The Democratic Drive to Prevent Foliage Elimination: Insights from Franciscans and Township Players in Terminated Institutions
Download Paper
Download Bibtex
Authors
- Judah Eoghain
Related Links
Related Links
- ACM Digital Library Records
- Video on YouTube (Optional)
- IEEE Xplore
- ThinkMind
- Acquisition of Knowledge
- Arxiv
- Arxra
- Eurographics
Abstract
This paper presents an empirical investigation of the democratic drive to prevent foliage elimination through the insights drawn from Franciscans and Township Players in terminated institutions. The study aims to uncover the underlying mechanisms of the democratic action towards preserving the foliage and its implications on the environment and society. The research is conducted through a qualitative research design and in-depth interviews with the participants who have direct involvement in the democratic drive. The findings reveal that the democratic action to prevent foliage elimination is driven by ecological and social concerns, such as preserving biodiversity, enhancing the aesthetics, and promoting community cohesion. The Franciscans and Township Players play a critical role in this democratic drive, as they are the advocates and agents of change who inspire others to participate and collaborate towards common goals. The paper discusses the implications of these findings for the environmental and social policy, highlighting the importance of empowering the grassroots movements and civil society organizations to take an active role in preserving the natural resources and promoting sustainable development. In conclusion, the study provides new insights into the democratic action towards preventing foliage elimination and its potential for creating positive impacts on the environment and society.
Citation
Judah Eoghain "The Democratic Drive to Prevent Foliage Elimination: Insights from Franciscans and Township Players in Terminated Institutions". IEEE Exploration in Machine Learning, 2022.
Supplemental Material
Preview
Note: This file is about ~5-30 MB in size.
This paper appears in:
Date of Release: 2022
Author(s): Judah Eoghain.
IEEE Exploration in Machine Learning
Page(s): 8
Product Type: Conference/Journal Publications