Data Analytic Tools Find Hidden Value in Sustainable Firms
Data analytic tools help financial institutions understand how sustainability drives firms’ market value.
In the late 1990s, as soaring Internet stocks pulled Nasdaq to new heights, people asked if the economy had fundamentally changed. Maybe old principles of stock valuation no longer applied.
“The New Economy is a banner under which we recognize certain new kinds of asset classes,” argued John Ka
o, a Harvard Business School professor, in 1996. “We recognize the value of ideas; we recognize the value of transforming those ideas in value. We recognize the value of agility.”
A 1999 Wall Street Journal article even suggested that investors should rethink the “quaint idea” of profits when valuing a company.
If financial markets value different things at different times, is sustainability valued appropriately today? Some believe that sustainable companies are undervalued. In this article, we look at data analytic
solutions that seek to correct such market inefficiencies and direct capital to sustainable companies.
A Paradigm Shift in Valuing Sustainability
In the early 1990s, analysts viewed CSR initiatives by companies as a distraction from the focus on profit and therefore lowered the companies’ valuations. Analysts’ interpretation of CSR reflected the dominant view of the firm as a set of contracts between different parties: shareholders, employees, suppliers and customers. Managers’ role, from this perspective, was to maximize monetary return on investment for shareholders.
In this view, the quality of stakeholder relationships creates financial risks and opportunities, as well as social and environmental value. Ioannou and Serafeim found that, over time, analysts came to interpret CSR efforts as a way of managing stakeholder relationships, and increased their valuation to reflect this new perspective.
Analytics Can Uncover Additional Market Inefficiencies
If market valuation of sustainability has come this far, it can change even more. This is, at least, the assumption behind some innovative data analytic solutions that seek to identify sustainable companies that are still undervalued today.
Commonly, institutional investors integrate Environmental, Social and Governance
(ESG) considerations into their strategies by eliminating from portfolios companies involved in questionable ESG practices. Investors see this as a way to reduce financial risk. However, as asset managers increasingly recognize ESG‘s role in financial success, they seek ways to automate the integration of ESG data into their decision-making processes and make it more sophisticated.
As we discussed in a previous article
, making sense of ESG information is challenging. Such information is abundant, it comes in many formats, and it presents metrics that are produced following different conventions.
Three case studies show innovative approaches to analyzing ESG data and informing financial decisions. Such new solutions go beyond negative screening of risky firms, and direct investment to companies that stand out as sustainability leaders.
Case 1: Extracting Investment Tips from Traditional ESG Data
has been rating ESG corporate performance for over 25 years. In 2016, the company launched ESG Signals
, a tool that derives investment advice by linking ESG ratings and firm financial information.
To build its ESG ratings, Sustainalytics takes an “old school” approach, using extensive research by a team of analysts and engagement with the rated companies. But to translate these ratings into predictions of financial performance, Sustainalytics turned to machine learning
and teamed up with Advestis
, a company that specializes in this field.
Machine learning is an approach that lets computers improve the way they perform tasks based on experience. This approach excels in many data analytic tasks that are too big for human analysts, or too complex for computer programs that use fixed rules. ESG Signals employs machine learning to identify which ESG variables are correlated with positive or negative returns, and uses these correlations to direct investment decisions.
ESG Signals complements Sustainalytics’ ESG indicators with financial data on 1,600 companies, totalling over 500 variables for each company. ESG indicators can relate, for example, to animal testing policy, environmental supply chain incidents and the independence of the board of directors. The system identifies the most important indicators, monitors them, and produces risk and opportunity signals for investors.
Case 2: Automating ESG Rating by Measuring Sentiments
Like Sustainalytics, TruValue Labs
develops corporate ESG ratings and links them with financial performance. But where Sustainalytics uses human analysts to develop ratings, TruValue draws on big data analytics. The company’s Insight360
platform rates companies’ ESG performance by analyzing text about the company from multiple Internet sources, such as news and social media. This automated approach allows ratings to be updated daily instead of annually.
Insight360’s automated approach uses sentiment analysis, a technology that identifies an author’s attitude to the topic he or she is writing about. When the system flags a reference to an ESG issue in relation to a company, it also assesses how positive or negative the discussion is.
Ratings reflect the overall attitude toward the company across a wide range of analyzed sources. The resulting score can be called “an objective sentiment,” suggests Jim Hawley
, TruValue’s Head of Applied Research and professor emeritus at Saint Mary's College of California.
TruValue Labs claims that the ESG intelligence uncovered by its platform can yield substantial financial gains. In a backtest
on historical data from 2013-2017, TruValue found that a portfolio guided by Insight360 beat a benchmark of S&P 500 stocks by 5% per year. A measure of how much ESG performance trended up or down over the last 12 months was especially predictive of future financial performance.
Hawley says that these insights fit with academic findings. “Momentum has been found in the ESG literature to actually be a very good indicator for increasing long-term value. But the data that has been used to track momentum has been typically annual data, so what you get is momentum in the rearview mirror.” By scanning tens of thousands of data sources daily, TruValue Labs “can track that much close to real time, in a much more granular way, because we have much more data.”
Case 3: Crunching Organizational Culture
Company culture has traditionally has been hard for investors to systematically assess. Culture Capital
takes a data-driven approach to identifying companies with strong culture and investing in them.
The company uses ESG data to assess culture. It relies on Datamaran
, a platform that analyzes ESG sources such as corporate reports and online news. Datamaran screens these sources for references to relevant cultural elements such as transparency, employee retention, and community engagement.
“Those things that sustainable investors care about,” says Geoffrey Burger
, Culture Capital’s CEO, “are very closely related to the culture of an organization.” Such characteristics mean financial success. “If a company has a very diverse set of opinions and diverse workforce, and it’s engaging its customers in real open dialogue, then the types of products they manage, the types of solutions that they’re coming up with, will be more creative and embracing more of the sustainable trends that we see in the marketplace.”
Burger believes that Culture Capital’s investment approach takes advantage of Wall Street’s blind spot, “with investors that focus so much on the short term, and all these quarterly statements, that they lose track of the long term.” Instead, Culture Capital tries to capture companies’ investment in a culture that can help them thrive over the long term.
Sources may be unreliable
, especially when companies self-report. Burger says greenwashing and false reporting were common practices only a few years ago. However, he believes sustainability’s increased spotlight and the new automatic monitoring capabilities have made such tactics much riskier. “You can say that you’re doing all these things, but there are a lot of external organizations that track them. And the reputational risk is very high.”
Does Improved Valuation Advance Sustainability?
ESG Signals, Insight360, and Culture Capital are designed to help investors profit from untapped insights from ESG data. But do they also support sustainability?
Sustainability benefits may develop if such solutions channel capital to sustainable companies and increase their access to financial resources. By establishing sustainability as a source of competitive advantage, these solutions create market incentives for it, and further integrate ESG into investment strategies.
On the other hand, these solutions do not value sustainability for its own sake, but for the financial gains it produces. Therefore, the incentives these solutions create would hold only as long as sustainability and profit are aligned.
The evolution in financial markets’ assessment of sustainability, it seems, is far from over.
About the Author
is a data scientist who specializes in business sustainability. He has a PhD in organizational sociology from the University of Chicago.
About this Series
Artificial Intelligence, fintech, Internet of Things — businesses today face an environment of continuous disruption. These trends can distract managers from sustainability — but they can also support a company's sustainability efforts.
In the New Data Technologies for Sustainability series, NBS offers guidance on aligning your company’s sustainability initiatives with the transition to big data and related technologies.
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