CSRCZ: A Dataset About Corporate Social Responsibility in Czech Republic
- URL: http://arxiv.org/abs/2301.03404v1
- Date: Thu, 5 Jan 2023 17:01:40 GMT
- Title: CSRCZ: A Dataset About Corporate Social Responsibility in Czech Republic
- Authors: Xhesilda Vogli, Erion \c{C}ano
- Abstract summary: This paper describes CSRCZ, a newly created dataset based on disclosure reports from the websites of 1000 companies that operate in Czech Republic.
We describe the content of the dataset as well as its potential use for future research.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: As stakeholders' pressure on corporates for disclosing their corporate social
responsibility operations grows, it is crucial to understand how efficient
corporate disclosure systems are in bridging the gap between corporate social
responsibility reports and their actual practice. Meanwhile, research on
corporate social responsibility is still not aligned with the recent
data-driven strategies, and little public data are available. This paper aims
to describe CSRCZ, a newly created dataset based on disclosure reports from the
websites of 1000 companies that operate in Czech Republic. Each company was
analyzed based on three main parameters: company size, company industry, and
company initiatives. We describe the content of the dataset as well as its
potential use for future research. We believe that CSRCZ has implications for
further research, since it is the first publicly available dataset of its kind.
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