Contemporaries

ESG Benchmarking: Part #3 - Race to the Top

As explained in previous posts in this series (again, disclaimer made in the first post still stands!), investors may be better versed with the key issues that Contemporaries focus on, and are given more up-to-date, standardized and reliable ESG ratings for companies. However, data scores given are more volatile when comparing Contemporaries with Traditionalists. When comparing TVL with MSCI, TVL has higher standard deviation and variance in ratings, with standard deviations of 1.41 and 0.97 respectively. 

However, this is not to say that this volatility is bad. Humans have a habit of lowering entropy or seeking out patterns, some of which may not entirely exist. In the AI world, it is purely algorithmic, determined by a machine. There is no conscious decision making that is forcing the AI algorithm to lower deviation in data. It simply uses the information at hand, does some calculations, and comes up with a rating. 

This is a good thing that reinforces the objectivity of Contemporary approaches. Nevertheless, it is not to say that the Contemporary approach is entirely perfect. AI algorithms are highly dependent on large volumes of data to enhance learning and provide outputs closer to the “true value” we are looking for. Therefore, Contemporaries would definitely need lots more data to help fine tune their system. For example, data is not evenly distributed geographically: there is more data to be scrapped in the developed world than there is in developing countries. There is no equality in data access, and things such as data censorship, government suppression of information, or simply a lack of infrastructure to relay data online can all affect the reliability of the AI algorithm used by Contemporaries. 

Moreover, Contemporaries are completely dependent on external sources of data. It is important that there are data vendors available to them, or rather more data vendors may be needed. But more global data sources are becoming increasingly available, and may be used in the near future to help enhance the Contemporary method of ESG rating. Two examples include the Global Forest Watch (GFW) and MethaneSAT. GFW provides forest data globally, using satellite data as well as a network of partners to collect this information. This data is publicly available and free to use. MethaneSAT is a Jeff Bezos-funded initiative utilizing satellites to collect methane data all around the world and at a faster rate than scientists can measure from Earth. Data is publicly available to see how companies and governments are progressing with their carbon initiatives. 

MethaneSAT boasts several impressive feats. Its satellites can identify emissions across the globe and measure the amount of emissions released from pre-determined locations. From there, its algorithms are able to calculate the rate at which methane is escaping into the atmosphere as well as the total emissions from both individual points or regions.

MethaneSAT boasts several impressive feats. Its satellites can identify emissions across the globe and measure the amount of emissions released from pre-determined locations. From there, its algorithms are able to calculate the rate at which methane is escaping into the atmosphere as well as the total emissions from both individual points or regions.

The key points about these data vendors is that they provide global data and are publicly available. Having more data sources like this would thus be advantageous to Contemporaries, as they help tackle the issue of geographic informational inequality and enforce the reliability of data due given the freedom of public scrutiny. However, there needs to be more of these types of data sources, and data vendors of this sort for the other two aspects of ESG, Social and Corporate Governance.

Additionally, corporate disclosures are also an important source of information that has not been given much attention by Contemporaries, although to avoid greenwashing or providing a false image of a company, mandates should be put in place to enforce responsible auditing on ESG issues and more transparency in company disclosure.

Perhaps a better approach for Contemporaries would be to look at the discrepancies between the corporate disclosures and the internet data they collect. Discrepancies could be used as a confidence weighting on ratings for each component of ESG to ultimately determine a company’s rating. Whatever approach is taken, it is clear more data and richer sources are therefore required to help tackle the issues of volatility and increasing equality in access to data. 

What are the issues we should be worried about?

A major concern regarding Contemporaries is that they are run by profit-driven businesses. Their work is not publicly available or free to use, whereas Traditionalists like Sustainalytics have their ESG ratings available online. There is a lot of talk on how powerful their AI tools are, but not much of it can be publicly scrutinised unless you request for a demo, raising justifiable concerns about how reliable the technology actually is. Moreover, Contemporaries tend to be closely associated with international financial centres (IFCs)—TVL, for example, is owned by FactSet, an American financial services company in the second largest hedge fund state of Connecticut. 

Since their methodology is not easily examined,  due to limited disclosure, it is unclear as to the sort of parameters used or the assumptions made in developing its ESG rating model. Moreover, algorithms are not entirely subjective in their creation. They are subject to the scrutiny of their makers, and may have certain biases or other hints of subjectiveness built into the foundation of their AI system. Without a true value to compare ESG ratings with, we would not be entirely sure how well the algorithm really works.

With the uncertainty in the actual formulation of the Contemporary AI analyst, and the profit-driven nature of Contemporaries themselves, Hughes, Urban, and Wójcik (2021) note that Contemporaries may “complement rather than substitute” the Traditionalists in the near future (Hughes, Urban, and Wójcik, 2021). Although Contemporaries seem more democratic and provide more transparent ratings, Contemporaries also have areas of opaqueness that can affect the way ESG ratings are done. Perhaps if Contemporaries were not profit driven and rather more altruistic could AI truly replace traditional approaches to ESG.

Check out my first two posts on AIs and ESG benchmarking: ESG Benchmarking: Part #1 - ESG, AI, and the Investment Industry and ESG Benchmarking: Part #2 - AI, the New Hope of ESG

By MUHAMMED Hazim, Segi Enam intern, 30 Aug 2021 | LinkedIn

Edited by Nadirah SHARIF

ESG Benchmarking: Part #2 - AI, the "New Hope of ESG"

Following my first post on Traditionalists (the disclaimer in that post still stands here!), we are now venturing into AI-powered ratings known as Alternative Ratings or Contemporaries. Contemporaries are heavily reliant on the technological power of data scraping and AI, using sentiment analysis (SA) to come up with ESG benchmarking for companies. SA uses words, adjectives, tone, and aspects of a subject/thing to determine the connotations, opinion, or stance derived from the sentence, document or source of information provided. There are various sources of data to use for Sentiment Analysis, including but not limited to:

  1. Product reviews

  2. Stock market information

  3. News articles

  4. Debates

  5. Posts

  6. Social media and micro blogging (a rich source of information)

There are quite a number of Contemporaries in the market now. However, there is not much information about how things work algorithmically, and different Contemporaries have different approaches. One of the more established contemporaries, TruvalueLabs (TVL). TVL uses various data sources including news, journals, and trade blogs, but avoids social media due to random noise and unreliable data from the source (Hughes, Urban, and Wójcik, 2021). 

How good are they? Can they really replace the Traditionalists?

The big data approach taken by Contemporaries is one of their biggest strengths. They take an “outside-in” approach to ESG rating, and rely on external data scraped off the internet and public sentiment paired with noise (aka controversy) to help determine a company’s rating. This is thought to be “democratic”, since they are not relying on company disclosures (Hughes, Urban, and Wójcik, 2021). 

The use of technology also allows Contemporaries to work with far more data: TVL can scrape data from 100,000 sources daily in comparison to the under 4,000 sources the Traditionalist MSCI would use (Hughes, Urban, and Wójcik, 2021). This wider access allows Contemporaries to have a broader perspective on a company to help determine its ESG rating. 

GreenWatch is an AI tool used specifically to tackle the problem of greenwashing. It verifies the authenticity of “green” claims made by a company by analysing its environment-related statements made in corporate communications, including how forthcoming the company is regarding its stance on climate change, against its carbon scores. Companies are then placed into one of four categories: (1) green leaders; (2) hidden green champions; (3) green incrementalists; or (4) potential greenwashers (Bloomberg, 2021).

GreenWatch is an AI tool used specifically to tackle the problem of greenwashing. It verifies the authenticity of “green” claims made by a company by analysing its environment-related statements made in corporate communications, including how forthcoming the company is regarding its stance on climate change, against its carbon scores. Companies are then placed into one of four categories: (1) green leaders; (2) hidden green champions; (3) green incrementalists; or (4) potential greenwashers (Bloomberg, 2021).

Having access to a treasure trove of external data with a democratized perspective comes with various advantages. For one, it may help to combat the issue of greenwashing faced in the Traditionalist approach, a potential solution to the problem! Additionally, the Contemporary approach may mitigate the problems caused by the subjectivity of ratings and lack of standardization present in Traditionalist approaches by avoiding as much subjectivity as they can in their rating method.

Contemporaries also have advantageous flexibility to help determine ESG ratings. This is due to an important feature of TVL’s algorithm called the dynamic “Impact %” which they use to calculate weightings of key issues for companies: if there are more noise generated for certain controversies, the weighting for a related key issue is adjusted for the company. 

Finally, one very important feature brought by technology is the fact that Contemporaries can keep track of companies in real time. Contemporaries constantly scrape data and can update investors in real time about company ESG ratings and their respective issues. One such case study showed that TVL was able to decrease ratings for a commodity trading company called Glencore in light of various controversies they were involved in, whereas MSCI ratings were only adjusted after their annual review of Glencore (Hughes, Urban, and Wójcik, 2021). This means that investors have better access to more up-to-date information and data to make an investment decision. This means that investors have better access to more up-to-date information and data to make an investment decision. The images below show the controversies picked up by TVL in a relatively short period of time as well as the data points and ratings that were given to the company.

Hughes, Urban, and Wójcik (2021): “Spotlight events for Glencore. Source: Truvalue Labs.”

Hughes, Urban, and Wójcik (2021): “Spotlight events for Glencore. Source: Truvalue Labs.”

Hughes, Urban, and Wójcik (2021): “Insight Materiality trendline for Glencore from the TVL online platform. The dotted line refers to the daily pulse score, from which the Insight score (solid line) is derived as an average. The purple circles refer to ‘spotlight events’, ESG events which create a lot of data points. Larger circles equate to more datapoints. Source: Truvalue Labs.”

Hughes, Urban, and Wójcik (2021): “Insight Materiality trendline for Glencore from the TVL online platform. The dotted line refers to the daily pulse score, from which the Insight score (solid line) is derived as an average. The purple circles refer to ‘spotlight events’, ESG events which create a lot of data points. Larger circles equate to more datapoints. Source: Truvalue Labs.”

TVL provides a good insight of the capabilities and solutions Contemporaries provide to issues faced by Traditionalists. This includes a more democratized and transparent approach, access to far more data sources in comparison to Traditionalists, more objectivity, standardization, and up-to-date information to help investors make better decisions with relation to ESG and investment.

When broadly comparing the Traditionalist and Contemporary approaches to ESG ratings, it seems that Contemporaries win on various fronts: they can update investors quickly and try to be as objective or transparent as possible. However, not all Contemporaries may follow the exact same methodologies and get the exact same ratings. It is all dependent on the data sources they use, the key issue frameworks they choose, and how their algorithms work. 

Unfortunately, Contemporary data is not widely open to the public, and the data mentioned here is all only from TVL. With a lack of access to their data, we cannot undergo certain stress tests to see if there are unique features of Contemporaries, such as picking up on issues that Traditionalists do not see. For the moment, they seem to be able to do what the Traditionalists do with less subjectivity.

Check out my first post on AIs and ESG benchmarking: ESG Benchmarking: Part #1 - ESG, AI, and the Investment Industry

By MUHAMMED Hazim, Segi Enam intern, 23 Aug 2021 | LinkedIn

Edited by Nadirah SHARIF