Approaches for Word Sense Disambiguation : Current State of The Art
نویسنده
چکیده
Human languages includes many ambiguity words, each word will have different meaning or sense. Identifying correct sense of the word is purely depended on the context in which the word appears. There are many approaches to find the correct sense of the word. Word sense disambiguation is the process of differentiating among senses of words. WSD plays a vital role to reduce the ambiguity about the words in the telugu language and the dictionary is Word Net. There are many approaches for word sense disambiguity for telugu nouns. In this paper we discuss about the current state of the art of WSD and we concluded the problem of word sense disambiguation by a combination of different machine learning algorithms
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