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Conditional Random Fields: Probabilistic Models for Segmenting and Labeling Sequence Data

2001·12.995 Zitationen·Scholarly Commons (University of Pennsylvania)Open Access
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12.995

Zitationen

3

Autoren

2001

Jahr

Abstract

We present, a framework for building probabilistic models to segment and label sequence data. Conditional random fields offer several advantages over hidden Markov models and stochastic grammars for such tasks, including the ability to relax strong independence assumptions made in those models. Conditional random fields also avoid a fundamental limitation of maximum entropy Markov models (MEMMs) and other discriminative Markov models based on directed graphical models, which can be biased towards states with few successor states. We present iterative parameter estimation algorithms for conditional random fields and compare the performance of the resulting models to HMMs and MEMMs on synthetic and natural-language data. 1.

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Natural Language Processing TechniquesAlgorithms and Data CompressionSpeech Recognition and Synthesis
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