Sustainable Development Goals (SDGs) Data | Worldwide Public Companies ESG data | Datacie ESG
收藏Datarade2024-04-19 收录
下载链接:
https://datarade.ai/data-products/sustainable-development-goals-sdgs-worldwide-public-companies-esg-data-datacie-datacie
下载链接
链接失效反馈官方服务:
资源简介:
This dataset is part of Datacie’s global ESG collection. Discover how the world’s companies are acting to address each of the 17 UN Sustainable Development Goals, helping you understand, measure, and make informed decisions about ESG-related risks, corporate engagements and impact investing. USE CASES & BENEFITS Asset managers - create unique and differentiated SDG-driven portfolio strategies that align with your investors’ preferences and your firm’s positioning while generating better returns. Financial Advisors & Consultants - comply with client mandates on the SDGs. Corporates - benchmark your company against your peers in terms of actions towards the SDGs and understand the data that your investors use to build a fair view of your business. Financial product managers - develop SDG-themed investment products. Institutional managers - measure and report on the degree of SDG alignment in portfolios and provide confidence to your clients that require greater transparency around sustainability. Engaged investors - build persuasive arguments to engage effectively with corporates to raise awareness about their insufficient level of disclosures or inaction towards the SDGs. METHODOLOGY Unlike traditional SDG alignment tools that provide no explainability into the “whys” and the “hows” a given company receives a score for each of the 17 global goals, Datacie’s Sustainable Development Goals data solution is a unique compilation of textual insights that provide financial market participants with the neutrality needed to arbitrate on the reported actions and goals. This dataset is built from all available data sources that contain ESG information on publicly listed companies, including self-reported filings, CSR reports, press releases, corporate websites & other corporate disclosures. As a trusted data partner, Datacie is committed to delivering competitive and error-free data products to its clients. To this end, we have designed an unrivaled NLP-powered methodology that reads, understands, and captures all the sentences from unstructured sources (websites, documents, media releases...) that contain a goal or an action towards one of the 17 SDGs, regardless of the companies self-declared alignment with the goals. In a first pass, our technology exploits the semantic decomposition and the grammatical structure of a sentence to determine whether it contains ESG-related goals (forward-looking) or actions (present). In a second pass, the NLP models classifies each sentence into one of the 17 goals introduced by the United Nations. By construction, our technology also predicts diverse quality and confidence indicators for each sentence captured; our ESG experts then review these quality indicators and carry thorough qualitative investigations of the extracted information, guaranteeing that the SDG-related goals and actions are fully accurate and that no crucial items are missed. After inception, the entire dataset is audited and evaluated for trustworthiness. Every data entry passes through hundreds of quality checks that automatically identify outliers and potentially misreported observations. Additional manual checks are performed on low-confident sentences, ensuring that the final data product is free from poor-quality observations. STATUS & DELIVERY The Sustainable Development Goals dataset is currently being compiled and prepared for our clients’ preferred usage; additional coverage (temporal and company-wise) and existing/new columns can be modified/added on demand. Contact us and be among the first to benefit from this data solution to inform your sustainability decisions with the highest quality, cost-effective data of the market.
提供机构:
Datacie搜集汇总
数据集介绍

背景与挑战
背景概述
该数据集是Datacie全球ESG数据集合的一部分,提供全球上市公司在17项联合国可持续发展目标(SDGs)上的目标与行动数据,帮助用户评估ESG相关风险、企业参与和影响力投资。它采用基于NLP的方法从公开非结构化来源提取信息,并经过严格质量审核,目前正在编译中,可根据需求定制覆盖范围和列项。
以上内容由遇见数据集搜集并总结生成



