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Deep Calibration of Market Simulations using Neural Density Estimators and Embedding Networks

Deep Calibration of Market Simulations using Neural Density Estimators and Embedding Networks ArXiv ID: 2311.11913 “View on arXiv” Authors: Unknown Abstract The ability to construct a realistic simulator of financial exchanges, including reproducing the dynamics of the limit order book, can give insight into many counterfactual scenarios, such as a flash crash, a margin call, or changes in macroeconomic outlook. In recent years, agent-based models have been developed that reproduce many features of an exchange, as summarised by a set of stylised facts and statistics. However, the ability to calibrate simulators to a specific period of trading remains an open challenge. In this work, we develop a novel approach to the calibration of market simulators by leveraging recent advances in deep learning, specifically using neural density estimators and embedding networks. We demonstrate that our approach is able to correctly identify high probability parameter sets, both when applied to synthetic and historical data, and without reliance on manually selected or weighted ensembles of stylised facts. ...

November 20, 2023 · 2 min · Research Team

Is Kyle's equilibrium model stable?

Is Kyle’s equilibrium model stable? ArXiv ID: 2307.09392 “View on arXiv” Authors: Unknown Abstract In the dynamic discrete-time trading setting of Kyle (1985), we prove that Kyle’s equilibrium model is stable when there are one or two trading times. For three or more trading times, we prove that Kyle’s equilibrium is not stable. These theoretical results are proven to hold irrespectively of all Kyle’s input parameters. Keywords: Kyle’s model, market microstructure, equilibrium stability, dynamic trading, information asymmetry, Equities (Microstructure) ...

July 18, 2023 · 1 min · Research Team