Development action with informed and engaged societies

After nearly 28 years, The Communication Initiative (The CI) Global is entering a new chapter. 

Following a period of transition, the global website has been transferred to the University of the Witwatersrand (Wits) in South Africa, where it will be administered by the Social and Behaviour Change Communication Division. Wits' commitment to social change and justice makes it a trusted steward for The CI's legacy and future. 

On the transfer, co-founder Victoria Martin expressed her pleasure to see this work continue under Wits' leadership, knowing that co-founder Warren Feek (1953–2024) would have felt deep pride in The CI Global's Africa-led direction. 

As Wits, we honour the team and partners who sustained The CI for decades and look forward building from that strong base. This includes co-founders Warren Feek (1953-2024) and Victoria Martin as well as La Iniciativa de Comunicación (CILA), which continues independently at lainiciativadecomunicacion.com with links to The CI Global site. We are also eager to forge new partnerships and entertain new ideas as we consider how best to contribute to social and behaviour change in our rapidly evolving environment.

If you are joining the International Social and Behaviour Change Communication (SBCC) Summit in Panama, please join Wits and CILA on Monday, 22 June, to share your thoughts and suggestion for the relaunch of the Communication Initiative. We will be in Pacifica 5 from 12-1:25 for the Refuel, Reflect, and Renew Lunch Series: The Communication Initiative: celebrating a driving force for Communication for Social Change and the way forward. We will reflect on the legacy of Warren Feek and family in creating the Communication Initiative, consider the contributions of CI over the years and then turn our attention towards the future in this dynamic session. 

If you are unable to join us in Panama, we still want to hear from you. Please contribute your thoughts by following this link: https://redcap.link/CommunicationInitiative2026 or reaching out to ci_surveys@commint.com

You can also follow the QR Code:

 https://redcap.link/CommunicationInitiative2026

Time to read
2 minutes
Read so far

Leveraging Transfer Learning to Analyze Opinions, Attitudes, and Behavioral Intentions Toward COVID-19 Vaccines: Social Media Content and Temporal Analysis

0 comments
Affiliation

Vanderbilt University Medical Center (S. Liu); Sichuan University (Li, J. Liu)

Date
Summary

"...it is urgent to efficiently collect information on public perceptions to tailor education materials for public and clinical guidance, which will enable primary care physicians to promote COVID-19 vaccines."

Over the past decades, researchers have used social media analytics tools to monitor public sentiment and communication patterns in health crises, such as Ebola and Zika outbreaks. In addition, previous studies have explored knowledge in the context of vaccines using machine learning and deep learning methods. However, several questions related to COVID-19 vaccines remain unexplored: What is the prevalence of user opinions on a social media platform? How many tweets express positive/negative attitudes and behavioural intentions to take vaccines? Which topics are mostly associated with these contents? To answer these questions, this study uses machine learning models and transfer learning models to examine Twitter content expressing user opinions, attitudes, and behavioural intentions toward COVID-19 vaccines. The goal is to support the rollout of COVID-19 vaccines by extracting social media data that can help tailor promotion programmes to fit different populations.

The researchers collected 2,678,372 tweets related to COVID-19 vaccines from 841,978 unique users posted from November 1 2020 to January 31 2021 and annotated 5,000 tweets as the gold standard. They developed machine learning and transfer learning models to classify tweets for three tasks: (1) opinions (yes, no); (2) attitudes (positive, negative, neutral); and (3) behavioural intentions (positive, negative, unknown). The above tasks all focused on COVID-19 vaccines. They then applied the models to predict unlabeled tweets and performed a temporal analysis to capture trends in the unlabeled tweets. In addition, they performed a topic analysis using word clouds and a latent Dirichlet allocation (LDA) model to further understand the content of tweets in the following categories: positive attitudes, negative attitudes, positive behavioural intentions, and negative behavioural intentions. The researchers then identified 10 main topics and relevant terms for each category.

The research revealed that the prevalence of tweets expressing opinions did not change significantly over time. For tweets containing attitudes toward the COVID-19 vaccines, the rate of negative attitudes was 0.754 (95% confidence interval (CI) 0.707-0.795), while the rate of positive attitudes was only 0.246 (95% CI 0.204-0.293). There as a significant change in users' attitudes toward vaccines over time. Among tweets related to behavioural intentions, the rate of tweets indicating that users will not get vaccinated was 0.342 (95% CI 0.229-0.461), whereas the rate of tweets indicating that users will get vaccinated was 0.652 (95% CI 0.539-0.771). There was a substantial increase in the prevalence of tweets expressing positive behavioural intention starting from mid-December 2020. A number of global events happening around that time could explain this increase. For example, a large number of healthcare workers and influential figures received COVID-19 vaccines to increase public confidence. Indeed, social influence has been shown to positively affect the acceptance rate. At the same time, this increase in positive behavioural intentions could generate a positive social influence, which could lead to a higher vaccine acceptance rate.

Key terms identified in the topic modeling in this study could provide guidance to design or optimise vaccine promotion interventions (e.g., education materials). The analysis herein reveals that COVID-19 vaccine promotion strategies need to resolve concerns about side effects and long-term safety issues, virus mutation, and the difference between COVID-19 and the flu. Moreover, promotion strategies should highlight the chance to return to normal life and stay healthy after being vaccinated for COVID-19.

In terms of methodologies, this study demonstrated that transfer learning models outperformed traditional machine learning models in general. In addition, the LDA technique was found to be useful to extract topics from identified tweets.

In conclusion, this paper has provided "a method to automatically analyze the public understanding of COVID-19 vaccines from real-time data in social media, which can be used to tailor educational programs and other interventions to effectively promote the public acceptance of COVID-19 vaccines."

Source

Journal of Medical Internet Research (JMIR) 2021 (Aug 10); 23(8):e30251. Image credit: Unsplash; Copyright: Lisanto; License: Licensed by JMIR.