The Context Tree Weighting Method : Basic PropertiesFrans

نویسندگان

  • Frans M.J. Willems
  • Yuri M. Shtarkov
  • Tjalling J. Tjalkens
چکیده

We describe a sequential universal data compression procedure for binary tree sources that performs the \double mixture". Using a context tree, this method weights in an eecient recursive way the coding distributions corresponding to all bounded memory tree sources, and achieves a desirable coding distribution for tree sources with an unknown model and unknown parameters. Computational and storage complexity of the proposed procedure are both linear in the source sequence length. We derive a natural upper bound on the cumulative redundancy of our method for individual sequences. The three terms in this bound can be identiied as coding, parameter and model redundancy. The bound holds for all source sequence lengths, not only for asymptotically large lengths. The analysis that leads to this bound is based on standard techniques and turns out to be extremely simple. Our upper bound on the redundancy shows that the proposed context tree weighting procedure is optimal in the sense that it achieves the Rissanen (1984) lower bound.

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The Context-tree Weighting Method: Extensions - Information Theory, IEEE Transactions on

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تاریخ انتشار 1995