This presentation highlights potential use cases of deep generative models, and Generative Adversarial Networks (GANs) in particular, in Finance. Essentially, these models are useful to generate realistic synthetic datasets. Quantitative Strategists, Traders, Asset and Risk Managers can find these novel techniques useful. Auditors and Regulators should also become aware of their existence as they may be source of new accounting frauds and misleading financial statements (deepfakes).
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Applications of GANs in Finance
1. Generating Realistic Synthetic Data in Finance
Applications of GANs in Finance
Gautier Marti
HKML Research
15 October 2020
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2. Table of contents
1 Introduction
2 GANs explained
GANs Milestones & Major Achievements
How do GANs work?
3 Applications of GANs in Finance
Applications
Generating Synthetic Datasets to Avoid Strategy Overfitting
Generating Alternative Realistic Historical Paths for Risk Estimation
Training Machine Learning Models in the Cloud on Synthetic Data
A Larger Data Market: Synthetic Datasets, A New Product
Deepfakes of Financial Statements and Tools to Find Them
Current State of the Art and Limitations
4 Conclusion and Questions?
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4. Introduction (3 min. video)
https://www.youtube.com/watch?v=97B8tuHwLY0
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5. Scope of the presentation
In this talk, we will focus on
doing a review of GANs success so far (mostly image generation),
explaining how Generative Adversarial Networks (GANs) work.
Then, we will present
applications of these models for generating finance-related data,
and the associated ’business’ use cases.
Finally, we shall briefly discuss
the current limitations and challenges to be overcome for a broader
adoption of these models in the industry.
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7. Subsection 1
GANs Milestones & Major Achievements
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8. GANs: A relatively new Deep Learning model (2014)
Goodfellow, Ian, et al. “Generative adversarial nets.”
Advances in neural information processing systems. 2014.
Cited by 22354 papers as of 18 September 2020.
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9. Text to Photo-realistic Image Synthesis (2016)
https://arxiv.org/pdf/1612.03242.pdf
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10. Deepfakes (2017)
Ctrl Shift Face (YouTube channel)
https://www.youtube.com/channel/UCKpH0CKltc73e4wh0_pgL3g
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11. Edmond de Belamy (2018)
Created by 3 students
First artwork created using
Artificial Intelligence to be
featured in a Christie’s auction
Sold for USD 432,500
Signed
minG maxD Ex [log(D(x))] +
Ez [log(1 − D(G(z)))]
In French, “bel ami” means
“good fellow”, a pun-tribute to
Ian Goodfellow, the creator of
GANs
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12. StyleGAN (2019) & StyleGAN2 (2020)
GANs can generate realistic fake human faces:
Give it a try: https://thispersondoesnotexist.com/
NVIDIA StyleGAN paper: https://arxiv.org/pdf/1812.04948.pdf
NVIDIA StyleGAN2 paper: https://arxiv.org/pdf/1912.04958.pdf
Remark. In December 2019, Facebook took down a network of accounts
with false identities, and mentioned that some of them had used profile
pictures created with artificial intelligence.
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13. Speech2Face & Wav2Pix (2019)
GANs conditioned on speech of a person can output a realistic face with
its correct gender, ethnicity, and approximate age:
Relevant papers:
Wav2Pix: https://arxiv.org/pdf/1903.10195.pdf
Speech2Face: https://arxiv.org/pdf/1905.09773.pdf
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14. Text to High Fidelity Speech Synthesis
Generative adversarial networks have seen rapid development in recent years and have led to remarkable improvements in
generative modelling of images. However, their application in the audio domain has received limited attention, and
autoregressive models, such as WaveNet, remain the state of the art in generative modelling of audio signals such as human
speech. To address this paucity, we introduce GAN-TTS, a Generative Adversarial Network for Text-to-Speech. Our architecture
is composed of a conditional feed-forward generator producing raw speech audio, and an ensemble of discriminators which
operate on random windows of different sizes. The discriminators analyse the audio both in terms of general realism, as well as
how well the audio corresponds to the utterance that should be pronounced. To measure the performance of GAN-TTS, we
employ both subjective human evaluation (MOS – Mean Opinion Score),as well as novel quantitative metrics (Fr´echet
DeepSpeech Distance and Kernel DeepSpeech Distance), which we find to be well correlated with MOS. We show that
GAN-TTS is capable of generating high-fidelity speech with naturalness comparable to the state-of-the-art models, and unlike
autoregressive models, it is highly parallelisable thanks to an efficient feed-forward generator. Listen to GAN-TTS reading this
abstract at https://storage.googleapis.com/deepmind-media/research/abstract.wav.
Abstract from https://arxiv.org/pdf/1909.11646.pdf
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15. GameGAN (2020)
GameGAN is able to learn Pac-Man dynamics and produce a visually
consistent simulation of the game:
NVIDIA paper https://arxiv.org/pdf/2005.12126.pdf
https://www.youtube.com/watch?v=4OzJUNsPx60
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16. Subsection 2
How do GANs work?
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17. A GAN basic architecture
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18. GAN training – step by step tutorial
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19. GAN training – step by step tutorial
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20. GAN training – step by step tutorial
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21. GAN training – step by step tutorial
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22. GAN training – step by step tutorial
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23. GAN training – step by step tutorial
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24. GAN training – step by step tutorial
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25. GAN training – step by step tutorial
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26. GAN training – step by step tutorial
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27. GAN training – step by step tutorial
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28. GAN training – step by step tutorial
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29. GAN training – step by step tutorial
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30. GAN training – step by step tutorial
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31. GAN training – step by step tutorial
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32. GAN training – step by step tutorial
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33. GAN training – step by step tutorial
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34. GAN training – step by step tutorial
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35. GAN training – step by step tutorial
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36. GAN training – step by step tutorial
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37. GAN training – step by step tutorial
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38. GAN training – step by step tutorial
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39. GAN training – step by step tutorial
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40. Conditional Generative Adversarial Nets
Seminal paper: https://arxiv.org/pdf/1411.1784.pdf
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44. Strategy Overfitting
Scenario
In September 2020, a naive or unscrupulous strat presents to his
manager a new strategy: The strategy would have initiated a massive
short in February 2020, and would have bet big on a rally starting late
March 2020.
The strat sells the strategy to his manager as able to pick-up early
signals of market sell-offs and bounce-backs thanks to advanced
machine learning and alternative data (obviously, what else?).
The manager, excited, cannot wait but to deploy capital to it.
How to fight against this industry-wide fallacy?
Well-thought and carefully designed incentives schemes
(e.g. reward a sound research framework rather than impressive in-sample backtests)
Counterfactual thinking, realistic simulations of alternative paths
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45. Strategy Overfitting – Simulations of Alternative Paths (1)
Some alternative data: Second-hand car market in Hong Kong.
A tabular dataset X
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46. Strategy Overfitting – Simulations of Alternative Paths (2)
Strat idea: When inventory builds up (more people are selling their cars
than buying), then the Hang Seng Index plummets over the next quarter.
Using GANs, we can sample new datasets ˆX ∼ X, or even ( ˆX, ˆy) ∼ (X, y),
where y can be the HSI performance or any variable we aim at predicting
(e.g. market+industry residualized returns of the respective carmakers).
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47. Strategy Overfitting – Simulations of Alternative Paths (3)
Method 1: Strategy stability
Use a GAN to learn the distribution (X, y) of the tabular data
(cf. https://arxiv.org/pdf/1907.00503.pdf)
From the calibrated GAN, generate ˆX(n)
, ˆy(n)
N
n=1
synthetic datasets
Backtest the strategy on the N datasets, and collect perf. metrics
Analyze the perf. metrics; Discard the strategy if not stable.
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48. Strategy Overfitting – Simulations of Alternative Paths (4)
In Koshiyama et al. (https://arxiv.org/pdf/1901.01751.pdf):
Generate N synthetic datasets:
Method 2: Strategy fine-tuning
Find the parameters which maximize the average perf. over the N datasets
Method 2bis: Strategy combination (ensemble models)
Fit a model on each of the N datasets
Predict using an ensemble of the N trained models
GAN vs. Stationary Bootstrap (for generating the N synthetic datasets)
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49. Risk-based Portfolio Allocation (1)
Scenario
You want to systematically allocate capital to your strategies.
Literature claims that such or such method works better than all
others by providing a dubious backtest.
When you horse race the various allocation methods, results are not
stable across periods and universes.
How can we conclude anything useful? Realistic simulations!
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50. Risk-based Portfolio Allocation (2)
Method 3: Testing Portfolio Allocation on Alternative Historical Paths
Use a GAN to generate realistic synthetic correlation matrices
(cf. https://arxiv.org/pdf/1910.09504.pdf)
Generate time series verifying the correlation structure
Estimate portfolio weights (in-sample), measure out-of-sample risk
Analyze performance of the portfolio allocation methods
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51. Risk-based Portfolio Allocation (3)
Question: Can we predict when a method (say the Hierarchical Risk
Parity (HRP)) outperforms another one (say naive risk parity)? And why?
Method 4: Understanding the outperformance of a method over another
Extract features from the underlying correlation matrix
Fit a ML model features → outperformance
(using train, validation, test datasets)
Verify if there is any good predictability
Explain the predictions as a function of features
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52. Risk-based Portfolio Allocation (4)
Concrete example: HRP vs. naive risk parity
High values for the cophenetic correlation coefficient are characteristic of a strong
hierarchical structure. Thus, HRP outperforms naive risk parity when the
underlying DGP has a strong hierarchical structure (nested clusters).
cf. Jochen Papenbrock recent work for similar applications of Explainable AI (XAI) in finance (https://firamis.de/)
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53. Training Machine Learning Models in the Cloud on
Synthetic Data
Scenario
Your company forbids the transfer of sensitive data (e.g. trades &
positions) to the Cloud
It would be more relevant and cost-effective to train large and recent
ML models in the Cloud (e.g. Amazon SageMaker)
Method 5: Training in the Cloud on synthetic data
Generate anonymized synthetic versions of the sensitive data
Send the GAN-generated non-sensitive synthetic datasets to the Cloud
Train Machine Learning models on these datasets in the Cloud
Download the Machine Learning models on premise
Fine-tune and apply the ML models on the original data
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54. A Larger Data Market: Synthetic Datasets, A New Product
As a data vendor:
Use Case 1
You may gather interests from research labs and startups which
cannot afford the price tag a hedge fund can for a dataset
You cannot sell them the original premium dataset at a hard discount
But you could sell them anonymized synthetic datasets based on the
original one at a fraction of the price
In some cases, realistic synthetic datasets may be sufficient,
e.g. a researcher studying the structural properties of a supply-chain
network rather than trying to predict markets from it
cf. this paper https://arxiv.org/pdf/2002.02271.pdf (Feb 2020) from American Express researchers
=⇒ A broader and more diverse base of clients
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55. A Larger Data Market: Synthetic Datasets, A New Product
As a data vendor, you should be aware that:
Use Case 2
Quantitative trading firms are afraid of over-fitting
Besides the original dataset, they may be interested in buying realistic
synthetic versions of it:
1 Original dataset will be used in production for trading
2 Realistic synthetic versions can be used at the research stage
Managers can distribute the synthetic datasets to their strat quants, then
they can check for consistent results across the synthetic datasets and the
original one (cf. Methods 1, 2 and 2bis previously discussed).
=⇒ A new product offered at a premium on top of the original dataset
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56. A Larger Data Market: Synthetic Datasets, A New Product
As a data vendor, you know that:
Use Case 3
Getting the client’s legal and compliance departments approval can be
a long process, even for a simple trial
In some cases, it can result in the loss of business to a competitor
So that the prospect has a quick first overview, you may be able to send
over a synthetic dataset. This should not raise the scrutiny of legal (e.g.
no contractual terms to check) or compliance (e.g. no material non-public
information in anonymized synthetic data by construction).
=⇒ Easier to maintain customer engagement and pitch new datasets
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57. Deepfakes of Financial Statements and Tools to Find Them
An an auditor:
Scenario
You have to assess journal entries comprising millions of transactions
You use ’Computer Assisted Audit Techniques’ which range from
rule-based tests designed according to past frauds to basic statistical
methods for detecting accounting anomalies
Fraudsters may adapt deepfakes to business accounting
cf. this paper https://arxiv.org/pdf/1910.03810.pdf (Oct 2019) about deepfakes in accounting
=⇒ Auditors and regulators should learn the techniques to uncover these
special types of deepfakes.
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58. Subsection 2
Current State of the Art and Limitations
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59. Current State of the Art and Limitations
This discussion is by nature technical, but we can highlight the following:
GANs can generate realistic tabular datasets (2019), but models
trained on synthetic data only were shown inferior to the ones trained
on the original data
GANs can offer a high degree of anonymization, but not all of them
are built to be differentially private meaning they might leak
information about the original data
We know how to GAN-generate realistic synthetic financial time series
(e.g. S&P 500 returns);
We know how to GAN-generate realistic synthetic financial correlation
matrices (of the S&P 500 constituents, for example);
However, we do not know yet how to GAN-generate realistic
multivariate financial time series, i.e. verifying both the time series
and the cross-sectional stylized facts
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60. Section 4
Conclusion and Questions?
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61. Conclusion and Questions?
Deep generative models and GANs in particular are an exciting new
technology.
In finance, they are actively researched in a few places but results are
not widely advertised.
We have to rely on top tech companies and academic labs to drive
the fundamental understanding and improvements of these models.
contact@hkml-research.com
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