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Home | Events | Multivariate AutoRegressive Smooth Liquidity
Seminar

Multivariate AutoRegressive Smooth Liquidity


  • Location
    Erasmus University Rotterdam, Campus Woudestein, ET-14
    Rotterdam
  • Date and time

    February 19, 2026
    12:00 - 13:00

Abstract

We propose MARSLiQ (Multivariate AutoRegressive Smooth Liquidity), a multivariate model for daily liquidity that combines slowly evolving trends with short-run dynamics to capture both persistent and transitory liquidity movements. The trend for each asset is estimated nonparametrically and further decomposed into a common market trend, idiosyncratic (asset-specific) trends, and seasonal trends. We introduce a novel dynamic structure in which an asset’s short-run liquidity is driven by its own past liquidity as well as by lagged liquidity of a broad liquidity index (constructed from all assets). This parsimonious specification---combining asset-specific autoregressive feedback with index-based spillovers---makes the model tractable even for high-dimensional systems, while capturing rich liquidity spillover effects across assets. Using the model’s Vector MA representation, we perform forecast error variance decompositions to quantify how shocks to one asset’s liquidity affect others over time, and we interpret these results through network connectedness measures that map out the web of liquidity interdependence across assets. Joint work with C. Hafner and L. Wang.