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A One Class Classifier for Signal Identification: A Biological Case Study

机译:用于信号识别的一个类分类器:生物学案例研究

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The paper describes an application of a one-class KNN to identify different signal patterns embedded in a noise structured background. The problem become harder whenever only one pattern is well represented in the signal, in such cases one class classifier techniques are more indicated. The classification phase is applied after a preprocessing phase based on a Multi Layer Model (MLM) that provides a preliminary signal segmentation in an interval feature space. The one-class KNN has been tested on synthetic data that simulate microarray data for the identification of nucleosomes and linker regions across DNA. Results have shown a good recognition rate on synthetic data for nucleosome and linker regions.
机译:本文介绍了单级KNN的应用,以识别嵌入在噪声结构背景中的不同信号模式。只要在信号中仅表示一个图案,问题变得更加困难,在这种情况下,更有指示一个类分类技术。在基于多层模型(MLM)的预处理阶段之后施加分类阶段,其在间隔特征空间中提供初步信号分割。一流的KNN已经在综合数据上测试了模拟微阵列数据,用于识别跨DNA的核体和接头区域。结果表明了核小体和接头区域的合成数据良好的识别率。

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