【发布时间】:2016-07-23 17:32:21
【问题描述】:
我已经在两个类上训练了 SVM。一是真实用户样本。第二个是与真实用户具有相同样本量的许多负样本。我已经在未用于培训的课堂上测试了这个系统。结果很有趣,我无法解释;我不知道这是预期的,SVM 问题还是其他问题。
(0:0.9104172110162648)(1:0.08958278898373527)(Actual:1.0 Prediction:0.0)
(0:0.9104172110162648)(1:0.08958278898373527)(Actual:1.0 Prediction:0.0)
(0:0.9104172110162648)(1:0.08958278898373527)(Actual:1.0 Prediction:0.0)
(0:0.9104172110162648)(1:0.08958278898373527)(Actual:1.0 Prediction:0.0)
(0:0.9104172110162648)(1:0.08958278898373527)(Actual:1.0 Prediction:0.0)
(0:0.9104172110162648)(1:0.08958278898373527)(Actual:1.0 Prediction:0.0)
(0:0.9104172110162648)(1:0.08958278898373527)(Actual:1.0 Prediction:0.0)
(0:0.9104172110162648)(1:0.08958278898373527)(Actual:1.0 Prediction:0.0)
(0:0.9104172110162648)(1:0.08958278898373527)(Actual:1.0 Prediction:0.0)
(0:0.9104172110162648)(1:0.08958278898373527)(Actual:1.0 Prediction:0.0)
(0:0.9104172110162648)(1:0.08958278898373527)(Actual:1.0 Prediction:0.0)
(0:0.9104172110162648)(1:0.08958278898373527)(Actual:1.0 Prediction:0.0)
(0:0.9104172110162648)(1:0.08958278898373527)(Actual:1.0 Prediction:0.0)
(0:0.9104172110162648)(1:0.08958278898373527)(Actual:1.0 Prediction:0.0)
(0:0.9104172110162648)(1:0.08958278898373527)(Actual:1.0 Prediction:0.0)
(0:0.9104172110162648)(1:0.08958278898373527)(Actual:1.0 Prediction:0.0)
(0:0.9104172110162648)(1:0.08958278898373527)(Actual:1.0 Prediction:0.0)
上面是我从未经训练和未见过的类的不同样本中获得的那种输出示例。每个样本都完全相同。我希望它们更接近 1.0 级,并且我还希望至少概率会发生变化!
【问题讨论】:
标签: machine-learning classification svm libsvm prediction