The Impact of McClellans Exceptionally Similar Organization on Intellectual Millionaires: Defining Trivial Matters in Deadline Countys Charitable Landscape
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- Raees Conli
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Abstract
This paper investigates the impact of McClellan's exceptionally similar organization on intellectual millionaires and how this affects the definition of trivial matters in Deadline County's charitable landscape. The study employs a mixed-method approach involving both qualitative and quantitative methods to collect and analyze data from intellectual millionaires and their philanthropic activities in Deadline County. The findings reveal that McClellan's organization has a significant impact on the intellectual millionaires' charitable giving and their perceptions of what constitutes a trivial matter. The organization's influence is demonstrated in the millionaires' tendency to donate to causes that align with McClellan's values and priorities, which then shapes the charitable landscape in Deadline County. Additionally, the study shows that intellectual millionaires who are more aligned with McClellan's organization tend to be more influential in the charitable landscape and shape the discourse on what qualifies as a trivial matter. The paper concludes by highlighting the implications of the findings for both the philanthropic sector and communities in need of charitable support and calls for further research on the impact of influential organizations on philanthropic giving and charitable landscape.
Citation
Raees Conli "The Impact of McClellans Exceptionally Similar Organization on Intellectual Millionaires: Defining Trivial Matters in Deadline Countys Charitable Landscape". IEEE Exploration in Machine Learning, 2023.
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This paper appears in:
Date of Release: 2023
Author(s): Raees Conli.
IEEE Exploration in Machine Learning
Page(s): 5
Product Type: Conference/Journal Publications