LFD Book Forum Pocket Algorithm
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#1
10-18-2016, 08:15 PM
 wolszhang Junior Member Join Date: Sep 2016 Posts: 5
Pocket Algorithm

Hi, all, i am currently coding pocket algorithm. However, since we are using it on a non-separable data, the PLA is never going to converge and thus run into infinite loops. Do i just set a break point or it there any other stoping conditions?
#2
10-18-2016, 09:00 PM
 wolszhang Junior Member Join Date: Sep 2016 Posts: 5
Re: Pocket Algorithm

AND BTW, hw1 specifies that we could only use the training data, but the first problem asks us to plot the train data and test set data.
#3
10-19-2016, 08:23 AM
 gregoryw Junior Member Join Date: Oct 2016 Posts: 1
Re: Pocket Algorithm

As I understand it, the idea of the pocket algorithm is that you save the best weights, and stop at an arbitrary point, say after 10,000 iterations. Then return that best weight. I think part1 of the homework is saying that you are only supposed to train off the training set, but then plot both sets with the separator.

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