K
Kien Le
Researcher at Open University
Publications - 54
Citations - 701
Kien Le is an academic researcher from Open University. The author has contributed to research in topics: Educational attainment & Context (language use). The author has an hindex of 11, co-authored 52 publications receiving 416 citations. Previous affiliations of Kien Le include Louisiana State University & University of Virginia.
Papers
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2022 Qatar World Cup Impact Perceptions among Qatar Residents
TL;DR: This paper evaluated how the impacts from the 2022 World Cup preparations in Qatar influenced local residents' attitudes, personal and community quality of life perceptions, excitement about hosting the event, and support toward the event.
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Shadow Wages and Shadow Income in Farmers’ Labor Supply Functions
TL;DR: In this article, the authors extend the current literature on estimating the labor supply function in agriculture by providing a different method to derive the shadow wage and shadow income, which is the marginal product of labor at the optimal point of both farm and household production functions.
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The psychological consequences of COVID-19 lockdowns
TL;DR: The COVID-19 outbreak has resulted in the largest number of lockdowns worldwide in history as mentioned in this paper, while lockdowns may reduce the spread of COVID19, the downside costs of this approach could be dreadful.
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The psychological burden of the COVID-19 pandemic severity.
TL;DR: In this article, the authors investigate how the severity of the COVID-19 pandemic can condition people's psychological well-being and uncover the damaging consequences of the severity, as measured by mortality rate, on the incidences of daily anxiety, worry, displeasure, and depression in the United States.
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Separation Hypothesis Tests in the Agricultural Household Model
TL;DR: In this paper, the authors provide new tests that extend current tests in two directions: first, the new tests avoid issues that current tests have to address, such as simultaneity bias and the estimation of the production function.