OPTrust leads on AI innovation

The C$23 billion Canadian fund OPTrust is using AI to reduce risk in a strategy it hopes to roll out to the wider portfolio. Wei Xie explains the benefits and challenges of machine learning including AI’s ability to identify complex dimensional relationships.

The C$23 billion Canadian fund OPTrust is embracing the power of AI to improve investment outcomes via two new strategies based around re-enforcement learning and uncertainty modelling.

The latter approach, in place since late 2020, is currently used to pare risk in a risk parity strategy and is already giving actionable signals on how to adjust risk in the portfolio. Going forward, Wei Xie, co-head of the multi-strategy investing team at the fund told FIS Digital 2021 delegates he hoped to deploy the strategy at a total fund level and combine it with the equity beta portfolio to create a risk reduced equity allocation.

Uncertainty modelling

OPTrust began exploring how to integrate AI with the support of external quant managers. Next, the fund began to build its own internal, proprietary capabilities with just Xie and an associate overseeing the project. At a high level, AI is used to better understand and inform risk in a scalable approach, he explained.

“As long as the algorithms are robust, we can adjust the approach and use it for total fund management,” he said.

Sponsored Content

Xie said that whilst very promising, machine learning is also complex. Particularly from a personnel perspective, creating challenges for investors around hiring people with the right skills. It also involves investment in a data supply chain. Indeed, even with a reasonably large investment team, OPTrust found it difficult to use AI to tap a competitive advantage because of limited resources around data and personnel. Instead, the pension fund decided to focus on risk management solutions.

“Risk management is scalable across different types of strategy and doesn’t need exotic data as it mainly involves working with price data,” he said.

Expanding on how the process works, he described the typical quant model as injecting ingredients or inputs. OPTrust sought to design a process that used AI to discover when assumptions might be ineffective due to the function of changes in the market.

The domain set out to identify times when the prevailing logic falls apart, alerting Xie to changes in external markets and the ensuing impact on risk.

“If something has changed the risk may have increased because what we are doing becomes less effective,” he explained. “The process is telling us that our strategy is less accurate, and that we should take risk out.”

Re-enforcement learning

Re-enforcement learning gives greater insight into the factors driving price action. AI allows investors to detect the non-linear impacts on prices that humans struggle to track, he said.

“Although humans are good at understanding two-dimensional linear relationships, when it becomes more abstract and relationships get to three, four or five dimensional, humans stop having any ability to interpret – accept through maths. In contrast, machine learning and AI can identify these complex relationships,” he said.

Addressing the challenge of how humans get comfortable with AI outcomes that are difficult to intuitively understand, he said the process involves testing the models and a simple checklist.

“You can do a sanity check around what is happening in your model,” he concluded.

Leave a Comment

A post-COVID economy

A post-COVID economy

The big difference between the vaccine rollouts and the scale of the stimulus measures across the world could result in a K-shaped global economic recovery, with much of the developed world booming but poorer countries continuing to struggle. However the

Sort content by

Debt concerns drive Ohio allocations

Farouki Majeed is worried about the future. His concerns are centred around the implications of the enormous US federal debt; the global competitiveness of the US and Chinese economies; inflation; and the potential erosion of the value of the US dollar.

Change how we invest

Should we be thinking about investment differently in 2021? Certainly, there appears to be cause for challenge of current thinking on inflation rates and the rise of China in the new world order.

Change how we work

2020 was by just about any measure, unprecedented. Market volatility, regulatory change and the need to make decisions quickly – but largely remotely – put more emphasis than ever on dynamic and effective decision-making in pension investment committees. It was a true test of robust governance.

Change how we think

The big macro changes that have taken place over the last year require a rethink and action from investment professionals.

Coal moves to holistic management

The COVID crisis and the volatility of 2020 has revealed some lessons for the investment team at Coal Pension Trustees (CPT). It has taken a more top down view of managing its portfolio looking at economic themes, risk exposures, cashflows and its manager roster holistically. Amanda White talks to CIO Mark Walker about where it sees return opportunities, the prospect of manager consolidation and how it has embraced technology for better investment practices.

Asset owners’ role in blended finance

The challenge of matching long-term investing with development needs in emerging and developing countries is discussed by Georg Inderst who suggests it might be time for asset owners to look at their role in blended finance.

Previous