Title of article :
Applying MDL to learn best model granularity Original Research Article
Author/Authors :
Qiong Gao، نويسنده , , Ming Li، نويسنده , , Paul Vitanyi ، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2000
Abstract :
The Minimum Description Length (MDL) principle is solidly based on a provably ideal method of inference using Kolmogorov complexity. We test how the theory behaves in practice on a general problem in model selection: that of learning the best model granularity. The performance of a model depends critically on the granularity, for example the choice of precision of the parameters. Too high precision generally involves modeling of accidental noise and too low precision may lead to confusion of models that should be distinguished. This precision is often determined ad hoc. In MDL the best model is the one that most compresses a two-part code of the data set: this embodies “Occamʹs Razor”. In two quite different experimental settings the theoretical value determined using MDL coincides with the best value found experimentally. In the first experiment the task is to recognize isolated handwritten characters in one subjectʹs handwriting, irrespective of size and orientation. Based on a new modification of elastic matching, using multiple prototypes per character, the optimal prediction rate is predicted for the learned parameter (length of sampling interval) considered most likely by MDL, which is shown to coincide with the best value found experimentally. In the second experiment the task is to model a robot arm with two degrees of freedom using a three layer feed-forward neural network where we need to determine the number of nodes in the hidden layer giving best modeling performance. The optimal model (the one that extrapolizes best on unseen examples) is predicted for the number of nodes in the hidden layer considered most likely by MDL, which again is found to coincide with the best value found experimentally.
Keywords :
Improved elastic matching , Lear , Minimum Description Length principle (MDL) , Kolmogorov complexity , Universal prior , Learning best model granularity , Occamיs razor , On-line handwritten character recognition , Bayesי rule
Journal title :
Artificial Intelligence
Journal title :
Artificial Intelligence