Robeco logo

Décharge légale Agree

Les informations présentes sur ce site Web sont destinées exclusivement aux professionnels. Un investisseur professionnel est : un investisseur qui, à titre professionnel, dispose d'assez de connaissances et d'une expertise et d'une expérience suffisantes pour pouvoir évaluer de manière adéquate les risques financiers liés aux décisions d'investissement prises par lui-même.

Les visiteurs de ce site Web doivent être conscients du fait qu’ils sont eux-mêmes tenus de respecter toutes les lois et règlements en vigueur dans leur pays.

En cliquant sur J'accepte, vous confirmez que vous êtes un investisseur professionnel. Si vous cliquez sur Je n'accepte pas, vous êtes orienté vers la partie réservée aux particuliers.

08-04-2025 · Vision

The nature of innovation: Incremental, intentional, and always evolving

Innovation is often portrayed as disruptive, dramatic, or instantaneous. In practice, it tends to be measured, adaptive, and deeply embedded in the everyday work of problem-solving. Especially in data-driven industries like asset management, meaningful innovation arises not from isolated breakthroughs, but from a constant balancing act: exploring new techniques while safeguarding proven processes. This kind of innovation is rarely flashy – but it is vital.

    Auteurs

  • Jeroen Hagens - Client Portfolio Manager

    Jeroen Hagens

    Client Portfolio Manager

  • Wouter Tilgenkamp - Portfolio Manager

    Wouter Tilgenkamp

    Portfolio Manager

Innovation as quiet evolution

If you have a 20-year-old car, and over time, you’ve replaced several parts – the windows, air conditioning, steering wheel – is it still the same car? Wouter Tilgenkamp, Portfolio Manager, would argue it is. Over the last 20 years, Robeco’s approach has improved: factor definitions have been enhanced and new alpha signals introduced, while portfolio construction algorithms have been revamped – but the soul remains.

In some ways, innovation originates in the freedom to pursue goals with the sense things can be done better. Having a mix of stable, experienced team members and fresh perspectives from new hires or university graduates anchors that perspective.

New ideas are also explored in a controlled environment: Robeco’s incubator, where the team tests concepts with Robeco’s own money. Only when an idea has been analyzed, examined and proved mature is it implemented broadly.

Why communication matters

Communication and partnership are also key when it comes to innovation. It’s vital for asset managers to clearly articulate how and why their strategies are evolving, so that clients can follow that reasoning. Innovative elements need to be repeatable, explainable, and address genuine challenges.

Indeed, while clients understand traditional factors, the world has changed dramatically in the last decade. Staying ahead increasingly requires the integration of AI and related technologies into core operations. The addition of new signals is best seen as evolution, not revolution.

Découvrez la valeur de l'investissement quantitatif

Abonnez-vous pour tout savoir sur les stratégies quantitatives de pointe.

Découvrez l'investissement quantitatif

Signals to watch for: Green flags and red flags

What are green flags and red flags when it comes to innovation in quant? Jeroen Hagens, Client Portfolio Manager, shares that a key green flag is the ease and competence with which quant teams handle new research techniques.
For example, existing strategies can be augmented with next-gen quant signals, including variables that combine alpha generation and sustainability elements, while machine learning approaches are being explored for stock selection. These techniques are good at identifying alpha opportunities while also managing risk.

Alternative datasets, says Hagens, also provide researchers and portfolio managers with a pool from which to fish unique insights. One recent variable Robeco derived uses NLP to translate earnings call audio into sentiment analysis. Another is a job momentum signal, which gauges a company’s health by tracking job vacancies and layoffs.

Red flags, on the other hand, include incorrect or unreliable data and overuse. Research teams are offered new datasets by vendors constantly, and each must be scrutinized to ensure the data isn’t from questionable sources or altered after the fact. Even reliable machine learning methods can be overused. In the end, it’s about getting the delicate balance right between new techniques and established foundations.

“We’ve seen exponential growth in data and computational power, and it’s hard to predict where we’ll be in five years,” says Hagens. “It’s exciting but also a bit daunting because the future is so open.”

Conclusion

Innovation doesn’t always look like a breakthrough – it often looks like refinement. In industries that prize precision and reliability, real progress is steady, explainable, and grounded in both data and discipline. Staying ahead doesn’t mean chasing every trend, but building the capacity to adapt – and to know when not to.