Saturday, April 26, 2025

Enhancing Trading Strategies Using Model Uncertainty

Most trading systems focus on algorithms for generating entry and exit signals. When the performance deteriorates, developers often try to introduce additional filters and/or modify system parameters.

Reference [1] applied a novel technique, called Dynamic Model Averaging (DMA), to improve model performance. Basically, DMA estimates model uncertainty, and a trade is executed when signals are generated and the model uncertainty is low.

DMA, widely applied in forecasting inflation, S&P 500 volatilities, and exchange rates, dynamically assigns a model probability to each candidate model, enabling time-varying parameters. It aggregates forecasts from all models, using Kalman filtering for estimation and updating model probabilities based on historical forecast accuracy, yielding robust out-of-sample predictions.

The authors pointed out,

We have proposed augmented trading strategies by incorporating considerations of market entry timing. Leveraging estimations from the DMA approach, two criteria are employed to determine optimal market entry times: (1) low uncertainty regarding the model used to forecast trading returns, and (2) positive forecasted trading returns. Subsequently, spanning from April 4th, 2001, to December 31st, 2023, we collect daily data from the Chinese stock market to empirically examine our augmented trading strategies. Utilizing lagged trading excess returns and nine higher-order moments of market performance as market indicators, we forecast future excess returns in both momentum and reversal trading.

Results affirm our augmented strategies yield significant positive returns, surpassing canonical momentum and reversal trading. Canonical strategies mostly saw negative average returns over the period, except 1-day momentum. Conversely, augmented strategies reliably produced positive returns, transaction costs notwithstanding, with most showcasing over 7 % average annual absolute returns. Implementation of our criteria didn’t notably diminish trading chances, selected entry days constituting over 12 % of total. Selected entry days were evenly spread, indicating brief waiting periods for trading.

In short, by applying the DMA approach to estimate model uncertainty and taking signals when the uncertainty is low, the authors managed to greatly improve the performance of momentum and reversal trading strategies.

This is an innovative technique in trading system design. Let us know what you think in the comments below or in the discussion forum.

References

[1] Wenhao Wang, Qingyi Zhang, Pengda An, Feifei Cai, Momentum and reversal strategies with low uncertainty, Finance Research Letters Volume 68, October 2024, 105970

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Thursday, April 24, 2025

Volatility Risk Premium Seasonality Across Calendar Months

Seasonality in investing refers to the tendency of financial markets or specific assets to exhibit predictable patterns at certain times of the year. These patterns can arise due to recurring economic, behavioral, or institutional factors. Understanding and analyzing seasonal trends can help investors time their trades more effectively and enhance portfolio performance.

We have recently discussed the seasonality of the volatility risk premium (VRP) in terms of days of the week. In this regard, Reference [1] examined the VRP in terms of months of the year. The authors pointed out,

As the first in the literature, this study documents a statistically significant December effect, namely, the delta-hedged returns in December are substantially lower than those in other months of the year. The lower hedged returns in December are attributed to overvaluation of options at the beginning of the month, which in turn is attributed to option investors’ consistent failure of recognizing and incorporating the lower realized volatility in the second half of December, i.e., the implied volatility at the beginning of December is consistently larger than the realized volatility in December. This December effect prevails in both equity options and S&P 500 index options. A trading strategy selling straddles based on the decile with the biggest predicted difference between implied volatilities and realized volatilities can generate a monthly return of 13.09% in December, compared with the unconditional sample mean of 0.88%. The next step of the study is to examine and rule out alternative channels such as time-varying risks and demand pressure.

In short, the authors concluded that the VRP is greatest in December and smallest in October.

An explanation for the large VRP in December is that during the holiday season, firms might refrain from releasing material information, leading to low trading volumes. The combination of low trading volume and the absence of important news releases would naturally result in lower realized volatility.

This is another important contribution to the understanding of the VRP. Let us know what you think in the comments below or in the discussion forum.

References

[1] Wei, Jason and Choy, Siu Kai and Zhang, Huiping, December Effect in Option Returns (2025). https://ift.tt/75k1LRn

Article Source Here: Volatility Risk Premium Seasonality Across Calendar Months



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Saturday, April 19, 2025

Extension of the Black-Scholes-Merton Model to Include Supply Change Rate for Ethereum Options

Ethereum (ETH) is a cryptocurrency that resembles a combination of a currency, a stock, and a commodity. It is a non-dividend-paying crypto asset with a dynamic supply change parameter. Ethereum options have been traded since 2019. Deribit is the largest ETH options exchange by volume, with a market share of approximately 80%.

A particularity of ETH is the changing nature of its supply. Specifically, the supply change rate can be expressed as follows,

Supply change rate = Net issuance rate = Issuance rate − Burn rate

Reference [1] generalized the Black-Scholes-Merton (BSM) formalism to include ETH’s supply change rate. The authors pointed out,

The net issuance rate introduces skewness in volatility structures. This skewness is weighted for deep-in-the-money options, which is consistent with the behavior of option prices. As strike prices increase significantly, the implied volatilities asymptotically approach each other.

Moreover, the sensitivity of the results to even minor changes in the net issuance rate parameter is noteworthy. Figures 12 - 13 demonstrate this effect. This indicates that the inclusion of the net issuance rate can cause significant changes in option pricing. Consequently, options could be fundamentally mispriced if the parameter is completely ignored.

The main contribution of the thesis is the identification of a deterministic factor in the pricing of crypto asset options, the supply change rate, which is not taken into account in the traditional BSM model. The extended BSM model, or alternatively the crypto asset BSM, presented in this thesis includes this rate in the model. The supply change rate can take both positive and negative values within its mathematically defined limits. Moreover, the crypto asset BSM can be used for any other crypto asset that has a supply change parameter, preferably with low block times.

Basically, the author employed the formula used for incorporating stock dilution effects and extended it to ETH options.

Another interesting insight from the paper is that it shows the volatility smirk of ETH options, where, unlike equity options, out-of-the-money call options have higher implied volatility than at-the-money calls.

Let us know what you think in the comments below or in the discussion forum.

References

[1] Teemu Laurikainen, An extension of the Black-Scholes-Merton options pricing model to Ethereum, Aalto University, 2025

Post Source Here: Extension of the Black-Scholes-Merton Model to Include Supply Change Rate for Ethereum Options



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Tuesday, April 15, 2025

Time Series vs. Machine Learning: A Systematic Evaluation

Forecasting is important in finance, as it helps investors, analysts, and institutions make informed decisions under uncertainty. Up to now, most forecasting techniques have relied on traditional time series methods, such as ARIMA, GARCH, and exponential smoothing. However, with recent advancements in machine learning and artificial intelligence, these technologies have increasingly found applications in financial forecasting. Their ability to capture complex, nonlinear relationships and process large volumes of data has opened new possibilities for improving prediction accuracy in areas such as asset prices, volatility, and risk.

Reference [1] presents a systematic comparison of traditional time series techniques with newer AI/ML approaches. It highlights the weaknesses of traditional time series methods, notably they assume stationarity and linear relationships, which often do not hold in financial markets. These models struggle with non-stationary data, non-linear dynamics, and large datasets, limiting their ability to capture the full complexity of market behavior.

The paper also discusses the advantages of AI-driven methods, particularly that they excel at capturing complex, non-linear relationships in financial data, and adapting to changing market conditions without manual intervention. They also handle large, high-dimensional datasets effectively, uncovering hidden patterns and making more accurate predictions than traditional models.

The authors made several comparisons using criteria such as,

  • Accuracy
  • Computational Complexity
  • Flexibility and Adaptability
  • Interpretability

The authors pointed out,

The comparison of both approaches revealed that while traditional methods are more interpretable and computationally efficient, AI-driven techniques provide greater accuracy and adaptability, especially when dealing with the dynamic and volatile nature of modern financial markets. However, the challenge of obtaining high-quality, reliable data and avoiding overfitting remains for both types of models.

In practice, the decision to use traditional methods versus AI-driven approaches depends largely on the nature of the financial data and the specific forecasting needs. Traditional methods may still be the preferred choice for simpler, well-behaved datasets where linearity and stationarity are present, or when computational resources are limited. They are also suitable for scenarios where interpretability is essential, such as regulatory environments or when model transparency is required. Conversely, AI-driven models should be considered when forecasting complex, non-linear, or high-dimensional financial data, such as stock prices or forex rates, where traditional models struggle. These models are particularly useful when predictive accuracy is paramount, and sufficient computational resources are available to handle the increased complexity.

In short, the new AI/ML techniques offer advantages but also come with disadvantages. However, nothing prevents us from combining these two approaches and leveraging their respective strengths.

Let us know what you think in the comments below or in the discussion forum.

References

[1] Gwokkwan Sun, and Shuhan Deng, Financial Time Series Forecasting: A Comparison Between Traditional Methods and AI-Driven Techniques, Journal of Computer, Signal, and System Research, Vol. 2 No. 2 (2025)

Post Source Here: Time Series vs. Machine Learning: A Systematic Evaluation



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Saturday, April 12, 2025

Tail Risk Hedging with Corporate Bond ETFs

Tail risk hedging is a strategy designed to protect portfolios against extreme market moves that occur infrequently but have a significant impact when they do. These “tail events” lie at the far ends of a return distribution and often coincide with financial crises, sharp market crashes, or systemic shocks. A well-structured tail risk hedge, typically involving options or volatility instruments, can provide substantial value during periods of heightened uncertainty.

Reference [1] proposed a tail risk hedging scheme by shorting corporate bonds. Specifically, it constructed three signals—Momentum, Liquidity, and Credit—that can be used in combination to signal entries and exits into short high-yield ETF positions to hedge a bond portfolio.  The authors pointed out,

The research above constructed signals on the Investment Grade bond market to inform a dynamic hedge that deploys liquid bond ETFs as hedges to effectively and quickly protect high carry bond funds. It succeeded in lowering absolute and relative risk, increasing annualised returns, and improving Sortino for PIMIX and avoiding drawdowns for DODIX, in a realistic framework that incorporates trading costs, funding costs, and volume sized hedge positions.

Credit Risk, Liquidity, and Momentum signals derived from options, duration times spread, and cumulative duration-neutral returns respectively, each seemed to capture some orthogonal information about the IG bond market. Hedge performance considering individual signals, followed by their combination, proves this point - with an optimal improvement in Sortino of ≥ 0.7 using the joint signals. When searching the hedge model’s parameter space, results remain strong and consistent over a wide array of tested parameters.

Hedging is cost effective as the research has focused on establishing short positions in IG (LQD) and HY (HYG) bond ETFs rather than shorting individual IG corporate bonds. IG bond ETFs are liquid and have low bid-ask spreads, and establishing shorts in the IG bond ETF space via LQD & HYG provides great downside convexity which benefits the efficacy of the hedge. While IG and HY CDXs have far larger traded volumes than LQD & HYG, they do not have the same downside convexity and prove to be not as effective as ETFs

In short, it's possible to develop an effective tail risk hedging strategy using corporate bond ETFs.

An interesting insight from this paper is that it points out how using corporate ETFs benefits from downside convexity while using credit default swaps such as IG CDXs does not.

Let us know what you think in the comments below or in the discussion forum.

References

[1] Travis Cable, Amir Mani, Wei Qi, Georgios Sotiropoulos and Yiyuan Xiong, On the Efficacy of Shorting Corporate Bonds as a Tail Risk Hedging Solution, arXiv:2504.06289

Originally Published Here: Tail Risk Hedging with Corporate Bond ETFs



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Thursday, April 10, 2025

Machine Learning for Algorithmic Trading: A Comprehensive Review

Thanks to the advancement in computing technologies, we’re seeing more widespread use of machine learning, especially deep learning, in the financial services sector. It’s no longer just a theoretical tool; it's showing up in everything from credit risk models to algorithmic trading strategies.

Reference [1] provides a comprehensive review of deep learning techniques used in the financial sector, with a focus on algorithmic trading. It offers a structured analysis of deep learning’s applications across various areas of trading, aiming to identify key trends, challenges, and emerging opportunities by critically evaluating existing research.

The paper provides detailed insights into methodologies applied in different sub-areas of trading such as,

  • Stock price prediction
  • Market volatility prediction
  • Portfolio optimization
  • Sentiment analysis for trading
  • Risk management
  • Anomaly detection and fraud detection
  • Supply chain forecasting

Specifically, in volatility forecasting, it highlights,

Recent studies have emphasized the significance of incorporating multiple data streams, including macroeconomic indicators, sentiment analysis, and high-frequency trading data, to enhance the predictive accuracy of volatility models [129,130]. The findings suggest that hybrid models outperform single-model approaches, but data noise and overfitting remain challenges. As shown in Table 8, a variety of models have been applied to different datasets, each with specific contributions and limitations.

Overall, the authors concluded,

This review has highlighted the transformative potential of deep learning in algorithmic trading, where models such as LSTM, CNN, and Reinforcement Learning have shown substantial improvements in predicting financial markets and optimizing trading strategies. However, significant challenges remain, particularly related to data quality, overfitting, and the interpretability of complex DL models. Financial markets are noisy, volatile, and influenced by a multitude of factors, making it difficult for models to generalize well. Additionally, the black-box nature of DL models raises concerns for traders and regulators who require transparency in decision-making. Emerging trends such as attention mechanisms, transformer architectures, and hybrid models offer promising solutions to these challenges, alongside integrating alternative data sources like social media sentiment and news. Future research must focus on improving model robustness, developing explainable AI techniques, and addressing computational efficiency to unlock the full potential of DL in real-world trading environments. By overcoming these hurdles, DL can significantly enhance the accuracy and effectiveness of algorithmic trading, providing traders with more powerful tools for navigating complex financial markets.

In short, deep learning is useful but still has its limitations.

In our experience, being able to leverage advances in computing is definitely an edge, but domain knowledge remains essential.

Let us know what you think in the comments below or in the discussion forum.

References

[1] MD Shahriar Mahmud Bhuiyan, MD AL Rafi, Gourab Nicholas Rodrigues, MD Nazmul Hossain Mir, Adit Ishraq, M.F. Mridha, Jungpil Shin, Deep learning for algorithmic trading: A systematic review of predictive models and optimization strategies, Array, Volume 26, 2025, 100390,

Post Source Here: Machine Learning for Algorithmic Trading: A Comprehensive Review



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Saturday, March 29, 2025

Interest Rate Sensitivity in Low-Volatility Investing

Low-volatility investing is a strategy that focuses on stocks with historically lower price fluctuations, aiming to achieve strong risk-adjusted returns. Despite conventional finance theory suggesting that higher risk should lead to higher returns, research has shown that low-volatility stocks often outperform their high-volatility counterparts on a risk-adjusted basis. By reducing drawdowns and offering a smoother return profile, low-volatility investing appeals to risk-conscious investors, particularly in uncertain market environments.

Given the appeal of low-volatility investing, there are, however, some concerns about its sensitivity to changes in interest rates, particularly its viability in a higher-yield environment. Reference [1] investigates this issue. The authors pointed out,

The results confirm that low-volatility stock deciles do indeed exhibit positive, statistically significant bond betas (that become negative for high-volatility deciles), and this exposure carries over to the most popular low-volatility indexes such as the S&P 500 Low Volatility Index and the MSCI USA Minimum Volatility Index, even after accounting for their exposures to value, quality, and investment factors. The estimated bond betas roughly correspond to a duration of a two-year Treasury bond, but—as our robustness tests show—this sensitivity does not appear to be very stable over time. It can be quite effectively mitigated by applying leverage (especially within the context of long–short strategies) or by carefully avoiding excessive industry tilts, such as overallocating to companies from the utilities or consumer staples sector.

… Even in 2022, one of the worst years on record for US Treasuries, exposure to interest rates failed to materially affect the performance of low-volatility strategies. The negative bond contribution was more than offset by high positive returns on undervalued, high-quality, and conservative stocks overrepresented in low-volatility portfolios. On a more pessimistic note, however, equity style exposures of our sample low-volatility strategies seem to account for much of their raw excess returns generated in the past 30 years, suggesting some skepticism as to how much value added these strategies can bring to an already diversified and quality-tilted portfolio.

In short, the results confirm that long-only low-volatility strategies exhibit positive, statistically significant bond betas, even after controlling for exposures to value, quality, and investment factors. However, this sensitivity is not stable over time and can be effectively mitigated through leverage or by avoiding excessive industry concentrations.

This article sheds new light and provides insights into low-volatility investing. Let us know what you think in the comments below or in the discussion forum.

References

[1] Juliusz Jabłecki, Low-Volatility Equity Strategies and Interest Rates: A Bittersweet Perspective, The Journal of Beta Investment Strategies, Volume 16, Issue 1 Spring 2025

Article Source Here: Interest Rate Sensitivity in Low-Volatility Investing



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Friday, March 28, 2025

Variational Autoencoders for Arbitrage-Free Volatility Modeling

Machine learning and AI are transforming investing by enabling data-driven decision-making, uncovering hidden patterns, and automating complex strategies. From algorithmic trading and portfolio optimization to risk management and sentiment analysis, AI-driven models process vast amounts of data with speed and precision, identifying opportunities that traditional methods might miss.

Most ML and AI approaches have been applied to building predictive models. Reference [1], however, suggests using ML techniques in risk management. Specifically, it explores the use of Variational Autoencoders for generating synthetic volatility surfaces for stress testing and scenario analysis.

The paper develops a robust synthetic data generation framework using parameterized Heston models. It implements comprehensive arbitrage validation, ensuring critical no-arbitrage conditions, including calendar spread and butterfly arbitrage constraints, are preserved. The authors pointed out,

First, we have demonstrated that synthetic data generation using carefully parameterized Heston models can effectively overcome the traditional barriers of limited market data in illiquid markets. By generating over 13,500 synthetic surfaces—compared to the typical constraint of fewer than 100 market-observable surfaces, we have significantly enhanced the robustness and reliability of our VAE training process. Our methodology succeeds in preserving critical no-arbitrage conditions, specifically, both calendar spread and butterfly arbitrage constraints validate its practical applicability in real-world trading environments. .. A key innovation of our approach is expanding the idea of latent space optimization which was alluded to by Bergeron et al [2] and its independence from historical market data for training purposes. This characteristic makes our framework particularly valuable for emerging markets, newly introduced derivatives, and other scenarios where historical data is scarce or non-existent. The ability to generate realistic, arbitrage-free synthetic surfaces provides practitioners with a powerful tool for price simulation and risk assessment in illiquid markets...The successful reconstruction of surfaces with significant missing data points (demonstrated through our test case with 100 randomly removed points) showcases the model’s robustness and practical utility. Extending the framework to examine the model’s performance under various market stress scenarios could constitute further research directions.

This is a significant contribution to the advancement of ML and AI in finance, particularly in risk management—an area with much yet to be explored.

Let us know what you think in the comments below or in the discussion forum.

References

[1] Nteumagne,  B. F.; Donfack,  H. A.; Wafo Soh,  C. Variational Autoencoders for Completing the Volatility Surfaces. Preprints 2025, 2025021482. https://ift.tt/BxHoiVu

Originally Published Here: Variational Autoencoders for Arbitrage-Free Volatility Modeling



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Tuesday, March 25, 2025

Improving Portfolio Management with Volatility of Volatility

Managing portfolios using volatility as a filter has proven effective. Reference [1] builds on this research by proposing the use of volatility of volatility for portfolio management. The rationale behind using volatility of volatility is that it represents uncertainty.

Unlike risk, which refers to situations where future returns are unknown but follow a known distribution, uncertainty means that both the outcome and the distribution are unknown. Stocks may exhibit uncertainty when volatility or other return distribution characteristics vary unpredictably over time.

Practically, the author used a stock’s daily high and low prices to derive its volatility of volatility. They pointed out,

Specifically, we hypothesise that the benefits of volatility management are more pronounced for low uncertainty stocks and during periods of low aggregate uncertainty. To test these hypotheses, we use a measure of uncertainty based on the realised volatility-of-volatility (vol-of-vol) derived from intraday high and low prices. We first examine the relation between this measure of uncertainty and future returns. Consistent with the extant literature, we find that uncertainty is positively related to returns, and that it contains unique information about future returns not captured by other stock characteristics. We then explore the role of uncertainty in the performance of volatility management, across individual stocks and over time. We show that volatility management yields a significantly larger improvement in risk-adjusted performance for stocks with low uncertainty compared to those with high uncertainty and, for the market portfolio, it yields better performance during periods of low aggregate uncertainty compared to periods of high uncertainty. We also show that uncertainty potentially explains the performance of volatility management when applied to different asset pricing factor portfolios. Furthermore, our findings complement the sentiment-driven explanation of Barroso and Detzel (2021), revealing that the effect of sentiment on volatility management crucially depends on the level of uncertainty.

In short, using the volatility of volatility as a filter proves to be effective, particularly for low-uncertainty stocks.

We find it insightful that the author distinguishes between risk and uncertainty and utilizes the volatility of volatility to represent uncertainty.

Let us know what you think in the comments below or in the discussion forum.

References

[1] Harris, Richard D. F. and Li, Nan and Taylor, Nicholas, The Impact of Uncertainty on Volatility-Managed Investment Strategies (2024). https://ift.tt/rVJf7iS

Originally Published Here: Improving Portfolio Management with Volatility of Volatility



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Monday, March 17, 2025

Incorporating Liquidity into Option Pricing: a Stochastic Approach

Liquidity is an overlooked research area, yet it plays a crucial role in financial markets. Trading system developers often use the bid-ask spread as a proxy for liquidity, but this approach is less effective in the options market.

Reference [1] proposes a method for integrating liquidity into the option pricing model. Essentially, it introduces market liquidity as a variable that can change randomly and affects stock prices through a discounting factor and market liquidity levels.

The paper begins by incorporating a stochastic liquidity variable into the SDE for stock price under the P measure. Here the liquidity process is modeled as an Ornstein-Uhlenbeck process. The SDE is then transformed into the Q measure in which European options are analytically evaluated using the derived closed-form characteristic function. The authors pointed out,

We incorporate three main factors, that is, stochastic volatility, economic cycles, and liquidity risks, into one model used for option pricing. A combination of Heston stochastic volatility and regime switching is selected for modeling the price of the underlying stock when there are no liquidity risks. The stock price is then discounted based on the level of market liquidity levels described by a mean reverting stochastic process. The employment of regime switching Esscher transform provides a risk‐neutral measure as well as the corresponding model dynamics, yielding a European option pricing formula in closed form. Significant impacts of the three factors can be seen through the performed numerical experiments. Our analysis with real data also confirm the necessity to consider stochastic liquidity, which has greatly improved model performance. By leveraging the stochastic liquidity component, our proposed model can help investors refine their hedging positions, better responding to liquidity shocks, and thus mitigate risks more effectively.

In short, liquidity is integrated as a discount factor, and the study demonstrates its impact on option prices.

This research provides a framework for incorporating liquidity into options trading, however, we found it less intuitive. Let us know what you think in the comments below or in the discussion forum.

References

[1] Xin-Jiang He, Hang Chen, Sha Lin, A Closed-Form Formula for Pricing European Options With Stochastic Volatility, Regime Switching, and Stochastic Market Liquidity, Journal of Futures Markets, 2025; 1–12

Originally Published Here: Incorporating Liquidity into Option Pricing: a Stochastic Approach



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