In an investment landscape increasingly drawn to Environmental, Social, and Governance (ESG) principles, India is only now starting to combine this ethos with advanced quant strategies. A pioneering January 2024 arXiv study, “ESG driven pairs algorithm for sustainable trading”, by Eeshaan Dutta, Sarthak Diwan, and Siddhartha Chakrabarty of IIT Guwahati, thrusts India into the global conversation on algorithmic ESG strategies
What they did. The authors built an automated trading framework that marries Environmental, Social, and Governance ratings with the statistical-arbitrage method of pairs trading—a strategy that exploits temporary price divergences between historically co-integrated stocks. By ranking pairs on ESG alignment and overlaying technical signals, they demonstrated through back-testing that the hybrid model not only upheld ESG standards but generated superior returns compared to traditional pairs trading .
Traditional pairs trading involves selecting two stocks with strong historical price correlation. When one outperforms the other, a trader shorts the leader and goes long on the laggard, profiting when their prices re-align. This classic approach, however, treats all pairs equally, regardless of indirect impact.
In contrast, ESG‑driven pairs trading filters eligible stocks based on ESG scores—environmental practices, social responsibility, and governance quality—ensuring both assets not only track each other statistically but also meet sustainability criteria paperswithbacktest.com. Once viable pairs are identified, technical and mean‑reversion signals guide execution.
The arXiv study revealed:
Such evidence echoes global meta-analyses: about 90% of Environmental, Social, and Governance studies report non-negative, often positive, returns, hinting that Environmental, Social, and Governance integration is more prudent than punitive
Data consistency remains a significant obstacle. Environmental, Social, and Governance metrics vary wildly by provider—carbon emissions vs. board diversity, scoring thresholds, regional biases—complicating pairs selection .
A 2023 paper noted that data dilution and bias hinder algorithmic trading efficacy. Investors must standardize and cross-validate datasets—perhaps using ensemble rating models or normalization frameworks
Greenwashing risks are also real. Funds may temporarily exhibit high Environmental, Social, and Governance metrics before reporting, only to deviate post-disclosure. India too has witnessed this “green window dressing”—a practice that could undermine any ESG-anchored quant strategy .
To gauge industry sentiment, we reached out to:
India’s financial regulators are weaving Environmental, Social, and Governance into the fabric of capital markets:
These developments could create datasets reliable enough to support algorithmic strategies such as ESG‑pairs trading.
An IndiaQuant Research note (June 2025) highlights the following practical setup:
Such results, if validated, would enthral Indian fund managers chasing alpha—but require depth in both datasets and execution systems.
To take this academic concept into real-world deployment in India, these building blocks are critical:
| Element | Details |
| High-quality ESG data | Multi-source alignment (CRISIL, SBI-SSF, MSCI), data cleansing |
| Robust quant systems | Real-time signals, risk checks, co-integration monitoring |
| Governance framework | Greenwashing filters, audit trails, compliance policies |
| Institutional support | Pilot deployments from fintech or asset managers like InnoVen or SBI Mutual |
| Skill sets | Teams combining quant research, ESG domain knowledge, and portfolio implementation expertise |
Academic traction continues to build. Models like reinforcement-learning‑driven Environmental, Social, and Governance portfolios suggest the future is deeper intersection—where AI, quant and Environmental, Social, and Governance entwine .
For India, the path is clear:
The real prize: capital that performs while holding to values. Products such as algos, ETFs, and structured notes built on ESG‑pairs could reshape how investors perceive alpha in India’s capital markets.
The “ESG driven pairs algorithm for sustainable trading” is far more than academic fodder—it represents a pioneering blueprint for India’s next wave of sustainable investing. By combining rigorous quant strategies with Environmental, Social, and Governance mandates, this model sits at the sweet spot of performance and responsibility.
Will market participants have the data fidelity, operational depth, and cultural will to adopt it? Time will tell—but the early signals from regulators and academia are encouraging.
Alpha that aligns with impact: that’s the frontier.
In 2025, global renewable energy capacity and investment surged to record levels, signalling a potential…
Post-COVID India has seen a rapid shift to digital banking, driven not just by technology…
FinTech is reshaping access to banking in emerging markets, using mobile apps and digital lending…
As cities grow denser and resources tighten, the sharing economy is emerging as a powerful…
Systematic Investment Plans (SIPs) have emerged as a cornerstone of long-term wealth creation in India,…
India’s financial ecosystem is rapidly shifting from traditional savings to a digital-first investment culture, as…