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Papers With Backtest: An Algorithmic Trading Journey

Podcast de Papers With Backtest

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Acerca de Papers With Backtest: An Algorithmic Trading Journey

Welcome to Papers With Backtest, where data means profit in the world of algorithmic trading. Each episode dives into backtests, real-life trading applications, and groundbreaking research that every aspiring quant should know. Tune in to stay ahead in the algo trading game. Our website: https://paperswithbacktest.com/ Hosted on Ausha. See ausha.co/privacy-policy for more information.

Todos los episodios

81 episodios

Portada del episodio The Role of Investor Sentiment

The Role of Investor Sentiment

Are you ready to unlock the secrets of market anomalies and elevate your algorithmic trading strategies? Join hosts Mark Mirchandani and Leslie Kendricks in this enlightening episode of Papers With Backtest: An Algorithmic Trading Journey, where they delve into the groundbreaking research paper "Scaling Up Market Anomalies" by Avramov, Chang, Shriver, and Schemer, published in 2016. This episode is a must-listen for anyone serious about enhancing their trading performance through a deeper understanding of market inefficiencies. Market anomalies, such as value and momentum, have long puzzled investors. Unlike traditional models, these anomalies can predict stock returns with remarkable accuracy. But can they be effectively combined into portfolios? The research paper at the heart of our discussion explores this very question, revealing insights that could transform your approach to investing. The hosts break down the findings, highlighting how a momentum strategy can significantly enhance the performance of these anomalies, leading to superior returns. One of the key takeaways from the episode is the importance of diversification across multiple anomalies. While this approach can yield smoother returns, the paper advocates for a more dynamic strategy—one that focuses on anomalies with recent strong performance. By testing this momentum strategy, the researchers discovered substantial improvements in returns compared to a naive equal-weighted strategy. This revelation opens up new avenues for traders looking to capitalize on market inefficiencies. But that's not all; the episode also examines the role of investor sentiment in anomaly performance. The research suggests a fascinating correlation: higher investor sentiment often leads to better momentum returns. This insight could be a game-changer for algorithmic traders seeking to exploit market conditions effectively. By understanding how sentiment influences market behavior, you can fine-tune your trading strategies and make more informed decisions. Overall, this episode of Papers With Backtest highlights the potential for a more dynamic approach to anomaly investing, emphasizing the critical importance of timing in exploiting market inefficiencies. Whether you're a seasoned trader or just starting your algorithmic trading journey, the insights shared in this episode will equip you with the knowledge to navigate the complexities of the market. Don’t miss out on this opportunity to deepen your understanding of market anomalies and enhance your trading strategies. Tune in now and discover how to leverage the findings from "Scaling Up Market Anomalies" to your advantage! Hosted on Ausha. See ausha.co/privacy-policy [https://ausha.co/privacy-policy] for more information.

23 de may de 2026 - 9 min
Portada del episodio Backtesting Machine Learning Models

Backtesting Machine Learning Models

Can machine learning truly revolutionize algorithmic trading, or are we simply chasing shadows in the data? Join us in this thought-provoking episode of Papers With Backtest as we delve deep into the groundbreaking research paper "Machine Learning versus Economic Restrictions: Evidence from Stock Return Predictability" by Avramov, Cheng, and Metzger (2019). Our hosts dissect the intricate relationship between machine learning (ML) and algorithmic trading, scrutinizing the real-world applicability of theoretical models that have dazzled researchers and traders alike. As we explore various ML strategies, we shine a spotlight on two innovative deep learning methods: a neural network with three hidden layers (NN3) and an adversarial approach (CPZ). With extensive historical data at our fingertips, we analyze how these models perform under realistic trading conditions, revealing a stark contrast between initial backtested results and actual market behavior. While the allure of ML in algorithmic trading is undeniable, our findings underscore a critical truth: the path from backtested success to real-world profitability is fraught with challenges. Throughout the episode, we emphasize the significance of tradability, highlighting how profitability can often be concentrated in less liquid, smaller stocks. This insight prompts a deeper conversation about the implications of market frictions and transaction costs, which can erode the edge that machine learning models appear to offer. As we navigate through the complexities of stock return predictability, we invite our expert audience to reflect on the practical limitations that traders face when implementing these advanced techniques. The conversation culminates in a cautionary note about the necessity of rigorous testing and validation before deploying machine learning strategies in real trading environments. Are we ready to embrace the potential of ML in algorithmic trading, or do we risk overestimating its capabilities? Tune in to Papers With Backtest for an enlightening discussion that will challenge your understanding of machine learning's role in the financial markets and equip you with the insights needed to make informed trading decisions. Don't miss this opportunity to refine your perspective on the intersection of machine learning and algorithmic trading. Join us as we uncover the truths behind the hype, and prepare to navigate the complexities of a rapidly evolving landscape. Hosted on Ausha. See ausha.co/privacy-policy [https://ausha.co/privacy-policy] for more information.

16 de may de 2026 - 11 min
Portada del episodio The Asset Growth Effect

The Asset Growth Effect

Have you ever wondered how a company's asset growth could significantly impact its stock performance? In this episode of the Papers With Backtest: An Algorithmic Trading Journey podcast, we dive deep into the groundbreaking research paper "The Asset Growth Effect in Stock Returns" by Cooper, Gulen, and Schill, published in January 2009. The findings are nothing short of astonishing: companies with the highest asset growth tend to underperform, with stocks demonstrating the lowest asset growth outperforming their high-growth counterparts by an impressive 20% per year on average over a staggering 40-year study period. Join our hosts as they dissect the mechanics behind this asset growth anomaly, exploring the persistence of this effect that can last up to five years and is applicable across various stock sizes. The episode meticulously details the methodology of the study, including innovative portfolio formation based on asset growth metrics and the substantial returns generated by low-growth stocks. We also tackle potential biases in the data, scrutinizing how these results hold up against established risk factors that often influence trading decisions. As algorithmic trading strategies evolve, understanding the implications of asset growth becomes paramount for traders seeking an edge in the market. This episode emphasizes the critical need for traders to incorporate asset growth as a valuable signal in their trading algorithms. With insights drawn from empirical data and rigorous analysis, we provide listeners with actionable takeaways that can enhance their trading strategies and decision-making processes. Whether you're a seasoned trader or new to the world of algorithmic trading, this episode promises to equip you with essential knowledge about the asset growth effect, its impact on stock returns, and how to leverage this information for superior trading performance. Tune in to Papers With Backtest and embark on a journey that could transform your understanding of market dynamics and improve your trading results. Don't miss out on this opportunity to deepen your expertise in algorithmic trading and asset growth analysis. Listen now and discover how to harness the power of asset growth insights to refine your trading strategies! Hosted on Ausha. See ausha.co/privacy-policy [https://ausha.co/privacy-policy] for more information.

9 de may de 2026 - 10 min
Portada del episodio Exploring Tactical Asset Allocation

Exploring Tactical Asset Allocation

Are you ready to unlock the secrets of superior risk-adjusted returns in algorithmic trading? Join us in this enlightening episode of Papers With Backtest: An Algorithmic Trading Journey as we dissect a seminal research paper by Meebane Faber that explores the transformative power of tactical asset allocation through trend following. This episode is a must-listen for anyone serious about enhancing their trading strategies. We dive deep into the core principles of Faber's model, which leverages a straightforward 10-month simple moving average (SMA) strategy. This approach is not just about following trends; it's about making informed decisions that aim to improve risk-adjusted returns across a diverse range of asset classes. With compelling backtest results that will captivate even the most seasoned traders, we reveal how this trend-following strategy outperforms traditional buy-and-hold methods. Throughout the discussion, we highlight the significant advantages of the trend-following approach, including its ability to not only yield better returns but also dramatically reduce volatility and drawdowns. By comparing the SMA strategy to conventional investment tactics, we underscore the importance of adapting to market conditions and the potential pitfalls of static investment strategies. We also explore the intricacies of a Global Tactical Asset Allocation (GTAA) model that encompasses multiple asset classes, showcasing its impressive performance metrics. With minimal down years and low trading frequency, this model exemplifies how a well-structured algorithm can lead to consistent success in the unpredictable world of trading. As the episode unfolds, we emphasize the crucial role of consistency and risk management in trading strategies. Our insights reveal that simplicity can often lead to better outcomes in algorithmic trading, challenging the notion that complexity equates to sophistication. By utilizing the principles discussed, traders can navigate the markets with greater confidence and clarity. Whether you are a seasoned trader or just starting your algorithmic trading journey, this episode of Papers With Backtest will equip you with valuable insights and practical strategies to enhance your trading performance. Don't miss out on the opportunity to refine your trading approach and achieve the results you've always aimed for! Hosted on Ausha. See ausha.co/privacy-policy [https://ausha.co/privacy-policy] for more information.

2 de may de 2026 - 9 min
Portada del episodio Exploring Value and Momentum Everywhere

Exploring Value and Momentum Everywhere

Have you ever wondered how value and momentum investing can transcend borders and asset classes? Join us in this enlightening episode of Papers With Backtest: An Algorithmic Trading Journey, where we dissect the groundbreaking research paper "Value and Momentum Everywhere" by renowned scholars Asness and collaborators. This pivotal work challenges the conventional wisdom that these investment strategies are confined to the U.S. stock markets, revealing their profound applicability across a diverse array of asset classes, including stocks, bonds, currencies, and commodities. As we delve into the core concepts of value and momentum investing, you'll discover the compelling evidence that these strategies yield statistically significant return premiums regardless of the market in question. Our hosts illuminate the key findings of the paper, demonstrating that the effectiveness of value and momentum is not merely a quirk of the stock market, but rather a manifestation of deeper behavioral biases or shared risks that span the global financial landscape. What’s particularly intriguing is the negative correlation identified between value and momentum strategies. This relationship suggests that these two approaches can complement each other, performing optimally at different phases of the market cycle. By understanding how to effectively combine these strategies, you can enhance your portfolio performance and achieve a more robust investment strategy. Throughout the episode, we also provide an in-depth look at the backtesting methods employed in the research, offering valuable insights for anyone interested in algorithmic trading and factor investing. Whether you're a seasoned trader or just starting your journey, this episode is packed with knowledge that can elevate your understanding of market dynamics and portfolio construction. Don't miss out on this opportunity to broaden your investment horizons and refine your trading strategies. Tune in to Papers With Backtest: An Algorithmic Trading Journey and equip yourself with the tools to navigate the complexities of value and momentum investing across global markets. Your next big trading breakthrough could be just a listen away! Hosted on Ausha. See ausha.co/privacy-policy [https://ausha.co/privacy-policy] for more information.

25 de abr de 2026 - 11 min
Soy muy de podcasts. Mientras hago la cama, mientras recojo la casa, mientras trabajo… Y en Podimo encuentro podcast que me encantan. De emprendimiento, de salid, de humor… De lo que quiera! Estoy encantada 👍
Soy muy de podcasts. Mientras hago la cama, mientras recojo la casa, mientras trabajo… Y en Podimo encuentro podcast que me encantan. De emprendimiento, de salid, de humor… De lo que quiera! Estoy encantada 👍
MI TOC es feliz, que maravilla. Ordenador, limpio, sugerencias de categorías nuevas a explorar!!!
Me suscribi con los 14 días de prueba para escuchar el Podcast de Misterios Cotidianos, pero al final me quedo mas tiempo porque hacia tiempo que no me reía tanto. Tiene Podcast muy buenos y la aplicación funciona bien.
App ligera, eficiente, encuentras rápido tus podcast favoritos. Diseño sencillo y bonito. me gustó.
contenidos frescos e inteligentes
La App va francamente bien y el precio me parece muy justo para pagar a gente que nos da horas y horas de contenido. Espero poder seguir usándola asiduamente.

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