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I am trying to write semi-supervised outlier detection algorithm in data stream. I have a training data set which has normal and abnormal behavior of a system. My task is to detect the outliers in the stream of data produced by the system. For the purpose of simulating the data stream, I divided the data into batches.

 B1(990,-), B2(106,-), B3(101,5), B4(106,-), B5(101,5) 
 % where Batch_number(#normal, #abnormal)

The B1 represent the training data (which includes normal data records only), while B2,B3,B4,B5 are the testing batches. In B3 and B5 there are abnormal data records. The normal data in the B3-B5 is taken from B1. My question is , for the semi-supervised learning, does that make a sense? and is it correct to take normal data from the B1?

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Welcome to SO, what have you tried? –  natan Jan 22 '13 at 10:48
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To avoid overfitting you must also test with normal data that was not part of your training set. Make sure that you evaluation method corrects for the imbalancedness. Otherwise, you will get 99% correct with a "there are no anomalies" result. Test this, too: a classifier that just always says "normal". If you can't clearly outperform this, you lost. –  Anony-Mousse Jan 23 '13 at 7:43
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