Business collapse is a common event in economies, small and big alike. A firm's health is crucial to its stakeholders like creditors, investors, partners, and prediction of the upcoming financial crisis is significantly important to devise appropriate strategies to avoid business collapses. Bankruptcy prediction has been regarded as a critical topic in the world of accounting and finance. Methodologies and strategies have been investigated in the research domain for predicting company bankruptcy more promptly and accurately. Conventionally, predicting the financial risk and bankruptcy has been solely achieved using the historic financial data. CEOs also communicate verbally press releases and voice characteristics, such as emotion and tone may reflect a company's success, according to anecdotal evidence. Companies' publicly available earning calls data is one of the main sources of information to understand how businesses are doing and what are expectations for the next quarters. An earnings call is a conference call between the management of a company and the media. During the call, management offers an overview of recent performance and provides a guide for the next quarter's expectations. The earning calls summary provided by the management can extract CEO's emotions using sentiment analysis. This article investigates the prediction of firms' health in terms of bankruptcy and non-bankruptcy based on emotions extracted from earning calls and proposes a deep learning model in this regard. Features extracted from long short-term memory (LSTM) network are used to train machine learning models. Results show that the models provide results with a high score of 0.93, each for accuracy and F1 when trained on LSTM extracted feature from synthetic minority oversampling technique (SMOTE) balanced data. LSTM features provide better performance than traditional bag of words and TF-IDF features.
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http://dx.doi.org/10.7717/peerj-cs.1134 | DOI Listing |
J Am Geriatr Soc
January 2025
Department of Veterans Affairs, Veterans Health Administration, Office of Geriatrics and Extended Care, Washington, DC, USA.
Background: The Age-Friendly Health System (AFHS) initiative seeks to improve care for older adults through assessing and acting on the 4Ms (What Matters, Medication, Mentation, Mobility). The Department of Veterans Affairs (VA) joined the initiative in 2020, and from 2022 to 2023, VA led its first Age-Friendly Action Community, a 7-month online educational series to teach clinicians about implementing the 4Ms across VA care settings.
Methods: The VA Action Community was designed to spread awareness about Age-Friendly care for older Veterans, improve interprofessional team knowledge for providing care guided by the 4Ms, and support AFHS implementation across multiple care settings.
Am J Prev Med
February 2025
TSET Health Promotion Research Center, Stephenson Cancer Center, The University of Oklahoma Health Sciences, Oklahoma City, Oklahoma.
Int J Drug Policy
August 2024
Department of Public Administration and Policy, Rockefeller College of Public Affairs and Policy, University at Albany, SUNY, United States.
Objectives: Overdose mortality rates in the United States remain critical to population health. Economic , such as unemployment, are noted risk factors for drug overdoses. The COVID-19 pandemic exacerbated economic hardship; as a result, the US government enacted income protection programs in conjunction with existing unemployment insurance (UI) to dampen COVID-19-related economic consequences.
View Article and Find Full Text PDFHeliyon
April 2024
Social & Economic Survey Institute (SESRI), Qatar University, Qatar.
This study aimed to explore self-reported challenges Arab and other parents encountered during the sudden shift to online teaching and learning due to the COVID-19 pandemic. The researchers investigated the likely effect of demographic and contextual factors on the perceived challenges reported by parents. To achieve the study's objectives, the researchers utilized a mixed-method design involving a random sample of students' parents (Arab and other parents) in public and private schools in Qatar.
View Article and Find Full Text PDFClin Infect Dis
December 2023
Department of Life Sciences, SBASSE-LUMS, Lahore, Pakistan.
Background: Efforts to combat antimicrobial resistance, a growing public health problem in Pakistan, have been hampered by the lack of high-quality national and provincial-level antimicrobial consumption data. The singular objective of this retrospective study was to measure antimicrobial consumption over 3 years between 2019 and 2021.
Methods: The study was designed to estimate antimicrobial consumption at National and Regional levels.
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