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Hidden Markov Based Mathematical Model dedicated to Extract Ingredients from Recipe Text
Published 28 Sep 2021 in cs.CL | (2110.15707v1)
Abstract: NLP is a branch of artificial intelligence that gives machines the ability to decode human languages. Partof-speech tagging (POS tagging) is a pre-processing task that requires an annotated corpus. Rule-based and stochastic methods showed remarkable results for POS tag prediction. On this work, I performed a mathematical model based on Hidden Markov structures and I obtained a high-level accuracy of ingredients extracted from text recipe with performances greater than what traditional methods could make without unknown words consideration.
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