nep-mst New Economics Papers
on Market Microstructure
Issue of 2020‒04‒20
seven papers chosen by
Thanos Verousis


  1. Deep Recurrent Modelling of Stationary Bitcoin Price Formation Using the Order Flow By Ye-Sheen Lim; Denise Gorse
  2. Social media and price discovery: the case of cross-listed firms By Rui Fan; Oleksandr Talavera; Vu Tran
  3. A Deep Reinforcement Learning Framework for Continuous Intraday Market Bidding By Ioannis Boukas; Damien Ernst; Thibaut Th\'eate; Adrien Bolland; Alexandre Huynen; Martin Buchwald; Christelle Wynants; Bertrand Corn\'elusse
  4. Inside the Mind of a Stock Market Crash By Stefano Giglio; Matteo Maggiori; Johannes Stroebel; Stephen Utkus
  5. Deep Probabilistic Modelling of Price Movements for High-Frequency Trading By Ye-Sheen Lim; Denise Gorse
  6. Kernel Estimation of Spot Volatility with Microstructure Noise Using Pre-Averaging By Jos\'e E. Figueroa-L\'opez; Bei Wu
  7. Dual State-Space Model of Market Liquidity: The Chinese Experience 2009-2010 By P. B. Lerner

  1. By: Ye-Sheen Lim; Denise Gorse
    Abstract: In this paper we propose a deep recurrent model based on the order flow for the stationary modelling of the high-frequency directional prices movements. The order flow is the microsecond stream of orders arriving at the exchange, driving the formation of prices seen on the price chart of a stock or currency. To test the stationarity of our proposed model we train our model on data before the 2017 Bitcoin bubble period and test our model during and after the bubble. We show that without any retraining, the proposed model is temporally stable even as Bitcoin trading shifts into an extremely volatile "bubble trouble" period. The significance of the result is shown by benchmarking against existing state-of-the-art models in the literature for modelling price formation using deep learning.
    Date: 2020–03
    URL: http://d.repec.org/n?u=RePEc:arx:papers:2004.01499&r=all
  2. By: Rui Fan (Swansea University); Oleksandr Talavera (University of Birmingham); Vu Tran (University of Reading)
    Abstract: This paper examines whether social media information affects the price discovery process for cross-listed companies. Using over 29 million overnight tweets mentioning cross-listed companies, we investigate the role of social media for the linkage between the last periods of trading in the US markets and the first periods in the UK market. Our estimates suggest that the size and content of information flows in social networks support the price discovery process. The interactions between lagged US stock features and overnight tweets significantly affect stock returns and volatility of cross-listed stocks when the UK market opens. These effects weaken and disappear after one to three hours after the UK market opening. We also develop a profitable trading strategy based on overnight social media, and the profits remain economically significant after considering transaction costs.
    Keywords: Twitter, investor sentiment, cross-listed stocks, text classification, computational linguistics
    JEL: G12 G14 L86
    Date: 2020–03
    URL: http://d.repec.org/n?u=RePEc:bir:birmec:20-05&r=all
  3. By: Ioannis Boukas; Damien Ernst; Thibaut Th\'eate; Adrien Bolland; Alexandre Huynen; Martin Buchwald; Christelle Wynants; Bertrand Corn\'elusse
    Abstract: The large integration of variable energy resources is expected to shift a large part of the energy exchanges closer to real-time, where more accurate forecasts are available. In this context, the short-term electricity markets and in particular the intraday market are considered a suitable trading floor for these exchanges to occur. A key component for the successful renewable energy sources integration is the usage of energy storage. In this paper, we propose a novel modelling framework for the strategic participation of energy storage in the European continuous intraday market where exchanges occur through a centralized order book. The goal of the storage device operator is the maximization of the profits received over the entire trading horizon, while taking into account the operational constraints of the unit. The sequential decision-making problem of trading in the intraday market is modelled as a Markov Decision Process. An asynchronous distributed version of the fitted Q iteration algorithm is chosen for solving this problem due to its sample efficiency. The large and variable number of the existing orders in the order book motivates the use of high-level actions and an alternative state representation. Historical data are used for the generation of a large number of artificial trajectories in order to address exploration issues during the learning process. The resulting policy is back-tested and compared against a benchmark strategy that is the current industrial standard. Results indicate that the agent converges to a policy that achieves in average higher total revenues than the benchmark strategy.
    Date: 2020–04
    URL: http://d.repec.org/n?u=RePEc:arx:papers:2004.05940&r=all
  4. By: Stefano Giglio; Matteo Maggiori; Johannes Stroebel; Stephen Utkus
    Abstract: We provide a data-driven analysis of how investor expectations about economic growth and stock market returns changed during the February-March 2020 stock market crash induced by the COVID-19 pandemic. We surveyed wealthy retail investors who are clients of Vanguard in mid-February 2020, around the all-time stock market high, and then again on March 11 and 12, after the stock market had collapsed by over 20%. The average investor turned more pessimistic about the short-run performance of both stock markets and the economy. Investors also perceived higher probability of both further extreme stock market declines and large declines in short-run real economic activity. In contrast, investors' expectations about the long run remained largely unchanged, and if anything improved. Disagreement among investors about economic and stock market outcomes also increased substantially. Our analysis is an input in both the design of the ongoing economic policy response and in further advancing economic theories.
    Date: 2020–04
    URL: http://d.repec.org/n?u=RePEc:arx:papers:2004.01831&r=all
  5. By: Ye-Sheen Lim; Denise Gorse
    Abstract: In this paper we propose a deep recurrent architecture for the probabilistic modelling of high-frequency market prices, important for the risk management of automated trading systems. Our proposed architecture incorporates probabilistic mixture models into deep recurrent neural networks. The resulting deep mixture models simultaneously address several practical challenges important in the development of automated high-frequency trading strategies that were previously neglected in the literature: 1) probabilistic forecasting of the price movements; 2) single objective prediction of both the direction and size of the price movements. We train our models on high-frequency Bitcoin market data and evaluate them against benchmark models obtained from the literature. We show that our model outperforms the benchmark models in both a metric-based test and in a simulated trading scenario
    Date: 2020–03
    URL: http://d.repec.org/n?u=RePEc:arx:papers:2004.01498&r=all
  6. By: Jos\'e E. Figueroa-L\'opez; Bei Wu
    Abstract: We first revisit the problem of kernel estimation of spot volatility in a general continuous It\^o semimartingale model in the absence of microstructure noise, and prove a Central Limit Theorem with optimal convergence rate, which is an extension of Figueroa and Li (2020) as we allow for a general two-sided kernel function. Next, to handle the microstructure noise of ultra high-frequency observations, we present a new type of pre-averaging/kernel estimator for spot volatility under the presence of additive microstructure noise. We prove Central Limit Theorems for the estimation error with an optimal rate and study the problems of optimal bandwidth and kernel selection. As in the case of a simple kernel estimator of spot volatility in the absence of microstructure noise, we show that the asymptotic variance of the pre-averaging/kernel estimator is minimal for exponential or Laplace kernels, hence, justifying the need of working with unbounded kernels as proposed in this work. Feasible implementation of the proposed estimators with optimal bandwidth is also developed. Monte Carlo experiments confirm the superior performance of the devised method.
    Date: 2020–04
    URL: http://d.repec.org/n?u=RePEc:arx:papers:2004.01865&r=all
  7. By: P. B. Lerner
    Abstract: This paper proposes and motivates a dynamical model of the Chinese stock market based on a linear regression in a dual state space connected to the original state space of correlations between the volume-at-price buckets by a Fourier transform. We apply our model to the price migration of executed orders by the Chinese brokerages in 2009-2010. We use our brokerage tapes to conduct a natural experiment assuming that tapes correspond to randomly assigned, informed and uninformed traders. We did not notice any spike of illiquidity transmitting from the US Flash Crash in May 2010 to trading in China.
    Date: 2020–04
    URL: http://d.repec.org/n?u=RePEc:arx:papers:2004.06200&r=all

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