AI to transform GPIF manager selection

AI will transform the way Japan’s ¥158 trillion ($1.4 trillion) Government Pension Investment Fund (GPIF) to select and monitor its asset managers.

The world’s biggest pension fund, which outsources all its investment management, announced plans last year to use AI to better scrutinise its poorly performing active managers. Since then, AI specialists Sony Computer Science Laboratories and GPIF have developed a proof-of-concept prototype that uses deep learning to study manager styles and strategies.

The latest progress report on the project promises a big shakeup in what GPIF considers one of its most important tasks.

The pension fund has felt it hasn’t got its money’s worth from active management for a while. About 20 per cent of its portfolio is in active strategies yet adding alpha net of fees has proved almost impossible. GPIF’s 2016 annual report shows the 10-year active return is -0.12 per cent for domestic bonds, -0.29 per cent for domestic stocks, 0.64 per cent for foreign bonds and -0.70 per cent for foreign stocks

“Except for foreign bonds, it has not been possible to attain alpha,” the report states.
On the other hand, payments to asset managers over three cumulative years amounted to ¥9.9 billion ($88.3 million) for domestic bond managers, ¥13.7 billion for domestic equity managers, ¥12.8 billion for foreign bond mandates and ¥34.5 billion for foreign stock mandates.

Data-empowered analysis of managers’ trading behaviour will also allow GPIF to weed out those strategies that aren’t what the pension fund intended or are too close to the index to merit extra fees.

Sponsored Content

It will enable more constructive and in-depth dialogue between the asset owner and its managers. Some of GPIF’s current fund managers will fall away, the report asserts: “Some funds will fail to develop and maintain systems that efficiently generate excess returns and will be forced to either leave the market or move towards index trading.”

The technology will also change the selection process. AI will allow the fund to ditch its current approach of drawing on track records and qualitative explanations of manager strategies and behaviour. Instead, GPIF will be able to obtain detailed analysis of investment styles based on data from fund managers submitted in advance, allowing a “highly effective manager selection process”, along with a deep-dive analysis of those already under contract.

“When asset management companies recognise that GPIF has the ability to independently analyse their investment styles and intends to continue development of even more advanced technology, they will recognise that they cannot justify their results with only qualitative explanations,” the report explains. This will end a “lack of objectivity” that has hamstrung manager selection and open the pension fund up to other providers.

How it works

The prototype for GPIF’s system consisted of a series of “detector arrays”, which identify the specific investment style of different managers using deep-learning technology. The system, which was developed first using data generated by virtual managers and then with data from actual domestic equity funds, can detect the styles and drifts of each fund manager, along with the spontaneous convergence of trading behaviours when fund managers trade similar items. The tool was programmed to recognise eight different styles: high dividend, minimum volatility, momentum, value, growth, quality, fixed weight and technical.

“From the results of 10 domestic equity funds for which sufficient data was available, distinct “styles” from fund to fund were evident, and temporal changes of style even within a single fund [were] observed,” the report explains.

Conventional tools, such as the Barra model or Aladdin, evaluate investment styles by examining changes in return in terms of multiple factors and the sensitivity to each factor. GPIF’s system directly analyses the funds’ behaviour, which makes it possible to detect style drift earlier and more directly.

Diversity worries

The process has uncovered diversity concerns, revealing that supposedly different manager strategies behave similarly in certain economic circumstances. “These results suggest that if maintaining diversity is important, it is not sufficient to simply have fund managers that apply different investment styles,” the report explains.

Pay

Using AI to monitor managers will also encourage automation in asset management. It will force managers to beef up the efficiency of their investment processes, using technology including AI, to explain their behaviour and account for their practices, the report argues. This will eliminate the dependence on individuals for management strategies, and the associated costs of hiring expertise where “fair value is ambiguous at best. This sequence of developments will further promote the science and technology of asset management.”

The future

The eight trading styles used in the prototype can be expanded or reduced and new themes and asset classes can be introduced.

“The analysis can be customised flexibly according to the purpose,” the report notes.

The prototype was constructed for domestic equity funds because the data was easy to obtain and shape; however, the model could also apply to other traditional assets, including foreign equities and foreign and domestic bonds. The model could also be adapted to predict fund managers’ future trading behaviour under various scenarios. Going beyond “analysis of the past”, the developers would like to use the model to predict fund managers’ behaviour under external, arbitrary scenarios and predict performance and risk characteristics into the future.

“Doing so should make it possible to carry out genuine forward-looking risk/return evaluation and stress testing, which would lead to the construction of a more robust manager structure,” the report states.

CIO Hiro Mizuno spoke about the fund’s use of AI at the Fiduciary Investors Symposium at Stanford University.

Leave a Comment

How CPP is evolving risk management for a faster, more interconnected world

How CPP is evolving risk management for a faster, more interconnected world

In an environment where multiple risks are emerging and their effects are compounding on the portfolio, CPP Investments' chief risk officer Priti Singh says the $572 billion fund is rethinking risk management from the ground up, shifting from reaction to preparation and embedding risk thinking earlier in investment decisions. She speaks to Amanda White about the fund's risk approach.

Sort content by

The challenges of a low-carbon mandate

AP4 already has US and emerging markets low-carbon mandates and plans to invest up to $1 billion across various regions. Mikael Johansson, senior portfolio manager global equities, AP4 explains how the concept of responsible investment can be integrated into the investment process of a large pension fund and the challenges in implementing low carbon mandates.

NEST’s defined contribution lessons

At the end of last year, 47 per cent of global pension assets were in defined contribution structures. As the trend towards defined contribution continues, one of the newest DC funds, the UK’s NEST, has some clear messages on what makes a defined contribution fund work. Chief executive, Tim Jones speaks with Amanda White.  

UniSuper’s domestic equities bias

John Pearce recently notched up five years in the role of chief investment officer at the $37 billion Australian fund, Unisuper. Here he explains his fund’s bias to domestic equities and explains the parameters of the fund’s in house management program. David Rowley reports. John Pearce has a side bet with a member of his

Why Sunsuper likes hedge funds

One of Australia’s largest superannuation funds, the $27 billion Sunsuper, is adamant that it gets value out of its large hedge fund program. This is against the grain in Australia, where many large funds (with the exception of the Future Fund) choosing not to invest in hedge funds. So why does Sunsuper favour hedge funds?

Behind the strategy of the French pension reserve fund

The French pension reforms in 2010 had a profound impact on the asset allocation of the Fonds de reserve pour les Retraites, the €35.8 billion French pension reserves fund. Instead of making payouts between 2020 and 2040, after the reform, the FRR has to pay €2.1 billon to Caisse d’Amortissement de la Dette Sociale (CADES)

Mercer capitalises on manager research

Mercer’s chief investment officer, Russell Clarke, explains how manager research helps create the 200 building blocks of an investment operation that has grown from $20 million a few years ago to $124 billion today and which covers – uniquely – all elements along the fixed income curve.   Starting from scratch in 1996, Melbourne was

Previous