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空间数据的罕见类别检测

Rare Category Detection for Spatial Data
课程网址: http://videolectures.net/cmulls08_he_rcd/  
主讲教师: Jingrui He
开课单位: 卡内基梅隆大学
开课时间: 2009-01-15
课程语种: 英语
中文简介:
对于一个未标记的不平衡数据集,稀有类别检测的目标是从具有少量标签请求的少数类中发现示例。稀有类别检测是机器学习中的一个公开挑战,它有许多应用,如金融欺诈检测、网络入侵检测、天文学、垃圾邮件图像检测等。在本文中,我将介绍两种利用空间数据进行稀有类别检测的方法。第一个基本上执行局部密度差分采样,它需要有关数据集的先验信息作为输入。第二种是基于专门设计的指数族,它是无先验的。实验结果表明,这些方法对不同的实际数据集是有效的。
课程简介: Given an unlabeled unbalanced data set, the goal of rare category detection is to discover examples from the minority classes with a few label requests. Rare category detection is an open challenge in machine learning, and it has a lot of applications, such as financial fraud detection, network intrusion detection, astronomy, spam image detection, etc. In this talk, I will introduce two methods for rare category detection with spatial data. The first one essentially performs local density differential sampling, and it requires the prior information about the data set as input. The second one is based on specially designed exponential families, and it is prior-free. Experimental results demonstrate the effectiveness of these methods on different real data sets.
关 键 词: 机器学习; 类别检测; 应用程序
课程来源: 视频讲座网
最后编审: 2020-06-22:chenxin
阅读次数: 44