With the rapid development of the Internet, readers tend to share their views and emotions about news events. Predicting these emotions provides a vital role in social media applications (e.g., sentiment retrieval, opinion summary, and election prediction). However, news articles usually consist of objective texts that lack emotion words, making emotion prediction challenging. From prior studies, we know that comments that come directly from readers are full of emotions. Therefore, in this article, we propose a deep learning framework that first merges article and comment information to predict readers' emotions. At the same time, in the prediction process, we design a pseudo comment representation for unpublished news articles by the comments of published news. In addition, a better model is required to encode articles that contain implicit emotions. To solve this problem, we propose a block emotion attention network (BEAN) to encode news articles better. It includes an emotion attention mechanism and a hierarchical structure to capture emotion words and generate structural information during encoding. Experiments performed on three public datasets show that BEAN achieves the state-of-the-art average Pearson (AP) and accuracy (Acc@1). Moreover, results on four self-collected datasets show that both the introduction of emotional comments and BEAN in our framework improve the ability to predict readers' emotions.
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http://dx.doi.org/10.1109/TCYB.2021.3112578 | DOI Listing |
Perspect Med Educ
December 2024
University of California, San Francisco, US.
When health professions learners do not meet standards on assessments, educators need to share this information with the learners and determine next steps to improve their performance. Those conversations can be difficult, and educators may lack confidence or skill in holding them. For clinician-educators with experience sharing challenging news with patients, using an analogy from clinical settings may help with these conversations in the education context.
View Article and Find Full Text PDFJ Dent
December 2024
Department of Dentistry, Federal University of Santa Catarina, Florianopolis, Santa Catarina, Brazil. Electronic address:
Objectives: The aim of this study was to analyze the characteristics and trends of publications in clinical trials on tooth bleaching through a bibliometric and altmetric analysis.
Methods: A search was conducted in September 2024 on Web of Science Core Collection (WoS-CC) and Scopus. Two researchers selected articles and extracted key study characteristics.
Importance: This research describes which articles published in Urogynecology are garnering the most attention online. Understanding which articles are having the largest impact in the online community has become increasingly important due to the exponential increase in the use of social media on the internet.
Objective: The Altmetric Attention Score (AAS) is a quantitative and qualitative measure of the articles' online attention in social media and news outlets, blogs, and reference managers.
Harm Reduct J
December 2024
Department of Health Policy and Management, School of Management and Medical Informatics, Tabriz University of Medical Sciences, Tabriz, Iran.
Background: Despite Iran's prohibition politics regarding alcoholic beverages consumption, marketing, and trading, there is a flourishing black market. Often, alcohol producers on this black market do not adhere alcohol production standards, resulting in a lot of deaths and significant consequences each year. Accordingly, this study was carried out to identify facilitators for the growth of the black market for alcoholic beverages in Iran and provide solutions for harm reduction.
View Article and Find Full Text PDFCognition
December 2024
Department of Psychology, College of Human Ecology, Cornell University, USA. Electronic address:
The present research examines the factors that contribute to a negative bias in how Americans imagine the future of their country. Specifically, we tested the effects of perceived country well-being, national identity (Study 1), and news coverage (Study 2) on Americans' collective future thinking. Study 1 was situated in a cross-cultural context, in which US and Chinese participants listed within 1 min as many exciting or worrying events as they could that might happen in their country's future and reported perceived country well-being and national identity.
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