Essays on finance and deep learning : a thesis presented in partial fulfillment of the requirements for the degree of Doctor of Philosophy in Finance, School of Economics and Finance, Massey University
| dc.confidential | Embargo : No | |
| dc.contributor.advisor | Qin, Yafeng | |
| dc.contributor.author | Pan, Guoyao | |
| dc.date.accessioned | 2025-07-24T01:37:58Z | |
| dc.date.available | 2025-07-24T01:37:58Z | |
| dc.date.issued | 2025-07-25 | |
| dc.description.abstract | This thesis aims to broaden the application of deep learning techniques in financial research and comprises three essays that make meaningful contributions to the related literature. Essay One integrates deep learning into the Hub Strategy, a novel chart pattern analysis method, to develop trading strategies. Utilizing deep learning models, which analyze chart patterns alongside data such as trading volume, price volatility, and sentiment indicators, the strategy forecasts stock price movements. Tests on U.S. S&P 500 index stocks indicate that Hub Strategy trading methods, when integrated with deep learning models, achieve an annualized average return of approximately 25%, significantly outperforming the benchmark buy-and-hold strategy's 9.6% return. Risk-adjusted metrics, including Sharpe ratios and Jensen’s alpha, consistently demonstrate the superiority of these trading strategies over both the buy-and-hold approach and standalone Hub Strategy trading rules. To address data snooping concerns, multiple tests validate profitability, and an asset pricing model with 153 risk factors and Lasso-OLS (Ordinary Least Squares) regressions confirms its ability to capture positive alphas. Essay Two utilizes deep learning techniques to explore the relationships between the abnormal return and its explanatory variables, including firm-specific characteristics and realized stock returns. Trained deep learning models effectively predict the estimated abnormal return directly. We evaluate the effectiveness of detecting abnormal returns by comparing our deep learning models against three benchmark methods. When applied to a random dataset, deep learning models demonstrate a significant improvement in identifying abnormal returns within the induced range of -3% to 3%. Moreover, their performance remains consistent across non-random datasets classified by firm size and market conditions. In addition, a regression of abnormal return prediction errors on firm-based factors, market conditions, and periods reveals that deep learning models are less sensitive to variables like firm size, market conditions, and periods than the benchmarks. Essay Three assesses the performance of deep learning predictors in forecasting momentum turning points using the confusion matrix and comparing them to the benchmark model proposed by Goulding, Harvey, and Mazzoleni (2023). Tested on U.S. stocks from January 1990 to December 2023, deep learning predictors demonstrate higher accuracy in identifying turning points than the benchmark. Furthermore, our deep learning-based trading rules yield higher mean log returns and Sharpe ratios, along with lower volatility, compared to the benchmark. Two models achieve average monthly returns of 0.0148 and 0.0177, surpassing the benchmark’s 0.0108. These gains are both economically and statistically significant, with consistent annual results. Regression analysis also shows that our models respond more effectively to changes in stock and market return volatility than the benchmark. Overall, these essays expand the application of deep learning in finance research, demonstrating high predictive accuracy, enhanced trading profitability, and effective detection of long-term abnormal returns, all of which hold significant practical value. | |
| dc.identifier.uri | https://mro.massey.ac.nz/handle/10179/73238 | |
| dc.publisher | Massey University | |
| dc.rights | © The Author | |
| dc.subject | finance, deep learning | |
| dc.subject | Stocks | |
| dc.subject | Investments | |
| dc.subject | Data processing | |
| dc.subject | Machine learning | |
| dc.subject | Statistical methods | |
| dc.subject | Predictive analytics | |
| dc.subject.anzsrc | 350208 Investment and risk management | |
| dc.subject.anzsrc | 461103 Deep learning | |
| dc.title | Essays on finance and deep learning : a thesis presented in partial fulfillment of the requirements for the degree of Doctor of Philosophy in Finance, School of Economics and Finance, Massey University | |
| thesis.degree.discipline | School of Economics and Finance | |
| thesis.degree.name | Ph.D. | |
| thesis.description.doctoral-citation-abridged | Guoyao Pan’s doctoral research applies deep learning to financial trading and prediction. His three-essay thesis enhances stock trading performance, improves the estimation of abnormal returns, and identifies momentum turning points. His models consistently outperform benchmarks, demonstrating the practical value of deep learning in finance and expanding its role in asset pricing research. | |
| thesis.description.doctoral-citation-long | Guoyao Pan's doctoral research applies deep learning to financial trading and prediction. His thesis comprises three essays: the first integrates deep learning into a novel chart-based Hub Strategy to enhance stock trading performance; the second predicts abnormal returns using firm characteristics and market data; the third improves the detection of stock momentum turning points. Across extensive U.S. stock data, his models consistently outperform traditional benchmarks in accuracy, profitability, and risk-adjusted returns. His work demonstrates the practical value of deep learning in financial markets and broadens its application in empirical asset pricing research. | |
| thesis.description.name-pronounciation | GUOYAO PAN |
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