Measuring Sustainability Intention of ESG Fund Disclosure using Few-Shot Learning
Mayank Singh, Nazia Nafis, Abhijeet Kumar, Mridul Mishra

TL;DR
This paper introduces a few-shot learning approach to classify and score ESG fund disclosures, providing a scalable method to quantify sustainability claims in prospectuses, aiding investors and regulators.
Contribution
It proposes a novel few-shot finetuning method for ESG textual analysis and releases a manually annotated dataset for this purpose.
Findings
Few-shot models outperform zero-shot models by over 30% in accuracy.
Prompting large language models shows limited accuracy due to domain misalignment.
The approach enables systematic quantification of sustainability claims in fund disclosures.
Abstract
Global sustainable fund universe encompasses open-end funds and exchange-traded funds (ETF) that, by prospectus or other regulatory filings, claim to focus on Environment, Social and Governance (ESG). Challengingly, the claims can only be confirmed by examining the textual disclosures to check if there is presence of intentionality and ESG focus on its investment strategy. Currently, there is no regulation to enforce sustainability in ESG products space. This paper proposes a unique method and system to classify and score the fund prospectuses in the sustainable universe regarding specificity and transparency of language. We aim to employ few-shot learners to identify specific, ambiguous, and generic sustainable investment-related language. Additionally, we construct a ratio metric to determine language score and rating to rank products and quantify sustainability claims for US…
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Taxonomy
TopicsEducational and Technological Research · Ideological and Political Education · Safety and Risk Management
MethodsRefunds@Expedia|||How do I get a full refund from Expedia? · Byte Pair Encoding · Cosine Annealing · Layer Normalization · Linear Layer · Attention Dropout · Adam · Dropout · Dense Connections · Weight Decay
