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15 May - Top of the mountain - Who & What? #29

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daijapan opened this issue May 15, 2024 · 1 comment
Open

15 May - Top of the mountain - Who & What? #29

daijapan opened this issue May 15, 2024 · 1 comment

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@daijapan
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daijapan commented May 15, 2024

Here are ten unsolved problems in algorithmic trading framed within a pure mathematics context:

  1. Optimal Execution Problem: Finding a universally optimal strategy for executing large orders that minimizes market impact and balances execution cost and risk.

  2. Prediction of Non-stationary Time Series: Developing mathematical models that can accurately predict the behavior of non-stationary financial time series, taking into account abrupt changes and structural breaks.

  3. Stochastic Control in High-Frequency Trading: Formulating a comprehensive mathematical framework for stochastic control problems in the context of high-frequency trading, including optimal trading strategies under varying market conditions.

  4. Market Microstructure and Order Book Dynamics: Creating a precise mathematical model that accurately describes the dynamics of the limit order book and its impact on price formation and liquidity.

  5. Portfolio Optimization with Transaction Costs and Market Impact: Extending the classical portfolio optimization problem to include realistic transaction costs and market impact, and finding closed-form solutions or efficient numerical methods.

  6. Risk Management for Complex Derivatives: Developing advanced mathematical models for the risk management of complex financial derivatives, considering extreme market events and tail risks.

  7. Arbitrage Opportunities Detection: Formulating a rigorous mathematical framework to detect and exploit arbitrage opportunities in a highly efficient and competitive market environment.

  8. Machine Learning and Algorithmic Trading: Theoretical understanding of machine learning models in the context of algorithmic trading, including the robustness, generalization, and overfitting of trading algorithms.

  9. Quantifying Market Efficiency and Inefficiency: Creating a mathematical definition and measure of market efficiency and inefficiency that can be empirically tested and used to improve trading strategies.

  10. Mathematical Modelling of Market Sentiment: Developing a quantitative model that accurately captures and predicts the impact of market sentiment on price movements and trading volume.

@daijapan
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Here are the profiles of ten researchers along with their key research keywords and relevant arXiv links:

  1. Tucker Balch

  2. Andrew Ng

  3. Lasse Heje Pedersen

  4. David Easley

  5. Terrence Hendershott

  6. Marco Avellaneda

  7. Stephen Hoi

  8. Robert Almgren

  9. Michael Kearns

  10. Matthew Dixon

These researchers are leading advancements in their respective fields, contributing to the development and refinement of algorithmic trading techniques through their rigorous research and innovative approaches.

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