Our Technology

Decoding Market Complexity

Financial markets are not just volatile—they are fundamentally non-stationary:
a complex system of endless interacting forces, where any patterns of behavior are continually evolving… or breaking down. What worked yesterday may fail tomorrow, not due to randomness, but because the underlying behavioral dynamics have shifted into an entirely different regime.

Traditional quant approaches often assume trading data follows consistent patterns over time. This assumption breaks down precisely when you need it most: during regime transitions, structural breaks, and periods of heightened uncertainty.

Our Machine Learning Breakthrough:

Regime Intelligence

Since 2018, our multidisciplinary team has developed purpose-built algorithms for one of quantitative finance’s most challenging problems: regime identification – discovering and quantifying periods of distinct asset, sector, and thematic behaviors …in real-time.

Our R&D innovations — which have been featured in prestigious academic journals and conferences — center on a core breakthrough: detecting regime changes at the individual asset level, while simultaneously capturing dynamic interdependencies across multiple financial time series. This dual capability reveals how assets behave both individually and within peer contexts, and crucially, how those behaviors persist through time.

The practical benefit: enabling investors to focus on assets exhibiting both desirable behaviors and reasonable predictability.

Solving Complex Temporal Relationships

Most available tools struggle with two fundamental challenges: modeling temporal behaviors inherent to financial time series, and accounting for complex interdependencies among macro forces, sectors, and individual assets. Our approach addresses both simultaneously:

Dynamic Pattern Recognition

Our ensemble models combine supervised and unsupervised machine learning algorithms to capture nonlinear interplays across multiple financial time series, revealing regime structures that simpler, linear models cannot detect.

Adaptive Regime Discovery

Rather than forcing data into predetermined categories, PSIMON identifies the natural regime structure for each asset within a user’s investment universe.

Early Signal Detection

Through continuous cross-correlation analysis and regime-switching probabilistic analyses, PSIMON recognizes changes in asset, sector and market regimes as they emerge, before most traditional methods can identify such shifts.

Beyond Pattern Recognition:

Probabilistic Conviction Scoring

Regime identification is just the beginning. PSIMON’s Conviction Scoring combines regime intelligence with sophisticated ensemble forecasting models to generate probabilistic screening and rankings across your investment universe.

Rather than “crystal ball” price predictions, PSIMON quantifies the most likely distribution of outcomes for any asset set, given current regime conditions and market context. The system processes millions of cross-sectional and time-series data points daily — from macro factors including currencies, commodities, and interest rates, to granular sector and security behaviors —distilling this complexity into conviction rankings, screenings and scores.

The result: clarity on what matters, when it matters.

Probabilistic Conviction Scoring

Institutional-Grade Validation

Our R&D culture prioritizes institutional-quality validation and risk modeling:

Applied Science for Portfolios

For portfolio managers and research teams, this translates into a quantitative edge: the ability to identify when key relationships are shifting, when correlations are breaking down, and when sectors, themes, and individual securities enter predictable versus unpredictable phases.

The result? A statistically robust view of your investment universe and portfolios that helps you see more clearly and achieve superior risk-adjusted returns by staying ahead of — rather than reacting to — structural changes in your favorite stocks and themes, or the broader market.

Want to learn more?

Book a demo to explore how the platform can work for you.

A Note on PSIMON’s Time Horizons

PSIMON’s models focus on two types of information: 1) recognize what is currently happening, especially as it relates to regime shifts, and 2) provide relative directional forecasts, qualified with relative conviction level, over the near term, ranging from a few weeks to a couple of months, depending on the model selected.