming state of interest by sequential patterns. Because this makes deeper understanding about sequential input data and classify the result by providing threshold values. Therefore, the proposed method is efficient than the conventional method by getting the value of achievable classification accuracy, precision, False Positive rate, True Positive rate and it also reduces operating time. This proposed model is performed in MATLAB in the adaptation of 2018a.
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