Topological Risk Parity
Revant Nayar, Dnyanesh Kulkarni, El Mehdi Ainasse

TL;DR
Topological Risk Parity (TRP) is a novel tree-based portfolio construction method designed for market-neutral, long/short strategies, leveraging market structure and correlation geometry for robust risk management.
Contribution
TRP introduces a non-binary, topology-based approach for signed signals, improving robustness and flexibility over classical Hierarchical Risk Parity in various market conditions.
Findings
TRP preserves signal direction while shaping exposures using correlation geometry.
It accounts for imperfect correlation between parent and child nodes, enhancing robustness.
TRP is suitable for market-neutral and hedge fund strategies, especially during macro shocks.
Abstract
We develop \emph{Topological Risk Parity} (TRP), a tree-based portfolio construction approach intended for long/short, market neutral, factor-aware portfolios. The method is motivated by the dominance of passive/factor flows that naturally create a tree-like structure in markets. We introduce two implementation variants: (i) a rooted minimum-spanning-tree allocator, and (ii) a market/sector-anchored variant referred to here as \emph{Semi-Supervised TRP}, which imposes SPY as the root node and the 11 sector ETFs as the second layer. In both cases, the key object is a sparse rooted topology extracted from a correlation-distance graph, together with a propagation law that maps signed signals into portfolio weights. Relative to classical Hierarchical Risk Parity (HRP), TRP is non-binary and designed for signed cross-sectional signals and hedged long-short portfolios: it preserves signal…
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