Fast Algorithm Selection Using Learning Curves
    
  
 
  
    
    
        Fast Algorithm Selection Using Learning Curves
    
  
Date
    
    
        2015
    
  
Authors
  van Rijn,JN
  Salisu Mamman Abdulrhaman
  Pavel Brazdil
  Vanschoren,J
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Abstract
    
    
        One of the challenges in Machine Learning to find a classifier and parameter settings that work well on a given dataset. Evaluating all possible combinations typically takes too much time, hence many solutions have been proposed that attempt to predict which classifiers are most promising to try. As the first recommended classifier is not always the correct choice, multiple recommendations should be made, making this a ranking problem rather than a classification problem. Even though this is a well studied problem, there is currently no good way of evaluating such rankings. We advocate the use of Loss Time Curves, as used in the optimization literature. These visualize the amount of budget (time) needed to converge to a acceptable solution. We also investigate a method that utilizes the measured performances of classifiers on small samples of data to make such recommendation, and adapt it so that it works well in Loss Time space. Experimental results show that this method converges extremely fast to an acceptable solution.