The Politics of Family Economics: A Debate on Government Policies and Private Offerings in Society
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- Amir Steven
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Abstract
This paper presents a critical debate on the politics of family economics, focusing on the role of government policies and private offerings in shaping the economic well-being of families in society. Drawing on a range of theoretical and empirical literature, we explore the historical and contemporary trends in family economics, assessing the impact of various government policies and private offerings on the economic outcomes of families across different socio-economic contexts. We argue that while government policies have played a crucial role in ensuring economic security and support for families, there is a need for greater attention to be paid to the role of private offerings in promoting economic resilience and empowerment for families. Through a critical analysis of the existing policy frameworks and private offerings, we identify key areas of contention, including the role of tax policies, welfare programs, family leave policies, and access to credit and financial services. We conclude by highlighting the need for a more nuanced and integrated approach to family economics, which recognizes the complex interplay between government policies and private offerings in shaping the economic well-being of families in society. Ultimately, we argue that a more inclusive and equitable approach to family economics is essential for promoting economic justice and social welfare in contemporary society.
Citation
Amir Steven "The Politics of Family Economics: A Debate on Government Policies and Private Offerings in Society". IEEE Exploration in Machine Learning, 2022.
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This paper appears in:
Date of Release: 2022
Author(s): Amir Steven.
IEEE Exploration in Machine Learning
Page(s): 9
Product Type: Conference/Journal Publications