2023
DOI: 10.1108/jgr-09-2022-0090
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Automated text analyses of sustainability & integrated reporting. A literature review of empirical-quantitative research

Abstract: Purpose This study aims to focus on automated text analyses (ATAs) of sustainability and integrated reporting as a recent approach in empirical–quantitative research. Design/methodology/approach Based on legitimacy theory, the author conducts a structured literature review and includes 38 quantitative peer-reviewed empirical (archival) studies on specific determinants and consequences of sustainability and integrated reporting. The paper makes a clear distinction between analyses of reports due to readabilit… Show more

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Cited by 10 publications
(2 citation statements)
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“…The original materials for this analysis were shown in Chapter 14 of Nakao et al (2023) and Table A1 and Table 2. 3 Some accounting and organisational research studies have employed machine learning (Fieberg et al, 2022;Hannigan et al, 2019;Hu & Sun, 2022;Krupa & Minutti-Meza, 2022;Velte, 2023) We then identify the detected faces by gender (men or women), and we categorise the age groups as follows: 0-10 years as 'children', The descriptive statistics for face detection in Amazon Rekognition show more men than women, a predominant 'middle-aged' group, 33% smiles and 10% beards, marking the first detailed study on facial images in sustainability reporting. Table A2 provides further details on the descriptive statistics.…”
Section: Methodsmentioning
confidence: 99%
“…The original materials for this analysis were shown in Chapter 14 of Nakao et al (2023) and Table A1 and Table 2. 3 Some accounting and organisational research studies have employed machine learning (Fieberg et al, 2022;Hannigan et al, 2019;Hu & Sun, 2022;Krupa & Minutti-Meza, 2022;Velte, 2023) We then identify the detected faces by gender (men or women), and we categorise the age groups as follows: 0-10 years as 'children', The descriptive statistics for face detection in Amazon Rekognition show more men than women, a predominant 'middle-aged' group, 33% smiles and 10% beards, marking the first detailed study on facial images in sustainability reporting. Table A2 provides further details on the descriptive statistics.…”
Section: Methodsmentioning
confidence: 99%
“…Recently, there has been a growing practice in organizations of disclosing information that goes beyond the traditional limits of conventional reports. This trend is because traditional financial reports are not able to meet the complex information needs of various stakeholders (Velte, 2023). In addition to financial reports, sustainability reports were introduced as a means of attracting investors.…”
Section: Introductionmentioning
confidence: 99%