SVM for automatic rodent sleep-wake classification

Shantilal, K. D. Donohue, Bruce F. O'Hara
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引用次数: 6

Abstract

This work examines the application of a Support Vector Machine (SVM) classifier to automatically detect sleep and wake behaviors in mice based on pressure signals generated by contact with the cage floor. Previous works employed Neural Networks (NN) and Linear Discriminant Analysis (LDA) to classify sleep and wake behaviors. Although the LDA was successful in distinguishing between the sleep and wake behaviors, it has several limitations, which include the need to select a threshold and difficulty separating additional behaviors with subtle differences, such as sleep and rest. The SVM has advantages in that it does not require an independent threshold determination and offers greater degrees of freedom than the LDA for working with complex data sets. In addition, the SVM has direct methods for limiting overfitting for the training sets (unlike the NN method). This paper develops an SVM classifier using a variety of features extracted from the power spectrum, autocorrelation function, and generalized spectrum (autocorrelation of complex spectrum). A genetic algorithm (GA) optimizes the SVM parameters and determines a combination of 5 best features. Experimental results from over 14 hours of data scored by human observation indicate a 95% classification accuracy for SVM.
基于SVM的啮齿动物睡眠-觉醒自动分类
这项工作研究了支持向量机(SVM)分类器的应用,该分类器基于与笼子地板接触产生的压力信号自动检测小鼠的睡眠和醒来行为。以往的研究使用神经网络(NN)和线性判别分析(LDA)对睡眠和清醒行为进行分类。尽管LDA在区分睡眠和清醒行为方面取得了成功,但它也有一些局限性,包括需要选择一个阈值,以及难以区分有细微差异的其他行为,比如睡眠和休息。支持向量机的优点在于它不需要独立的阈值确定,并且在处理复杂数据集时提供比LDA更大的自由度。此外,支持向量机具有限制训练集过拟合的直接方法(与NN方法不同)。本文利用从功率谱、自相关函数和广义谱(复谱的自相关)中提取的多种特征开发了一种支持向量机分类器。遗传算法(GA)优化支持向量机参数,确定5个最佳特征的组合。对超过14小时的人工观测数据进行评分的实验结果表明,SVM的分类准确率达到95%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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