Minimal implementation and experiments of "No-Transaction Band Network: A Neural Network Architecture for Efficient Deep Hedging".

Overview

No-Transaction Band Network:
A Neural Network Architecture for Efficient Deep Hedging

Open In Colab

Minimal implementation and experiments of "No-Transaction Band Network: A Neural Network Architecture for Efficient Deep Hedging".

Hedging and pricing financial derivatives while taking into account transaction costs is a tough task. Since the hedging optimization is computationally expensive or even inaccessible, risk premiums of derivatives are often overpriced. This problem prevents the liquid offering of financial derivatives.

Our proposal, "No-Transaction Band Network", enables precise hedging with much fewer simulations. This improvement leads to the offering of cheaper risk premiums and thus liquidizes the derivative market. We believe that our proposal brings the data-driven derivative business via "Deep Hedging" much closer to practical applications.

Summary

  • Deep Hedging is a deep learning-based framework to hedge financial derivatives.
  • However, a hedging strategy is hard to train due to the action dependence, i.e., an appropriate hedging action at the next step depends on the current action.
  • We propose a "No-Transaction Band Network" to overcome this issue.
  • This network circumvents the action-dependence and facilitates quick and precise hedging.

Motivation and Result

Hedging financial derivatives (exotic options in particular) in the presence of transaction cost is a hard task.

In the absence of transaction cost, the perfect hedge is accessible based on the Black-Scholes model. The real market, in contrast, always involves transaction cost and thereby makes hedging optimization much more challenging. Since the analytic formulas (such as the Black-Scholes formula of European option) are no longer available in such a market, human traders may hedge and then price derivatives based on their experiences.

Deep Hedging is a ground-breaking framework to automate and optimize such operations. In this framework, a neural network is trained to hedge derivatives so that it minimizes a proper risk measure. However, training in deep hedging suffers difficulty of action dependence since an appropriate action at the next step depends on the current action.

So, we propose "No-Transaction Band Network" for efficient deep hedging. This architecture circumvents the complication to facilitate quick training and better hedging.

loss_lookback

The learning histories above demonstrate that the no-transaction band network can be trained much quicker than the ordinary feed-forward network (See our paper for details).

price_lookback

The figure above plots the derivative price (technically derivative price spreads, which are prices subtracted by that without transaction cost) as a function of the transaction cost. The no-transaction-band network attains cheaper prices than the ordinary network and an approximate analytic formula.

Proposed Architecture: No-Transaction Band Network

The following figures show the schematic diagrams of the neural network which was originally proposed in Deep Hedging (left) and the no-transaction band network (right).

nn

  • The original network:
    • The input of the neural network uses the current hedge ratio (δ_ti) as well as other information (I_ti).
    • Since the input includes the current action δ_ti, this network suffers the complication of action-dependence.
  • The no-transaction band network:
    • This architecture computes "no-transaction band" [b_l, b_u] by a neural network and then gets the next hedge ratio by clamping the current hedge ratio inside this band.
    • Since the input of the neural network does not use the current action, this architecture can circumvent the action-dependence and facilitate training.

Give it a Try!

Open In Colab

You can try out the efficacy of No-Transaction Band Network on a Jupyter Notebook: main.ipynb.

As you can see there, the no-transaction-band can be implemented by simply adding one special layer to an arbitrary neural network.

A comprehensive library for Deep Hedging, pfhedge, is available on PyPI.

References

  • Shota Imaki, Kentaro Imajo, Katsuya Ito, Kentaro Minami and Kei Nakagawa, "No-Transaction Band Network: A Neural Network Architecture for Efficient Deep Hedging". arXiv:2103.01775 [q-fin.CP].
  • 今木翔太, 今城健太郎, 伊藤克哉, 南賢太郎, 中川慧, "効率的な Deep Hedging のためのニューラルネットワーク構造", 人工知能学 金融情報学研究会(SIG-FIN)第 26 回研究会.
  • Hans Bühler, Lukas Gonon, Josef Teichmann and Ben Wood, "Deep hedging". Quantitative Finance, 2019, 19, 1271–1291. arXiv:1609.05213 [q-fin.CP].
Official Implementation for HyperStyle: StyleGAN Inversion with HyperNetworks for Real Image Editing

HyperStyle: StyleGAN Inversion with HyperNetworks for Real Image Editing Yuval Alaluf*, Omer Tov*, Ron Mokady, Rinon Gal, Amit H. Bermano *Denotes equ

885 Jan 06, 2023
[NeurIPS-2021] Slow Learning and Fast Inference: Efficient Graph Similarity Computation via Knowledge Distillation

Efficient Graph Similarity Computation - (EGSC) This repo contains the source code and dataset for our paper: Slow Learning and Fast Inference: Effici

23 Nov 11, 2022
Instant-nerf-pytorch - NeRF trained SUPER FAST in pytorch

instant-nerf-pytorch This is WORK IN PROGRESS, please feel free to contribute vi

94 Nov 22, 2022
A flexible framework of neural networks for deep learning

Chainer: A deep learning framework Website | Docs | Install Guide | Tutorials (ja) | Examples (Official, External) | Concepts | ChainerX Forum (en, ja

Chainer 5.8k Jan 06, 2023
This project deals with the detection of skin lesions within the ISICs dataset using YOLOv3 Object Detection with Darknet.

This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License. Skin Lesion detection using YOLO This project deal

Lalith Veerabhadrappa Badiger 1 Nov 22, 2021
DSL for matching Python ASTs

py-ast-rule-engine This library provides a DSL (domain-specific language) to match a pattern inside a Python AST (abstract syntax tree). The library i

1 Dec 18, 2021
Deep Watershed Transform for Instance Segmentation

Deep Watershed Transform Performs instance level segmentation detailed in the following paper: Min Bai and Raquel Urtasun, Deep Watershed Transformati

193 Nov 20, 2022
A keras implementation of ENet (abandoned for the foreseeable future)

ENet-keras This is an implementation of ENet: A Deep Neural Network Architecture for Real-Time Semantic Segmentation, ported from ENet-training (lua-t

Pavlos 115 Nov 23, 2021
Finite Element Analysis

FElupe - Finite Element Analysis FElupe is a Python 3.6+ finite element analysis package focussing on the formulation and numerical solution of nonlin

Andreas D. 20 Jan 09, 2023
Info and sample codes for "NTU RGB+D Action Recognition Dataset"

"NTU RGB+D" Action Recognition Dataset "NTU RGB+D 120" Action Recognition Dataset "NTU RGB+D" is a large-scale dataset for human action recognition. I

Amir Shahroudy 578 Dec 30, 2022
An efficient 3D semantic segmentation framework for Urban-scale point clouds like SensatUrban, Campus3D, etc.

An efficient 3D semantic segmentation framework for Urban-scale point clouds like SensatUrban, Campus3D, etc.

Zou 33 Jan 03, 2023
SCALE: Modeling Clothed Humans with a Surface Codec of Articulated Local Elements (CVPR 2021)

SCALE: Modeling Clothed Humans with a Surface Codec of Articulated Local Elements (CVPR 2021) This repository contains the official PyTorch implementa

Qianli Ma 133 Jan 05, 2023
Code to reproduce the results in "Visually Grounded Reasoning across Languages and Cultures", EMNLP 2021.

marvl-code [WIP] This is the implementation of the approaches described in the paper: Fangyu Liu*, Emanuele Bugliarello*, Edoardo M. Ponti, Siva Reddy

25 Nov 15, 2022
Scalable Graph Neural Networks for Heterogeneous Graphs

Neighbor Averaging over Relation Subgraphs (NARS) NARS is an algorithm for node classification on heterogeneous graphs, based on scalable neighbor ave

Facebook Research 67 Dec 03, 2022
GluonMM is a library of transformer models for computer vision and multi-modality research

GluonMM is a library of transformer models for computer vision and multi-modality research. It contains reference implementations of widely adopted baseline models and also research work from Amazon

42 Dec 02, 2022
A numpy-based implementation of RANSAC for fundamental matrix and homography estimation. The degeneracy updating and local optimization components are included and optional.

Description A numpy-based implementation of RANSAC for fundamental matrix and homography estimation. The degeneracy updating and local optimization co

AoxiangFan 9 Nov 10, 2022
LightNet++: Boosted Light-weighted Networks for Real-time Semantic Segmentation

LightNet++ !!!New Repo.!!! ⇒ EfficientNet.PyTorch: Concise, Modular, Human-friendly PyTorch implementation of EfficientNet with Pre-trained Weights !!

linksense 237 Jan 05, 2023
ROCKET: Exceptionally fast and accurate time series classification using random convolutional kernels

ROCKET + MINIROCKET ROCKET: Exceptionally fast and accurate time series classification using random convolutional kernels. Data Mining and Knowledge D

298 Dec 26, 2022
DockStream: A Docking Wrapper to Enhance De Novo Molecular Design

DockStream Description DockStream is a docking wrapper providing access to a collection of ligand embedders and docking backends. Docking execution an

AstraZeneca - Molecular AI 72 Jan 02, 2023
Video Frame Interpolation without Temporal Priors (a general method for blurry video interpolation)

Video Frame Interpolation without Temporal Priors (NeurIPS2020) [Paper] [video] How to run Prerequisites NVIDIA GPU + CUDA 9.0 + CuDNN 7.6.5 Pytorch 1

YoujianZhang 31 Sep 04, 2022