Decoding Concerns: Multi-label Classification of Vaccine Sentiments in
Social Media
- URL: http://arxiv.org/abs/2312.10626v1
- Date: Sun, 17 Dec 2023 06:55:04 GMT
- Title: Decoding Concerns: Multi-label Classification of Vaccine Sentiments in
Social Media
- Authors: Somsubhra De and Shaurya Vats
- Abstract summary: The recent COVID-19 pandemic has highlighted how vaccines play a crucial role in keeping us safe.
The paper addresses the challenge of comprehensively understanding and categorizing these diverse concerns expressed in the context of vaccination.
Our focus is on developing a robust multi-label of assigning specific concern labels tweets based on the articulated apprehensions towards vaccines.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In the realm of public health, vaccination stands as the cornerstone for
mitigating disease risks and controlling their proliferation. The recent
COVID-19 pandemic has highlighted how vaccines play a crucial role in keeping
us safe. However the situation involves a mix of perspectives, with skepticism
towards vaccines prevailing for various reasons such as political dynamics,
apprehensions about side effects, and more. The paper addresses the challenge
of comprehensively understanding and categorizing these diverse concerns
expressed in the context of vaccination. Our focus is on developing a robust
multi-label classifier capable of assigning specific concern labels to tweets
based on the articulated apprehensions towards vaccines. To achieve this, we
delve into the application of a diverse set of advanced natural language
processing techniques and machine learning algorithms including transformer
models like BERT, state of the art GPT 3.5, Classifier Chains & traditional
methods like SVM, Random Forest, Naive Bayes. We see that the cutting-edge
large language model outperforms all other methods in this context.
Related papers
- SPEED++: A Multilingual Event Extraction Framework for Epidemic Prediction and Preparedness [73.73883111570458]
We introduce the first multilingual Event Extraction framework for extracting epidemic event information for a wide range of diseases and languages.
Annotating data in every language is infeasible; thus we develop zero-shot cross-lingual cross-disease models.
Our framework can provide epidemic warnings for COVID-19 in its earliest stages in Dec 2019 from Chinese Weibo posts without any training in Chinese.
arXiv Detail & Related papers (2024-10-24T03:03:54Z) - Public Discourse about COVID-19 Vaccinations: A Computational Analysis of the Relationship between Public Concerns and Policies [3.203095675418499]
With the rollout of vaccination campaigns, German-speaking regions exhibited much lower vaccination uptake than other European regions.
We show that skepticism regarding the severity of the COVID-19 virus and towards efficacy and safety of vaccines were among the prevalent topics in the discourse on Twitter.
During later phases of the pandemic, when implemented policies restricted the freedom of unvaccinated citizens, increased vaccination uptake could be observed.
arXiv Detail & Related papers (2024-05-07T15:31:13Z) - Multi-Label Classification of COVID-Tweets Using Large Language Models [0.0]
Vaccination has been a key step in countering the COVID-19 pandemic.
Many people are skeptical about the use of vaccines for various reasons.
The goal in this task is to build an effective multi-label classifier to label a social media post according to the specific concern(s) towards vaccines as expressed by the author of the post.
arXiv Detail & Related papers (2023-12-17T15:50:05Z) - Cultural-aware Machine Learning based Analysis of COVID-19 Vaccine
Hesitancy [16.52326311355925]
We design a novel culture-aware machine learning (ML) model, based on our new data collection, for predicting vaccination willingness.
These analyses reveal the key factors that most likely impact the vaccine adoption decisions.
arXiv Detail & Related papers (2023-04-14T06:47:43Z) - Evaluating COVID-19 vaccine allocation policies using Bayesian $m$-top
exploration [53.122045119395594]
We present a novel technique for evaluating vaccine allocation strategies using a multi-armed bandit framework.
$m$-top exploration allows the algorithm to learn $m$ policies for which it expects the highest utility.
We consider the Belgian COVID-19 epidemic using the individual-based model STRIDE, where we learn a set of vaccination policies.
arXiv Detail & Related papers (2023-01-30T12:22:30Z) - Dense Feature Memory Augmented Transformers for COVID-19 Vaccination
Search Classification [60.49594822215981]
This paper presents a classification model for detecting COVID-19 vaccination related search queries.
We propose a novel approach of considering dense features as memory tokens that the model can attend to.
We show that this new modeling approach enables a significant improvement to the Vaccine Search Insights (VSI) task.
arXiv Detail & Related papers (2022-12-16T13:57:41Z) - Doctors vs. Nurses: Understanding the Great Divide in Vaccine Hesitancy
among Healthcare Workers [64.1526243118151]
We find that doctors are overall more positive toward the COVID-19 vaccines.
Doctors are more concerned with the effectiveness of the vaccines over newer variants.
Nurses pay more attention to the potential side effects on children.
arXiv Detail & Related papers (2022-09-11T14:22:16Z) - Insta-VAX: A Multimodal Benchmark for Anti-Vaccine and Misinformation
Posts Detection on Social Media [32.252687203366605]
Anti-vaccine posts on social media have been shown to create confusion and reduce the publics confidence in vaccines.
Insta-VAX is a new multi-modal dataset consisting of a sample of 64,957 Instagram posts related to human vaccines.
arXiv Detail & Related papers (2021-12-15T20:34:57Z) - A k-mer Based Approach for SARS-CoV-2 Variant Identification [55.78588835407174]
We show that preserving the order of the amino acids helps the underlying classifiers to achieve better performance.
We also show the importance of the different amino acids which play a key role in identifying variants and how they coincide with those reported by the USA's Centers for Disease Control and Prevention (CDC)
arXiv Detail & Related papers (2021-08-07T15:08:15Z) - Classifying vaccine sentiment tweets by modelling domain-specific
representation and commonsense knowledge into context-aware attentive GRU [9.8215089151757]
Vaccine hesitancy and refusal can create clusters of low vaccine coverage and reduce the effectiveness of vaccination programs.
Social media provides an opportunity to estimate emerging risks to vaccine acceptance by including geographical location and detailing vaccine-related concerns.
Methods for classifying social media posts, such as vaccine-related tweets, use language models (LMs) trained on general domain text.
We present a novel end-to-end framework consisting of interconnected components that use domain-specific LM trained on vaccine-related tweets and models commonsense knowledge into a bidirectional gated recurrent network (CK-BiGRU) with context-aware attention.
arXiv Detail & Related papers (2021-06-17T15:16:08Z) - Falling into the Echo Chamber: the Italian Vaccination Debate on Twitter [65.7192861893042]
We examine the extent to which the vaccination debate on Twitter is conductive to potential outreach to the vaccination hesitant.
We discover that the vaccination skeptics, as well as the advocates, reside in their own distinct "echo chambers"
At the center of these echo chambers we find the ardent supporters, for which we build highly accurate network- and content-based classifiers.
arXiv Detail & Related papers (2020-03-26T13:55:50Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.