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natural language 9.88326E-4
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language sentences 9.840880000000002E-4
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markov models 9.516489999999999E-4
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language processing 9.44195E-4
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single string 9.37547E-4
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true distribution 9.31388E-4
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language ofg 9.050270000000001E-4
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rule probabilities 8.982230000000001E-4
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correct model 8.8836E-4
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ative form 8.79578E-4
closed form 8.6965E-4
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possible types 8.35336E-4
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maximum likelihood 8.22214E-4
different rules 8.1996E-4
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initial state 7.87837E-4
average number 7.84168E-4
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ing assignment 7.78114E-4
optimal solution 7.77558E-4
likelihood estimation 7.75814E-4
rule sφj 7.6847E-4
main hardness 7.62836E-4
many derivations 7.62708E-4
