Abstract

BackgroundNamed entity recognition (NER) is a task of detecting named entities in documents and categorizing them to predefined classes, such as person, location, and organization. This paper focuses on tweets posted on Twitter. Since tweets are noisy, irregular, brief, and include acronyms and spelling errors, NER in those tweets is a challenging task. Many approaches have been proposed to deal with this problem in tweets written in English, Germany, Chinese, etc., but none for Vietnamese tweets.MethodsWe propose a method that normalizes a tweet before taking as an input of a learning model for NER in Vietnamese tweets. The normalization step detects spelling errors in a tweet and corrects them using an improved Dice's coefficient or n-grams. A Support Vector Machine learning algorithm is employed to learn a classifier using six different types of features.Results and ConclusionWe train our method on a training set consisting of more than 40,000 named entities and evaluate it on a testing set consisting of 3,186 named entities. The experimental results showed that our system achieves state-of-the-art performance with F1 score of 82.13%.

Highlights

  • Named entity recognition (NER) is a task of detecting named entities in documents and categorizing them to predefined classes, such as person, location, and organization

  • We present the first attempt to provide NER capability in Vietnamese tweets, and this contribution has three components, i.e., (1) a method for the normalization of Vietnamese tweets based on dictionaries and Vietnamese vocabulary structures in combination with a language model; (2) a learning model for NER in Vietnamese tweets with six different types of features; and (3) a training set of more than 40,000 named entities and a testing set of 3186 named entities to evaluate the NER system of Vietnamese tweets

  • In this paper, we present the first attempt to NER in Vietnamese tweets on Twitter

Read more

Summary

Background

Social networks have become very popular. It is easy for users to share their data using online social networks. The tweets contain many spelling errors, and this creates a significant challenge for named entity recognition (NER). Several recognition methods for named entities have been proposed for tweets in English and other languages [2, 17, 27, 31, 44]. In this paper, we propose a method for NER in Vietnamese tweets to fill the gap. The system consists of three steps, i.e., (1) normalization of tweets by detecting and correcting spelling errors; (2) capitalization classifier; and (3) recognition of named entities.

Related work
Evaluation
Method
Conclusions
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call