Transgender Community Sentiment Analysis from Social Media Data: A Natural Language Processing Approach

10/25/2020
by   Mengzhe Li, et al.
0

Transgender community is experiencing a huge disparity in mental health conditions compared with the general population. Interpreting the social medial data posted by transgender people may help us understand the sentiments of these sexual minority groups better and apply early interventions. In this study, we manually categorize 300 social media comments posted by transgender people to the sentiment of negative, positive, and neutral. 5 machine learning algorithms and 2 deep neural networks are adopted to build sentiment analysis classifiers based on the annotated data. Results show that our annotations are reliable with a high Cohen's Kappa score over 0.8 across all three classes. LSTM model yields an optimal performance of accuracy over 0.85 and AUC of 0.876. Our next step will focus on using advanced natural language processing algorithms on a larger annotated dataset.

READ FULL TEXT
research
06/25/2022

Sentiment Analysis with R: Natural Language Processing for Semi-Automated Assessments of Qualitative Data

Sentiment analysis is a sub-discipline in the field of natural language ...
research
02/02/2019

Natural Language Processing, Sentiment Analysis and Clinical Analytics

Recent advances in Big Data has prompted health care practitioners to ut...
research
04/20/2022

Res-CNN-BiLSTM Network for overcoming Mental Health Disturbances caused due to Cyberbullying through Social Media

Mental Health Disturbance has many reasons and cyberbullying is one of t...
research
12/24/2017

Building a Sentiment Corpus of Tweets in Brazilian Portuguese

The large amount of data available in social media, forums and websites ...
research
12/02/2021

Investigating the Impact of 9/11 on The Simpsons through Natural Language Processing

The impact of real world events on fictional media is particularly appar...
research
09/18/2019

Sentiment-Aware Recommendation System for Healthcare using Social Media

Over the last decade, health communities (known as forums) have evolved ...

Please sign up or login with your details

Forgot password? Click here to reset