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请说出如下内容引用的参考文献:SVM支持向量机是一种广泛应用于模式识别和机器学习的算法可用于许多不同的领域。以下是一些SVM的常见应用领域:1 图像分类:SVM可用于图像分类任务如人脸识别、目标检测和图像分割。2 文本分类:SVM可用于文本分类任务如垃圾邮件过滤、情感分析和文本归类。3 生物信息学:SVM可用于基因表达数据分析、蛋白质分类和DNA序列识别。4 医学诊断:SVM可用于医学图像分析和诊

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