Hi Andy,
Yes this is the adaboost from '0.14-git' version, which I downloaded a
couple of days ago.


On Wed, Jul 24, 2013 at 1:55 AM, Andreas Mueller
<[email protected]>wrote:

>  Hi Arslan.
> Have you tried the AdaBoost implementation in the current development
> version?
> Cheers,
> Andy
>
>
> On 07/24/2013 04:40 AM, Arslan, Ali wrote:
>
> Hi,
> I've been running adaboost with DecisionTreeClassifier in a for a
> multiclass detection problem (comprises of multiple one-vs-all problems).
> The prediction method I'm using is like this:
>
>      for ii,thisLab in enumerate(allLearners):
>
>         res = np.zeros([dada.shape[0]], dtype='float16')
>
>         for jj, thisLearner in enumerate(thisLab):
>
>             my_weights = thisLearner.estimator_weights_
>
>             #tic = time.time()
>
>             for hh, thisEstimator in enumerate(thisLearner):
>
>                 res = res+thisEstimator.predict(DATA)*my_weights[hh]
> I don't know how straightforward this looks but basically I'm iterating
> over labels (or classes), then different estimators in the adaboost to
> collect their prediction into one result array (after scaling the results
> with each individual tree's weight).
>
>  The innermost part of the loop is taking a bit too long (~1 sec)
> considering it's run about 2600 time for my data.
>
>  I was looking for faster/alternative ways of making a prediction and
> I've encountered this toolbox for matlab:
>
> http://graphics.cs.msu.ru/en/science/research/machinelearning/adaboosttoolbox
>
>  This toolbox's prediction method seems pretty succinct and it runs very
> fast (0.0015 sec). The function is something like this:
>
>
>  function y = calc_output(tree_node, XData)
> y = XData(tree_node.dim, :) * 0 + 1;
>
>  for i = 1 : length(tree_node.parent)
>   y = y .* calc_output(tree_node.parent, XData); % recursively split based
> on its parents' constrain
> end
>
>  if( length(tree_node.right_constrain) > 0)
>   y = y .* ((XData(tree_node.dim, :) < tree_node.right_constrain));
> end
> if( length(tree_node.left_constrain) > 0)
>   y = y .* ((XData(tree_node.dim, :) > tree_node.left_constrain));
> end
>
>
>
>  I tried to find the analogues of these structures (ie. tree_node.dim ,
> tree_node.parent, tree_node. right_constrain) in the "tree object" in
> python but I failed to see them.
>
>  I was wondering if it's possible to speed up the prediction like this
> matlab example?
> Thanks!
>
>  --
> Ali B Arslan, M.Sc.
> Cognitive, Linguistic and Psychological Sciences
> Brown University
>
>
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-- 
Ali B Arslan, M.Sc.
Cognitive, Linguistic and Psychological Sciences
Brown University
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