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I have to define the VC dimension for the union of two hypothesis sets (H1 U H2) but I am having problems to visualize the meaning of the union of the hypothesis sets. For example, if H1 is a two dimensional perceptron and H2 is another two dimensional perceptron. What does it mean to have a hypothesis set H that is the union of H1 and H2 in this case. Can I use both H1 and H2 at same time. That is, am I able to use two lines in my classification algorithm.... If H1 contains {h11,h12,h13...h1n} hypothesis and H2 contains {h21,h22,h23...h2n} hypothesis, the union of H1 and H2 contains {h11,h12,h13...h1n,h21,h22,h23...h2n} hypothesis. In the 2d preceptron example, the union H1 U H2 contains more hypothesis but each hypothesis is of the same kind (a line in the plane). It does not seem to be a diff between H1, H2 and H1UH2...Need help to understand the meaning of union of hypothesis sets...Thanks

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IMHO this is better suited for stats.stackexchange.com –  Thomas Jungblut Aug 6 '12 at 16:19
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It seems that if we have a 2d perceptron defined by H1 and we have another 2d perceptron defined by H2. The two hypothesis set should be identical and the union set (H1 U H2) should not add any new information at all! –  user963386 Aug 6 '12 at 21:00

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