Generation of Synthetic Financial Time Series with GANs - Casper Hogenboom

During his master thesis research, Casper has been working on financial time-series generation with use of Generative Adversarial Networks (GANs). The unparalleled success of GANs in generating realistic synthetic images has initiated an entirely new field of research. However, due to the inherent difficulty of evaluating synthetic generated data instances, this progress has been largely limited to applications like images and video, where visual inspection can serve as a guide. In this research, we will extend state-of-the-art concepts within GAN training to the (financial) time series domain. The challenging task is to evaluate the synthetically generated time-series, which need to have statistical properties as close as possible to the historic data. This talk will give an insight into difficulties encountered during this research, and discuss the proposed solutions.

QU Fall School | Synthetic Data Generation in Finance
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QU Fall School | Synthetic Data Generation in Finance

Financial Engineering Playground: Signal Processing, Robust Estimation, Kalman, Optimization
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Financial Engineering Playground: Signal Processing, Robust Estimation, Kalman, Optimization

The Founders Meet 2026 | Pathfinder CITADEL | Session 2 | 23 June 2026
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The Founders Meet 2026 | Pathfinder CITADEL | Session 2 | 23 June 2026

Eamonn Keogh - Finding Approximately Repeated Patterns in Time Series
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Eamonn Keogh - Finding Approximately Repeated Patterns in Time Series

Introduction to GANs, NIPS 2016 | Ian Goodfellow, OpenAI
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Introduction to GANs, NIPS 2016 | Ian Goodfellow, OpenAI

Turing Award Winner: Disagreeing with Google, Postgres, Future Problems | Mike Stonebraker
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Turing Award Winner: Disagreeing with Google, Postgres, Future Problems | Mike Stonebraker

Keynote: After the AI Hype – What’s Real, and What’s Next - Richard Campbell - 2026
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Keynote: After the AI Hype – What’s Real, and What’s Next - Richard Campbell - 2026

Introduction to the Wasserstein distance
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Introduction to the Wasserstein distance

Creating synthetic datasets in R to facilitate the safe sharing of sensitive data
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Creating synthetic datasets in R to facilitate the safe sharing of sensitive data

Generative Adversarial Networks (GANs) - Computerphile
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Generative Adversarial Networks (GANs) - Computerphile

External Data Conference | Ten Financial Applications of Machine Learning | Marcos Lopez de Prado
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External Data Conference | Ten Financial Applications of Machine Learning | Marcos Lopez de Prado

What do tech pioneers think about the AI revolution? - The Engineers, BBC World Service
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What do tech pioneers think about the AI revolution? - The Engineers, BBC World Service

Kishan Manani - Feature Engineering for Time Series Forecasting | PyData London 2022
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Kishan Manani - Feature Engineering for Time Series Forecasting | PyData London 2022

LSTM is dead. Long Live Transformers!
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LSTM is dead. Long Live Transformers!

APAC - Quantitative Research Masterclass 2025
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APAC - Quantitative Research Masterclass 2025

Using Synthetic Data for Machine Learning & AI in Python
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Using Synthetic Data for Machine Learning & AI in Python

Ian Goodfellow: Generative Adversarial Networks (NIPS 2016 tutorial)
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Ian Goodfellow: Generative Adversarial Networks (NIPS 2016 tutorial)

Training Sand to Think: Artificial General Intelligence & Future of Physics
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Training Sand to Think: Artificial General Intelligence & Future of Physics

What are GANs (Generative Adversarial Networks)?
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What are GANs (Generative Adversarial Networks)?

Let us build a simple Generative Adversarial Network (GAN) from scratch | GAN theory and intuition
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Let us build a simple Generative Adversarial Network (GAN) from scratch | GAN theory and intuition