Stylistic Variation in Social Media Part-of-Speech Tagging

04/19/2018
by   Murali Raghu Babu Balusu, et al.
0

Social media features substantial stylistic variation, raising new challenges for syntactic analysis of online writing. However, this variation is often aligned with author attributes such as age, gender, and geography, as well as more readily-available social network metadata. In this paper, we report new evidence on the link between language and social networks in the task of part-of-speech tagging. We find that tagger error rates are correlated with network structure, with high accuracy in some parts of the network, and lower accuracy elsewhere. As a result, tagger accuracy depends on training from a balanced sample of the network, rather than training on texts from a narrow subcommunity. We also describe our attempts to add robustness to stylistic variation, by building a mixture-of-experts model in which each expert is associated with a region of the social network. While prior work found that similar approaches yield performance improvements in sentiment analysis and entity linking, we were unable to obtain performance improvements in part-of-speech tagging, despite strong evidence for the link between part-of-speech error rates and social network structure.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
11/19/2015

Overcoming Language Variation in Sentiment Analysis with Social Attention

Variation in language is ubiquitous, particularly in newer forms of writ...
research
01/11/2016

The Effects of Age, Gender and Region on Non-standard Linguistic Variation in Online Social Networks

We present a corpus-based analysis of the effects of age, gender and reg...
research
06/26/2016

Cyberbullying Identification Using Participant-Vocabulary Consistency

With the rise of social media, people can now form relationships and com...
research
01/06/2016

Part-of-Speech Tagging for Code-mixed Indian Social Media Text at ICON 2015

This paper discusses the experiments carried out by us at Jadavpur Unive...
research
10/18/2015

Learning multi-faceted representations of individuals from heterogeneous evidence using neural networks

Inferring latent attributes of people online is an important social comp...
research
07/16/2019

You Write Like You Eat: Stylistic variation as a predictor of social stratification

Inspired by Labov's seminal work on stylistic variation as a function of...

Please sign up or login with your details

Forgot password? Click here to reset