Pattern Classification In Symbolic Streams via Semantic Annihilation of Information

Ishanu Chattopadhyay, Yicheng Wen, Asok Ray

Research output: Working paperPreprint

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Abstract

We propose a technique for pattern classification in symbolic streams via selective erasure of observed symbols, in cases where the patterns of interest are represented as Probabilistic Finite State Automata (PFSA). We define an additive abelian group for a slightly restricted subset of probabilistic finite state automata (PFSA), and the group sum is used to formulate pattern-specific semantic annihilators. The annihilators attempt to identify pre-specified patterns via removal of essentially all inter-symbol correlations from observed sequences, thereby turning them into symbolic white noise. Thus a perfect annihilation corresponds to a perfect pattern match. This approach of classification via information annihilation is shown to be strictly advantageous, with theoretical guarantees, for a large class of PFSA models. The results are supported by simulation experiments.
Original languageUndefined/Unknown
StatePublished - Aug 21 2010

Bibliographical note

15 pages, 7 figures (Under Review Elsewhere: Journal Reference Will Be Provided When Available )

Keywords

  • cs.SC
  • cs.CL
  • cs.IT
  • math.IT

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