deep-finance
: Deep Learning for Finance
This repository is no longer updated since the interesting works in this field are rare. If you are really interested in Deep Learning & Finance, it's better to read high quality papers on Time Series Forecasting, Natural Language Processing, Graph Neural Networks, Recommendation System and Finance, whose ideas and models may be more helpful.
Content
1. Dataset | |
2. Paper | |
2.1 Stock Prediction | 2.2 Portfolio Selection |
2.3 Risk Management | 2.4 Finance NLP |
2.5 Blockchain | 2.6 Market Maker |
2.7 Others | |
3. Book | |
4. Disscussion Group |
Dataset
Dataset | Task | Describe |
---|---|---|
StockNet | Stock Movement Prediction | A comprehensive dataset for stock movement prediction from tweets and historical stock prices. |
EarningsCall | Stock Risk Prediction | The earnings conference call dataset of S&P 500 companies. |
FinSBD-2019 | Financial Sentence Boundary Detection | The FinSBD-2019 dataset contains financial text that had been pre-segmented automatically, which can be used for Financial Sentence Boundary Detection. |
Financial Phrasebank | Financial Sentence Boundary Detection | Financial Phrasebank dataset consists of 4845 English sentences selected randomly from financial news found on LexisNexis database. |
FiQA | Financial Question Answering | Financial QA dataset is built by crawling Stack exchange posts under the Investment topic in the period between 2009 and 2017. |
FiQA SA | Financial Sentiment Analysis | FiQA SA dataset includes two types of discourse: financial news headlines and financial microblogs, with manually annotated target entities, sentiment scores and aspects. |
Paper
Stock Prediction
-
Applications of deep learning in stock market prediction: recent progress. arxiv 2020. paper
Weiwei Jiang
-
Individualized Indicator for All: Stock-wise Technical Indicator Optimization with Stock Embedding. KDD 2019. paper
Zhige Li, Derek Yang, Li Zhao, Jiang Bian, Tao Qin and Tie-Yan Liu
-
Investment Behaviors Can Tell What Inside: Exploring Stock Intrinsic Properties for Stock Trend Prediction. KDD 2019. paper
Chi Chen, Li Zhao, Jiang Bian, Chunxiao Xing and Tie-Yan Liu
-
Exploring Graph Neural Networks for Stock Market Predictions with Rolling Window Analysis. CoRR 2019. paper
Daiki Matsunaga, Toyotaro Suzumura, Toshihiro Takahashi
-
Temporal Relational Ranking for Stock Prediction. TOIS 2019 . paper
Fuli Feng, Xiangnan He, Xiang Wang, Cheng Luo, Yiqun Liu, Tat-Seng Chua
-
Incorporating Corporation Relationship via Graph Convolutional Neural Networks for Stock Price Prediction. CIKM 2018 . paper
Yingmei Chen, Zhongyu Wei, Xuanjing Huang
-
Knowledge-Driven Event Embedding for Stock Prediction. COLING 2016 . paper
Xiao Ding, Yue Zhang, Ting Liu, Junwen Duan
-
HATS: A Hierarchical Graph Attention Network for Stock Movement Prediction. arxiv 2019 . paper
Raehyun Kim, Chan Ho So, Minbyul Jeong, Sanghoon Lee, Jinkyu Kim, Jaewoo Kang
-
Hierarchical Complementary Attention Network for Predicting Stock Price Movements with News . CIKM 18 . paper
Qikai Liu, Xiang Cheng, Sen Su, Shuguang Zhu
-
Stock Movement Prediction from Tweets and Historical Prices . ACL 2018 . paper
Yumo Xu, Shay B. Cohen
more
-
What You Say and How You Say It Matters: Predicting Financial Risk Using Verbal and Vocal Cues . ACL 2019 . paper
Yu Qin, Yi Yang
-
Listening to Chaotic Whispers: A Deep Learning Framework for News-oriented Stock Trend Prediction . WSDM 2018 . paper
Ziniu Hu, Weiqing Liu, Jiang Bian, Xuanzhe Liu
-
Enhancing Stock Movement Prediction with Adversarial Training . IJCAI 2019 . paper
Fuli Feng, Huimin Chen, Xiangnan He, Ji Ding, Maosong Sun, Tat-Seng Chua
-
Multi-task Recurrent Neural Networks and Higher-order Markov Random Fields for Stock Price Movement Prediction . KDD 2019 . paper
Chang Li (School of Computer Science University of Sydney);Dongjin Song ( Capital Market CRC);Dacheng Tao (NEC);
-
Stock Price Prediction via Discovering Multi-Frequency Trading Patterns . KDD 2017 . paper
Liheng Zhang, Charu C. Aggarwal, Guojun Qi
-
A Dual-Stage Attention-Based Recurrent Neural Network for Time Series Prediction . IJCAI 2017 . paper
Yao Qin, Dongjin Song, Haifeng Chen, Wei Cheng, Guofei Jiang, Garrison Cottrell
-
Modeling the Stock Relation with Graph Network for Overnight Stock Movement Prediction. IJCAI 2020: AI in FinTech . paper
Wei Li, Ruihan Bao, Keiko Harimoto, Deli Chen, Jingjing Xu, Qi Su
-
A Quantum-inspired Entropic Kernel for Multiple Financial Time Series Analysis. IJCAI 2020: AI in FinTech . paper
Lu Bai, Lixin Cui, Yue Wang, Yuhang Jiao, Edwin R. Hancock
-
Hierarchical Multi-Scale Gaussian Transformer for Stock Movement Prediction. IJCAI 2020: AI in FinTech . paper
Qianggang Ding, Sifan Wu, Hao Sun, Jiadong Guo, Jian Guo
-
Multi-scale Two-way Deep Neural Network for Stock Trend Prediction. IJCAI 2020: AI in FinTech . paper
Guang Liu, Yuzhao Mao, Qi Sun, Hailong Huang, Weiguo Gao, Xuan Li, Jianping Shen, Ruifan Li, Xiaojie Wang
Portfolio Selection
-
A Two-level Reinforcement Learning Algorithm for Ambiguous Mean-variance Portfolio Selection Problem. IJCAI 2020: AI in FinTech . paper
Xin Huang, Duan Li
-
Financial Thought Experiment: A GAN-based Approach to Vast Robust Portfolio Selection. IJCAI 2020: AI in FinTech . paper
Chi Seng Pun, Lei Wang, Hoi Ying Wong
-
MAPS: Multi-Agent reinforcement learning-based Portfolio management System.. IJCAI 2020: AI in FinTech . paper
Jinho Lee, Raehyun Kim, Seok-Won Yi, Jaewoo Kang
-
Online Portfolio Selection with Cardinality Constraint and Transaction Costs based on Contextual Bandit. IJCAI 2020: AI in FinTech . paper
Mengying Zhu, Xiaolin Zheng, Yan Wang, Qianqiao Liang, Wenfang Zhang
-
RM-CVaR: Regularized Multiple β-CVaR Portfolio. IJCAI 2020: AI in FinTech . paper
Kei Nakagawa, Shuhei Noma, Masaya Abe
-
Relation-Aware Transformer for Portfolio Policy Learning. IJCAI 2020: AI in FinTech . paper
Ke Xu, Yifan Zhang, Deheng Ye, Peilin Zhao, Mingkui Tan
-
Vector Autoregressive Weighting Reversion Strategy for Online Portfolio Selection. IJCAI 2020: AI in FinTech . paper
Xia Cai
-
An End-to-End Optimal Trade Execution Framework based on Proximal Policy Optimization. IJCAI 2020: AI in FinTech . paper
Siyu Lin, Peter A. Beling
Risk Management
-
Financial Risk Analysis for SMEs with Graph-based Supply Chain Mining. IJCAI 2020: AI in FinTech . paper
Shuo Yang, Zhiqiang Zhang, Jun Zhou, Yang Wang, Wang Sun, Xingyu Zhong, Yanming Fang, Quan Yu, Yuan Qi
-
Federated Meta-Learning for Fraudulent Credit Card Detection. IJCAI 2020: AI in FinTech . paper
Wenbo Zheng, Lan Yan, Chao Gou, Fei-Yue Wang
-
The Behavioral Sign of Account Theft: Realizing Online Payment Fraud Alert. IJCAI 2020: AI in FinTech . paper
Cheng WANG
-
Phishing Scam Detection on Ethereum: Towards Financial Security for Blockchain Ecosystem. IJCAI 2020: AI in FinTech . paper
Weili Chen, Xiongfeng Guo, Zhiguang Chen, Zibin Zheng, Yutong Lu
-
Interpretable Multimodal Learning for Intelligent Regulation in Online Payment Systems. IJCAI 2020: AI in FinTech . paper
Shuoyao Wang, Diwei Zhu
-
Risk Guarantee Prediction in Networked-Loans. IJCAI 2020: AI in FinTech . paper
Dawei Cheng, Xiaoyang Wang, Ying Zhang, Liqing Zhang
-
Risk-Averse Trust Region Optimization for Reward-Volatility Reduction. IJCAI 2020: AI in FinTech . paper
Lorenzo Bisi, Luca Sabbioni, Edoardo Vittori, Matteo Papini, Marcello Restelli
-
Spotlighting Anomalies using Frequent Patterns. KDD 2017: Anomaly Detection in Finance . paper
Jaroslav Kuchař, Vojtěch Svátek
-
Collective Fraud Detection Capturing Inter-Transaction Dependency. KDD 2017: Anomaly Detection in Finance . paper
Bokai Cao, Mia Mao, Siim Viidu, Philip S. Yu
-
Automated System for Data Attribute Anomaly Detection. KDD 2017: Anomaly Detection in Finance . paper
Nalin Aggarwal, Alexander Statnikov, Chao Yuan
more
-
Sleuthing for adverse outcomes using anomaly detection. KDD 2017: Anomaly Detection in Finance . paper
Michelle Miller, Robert Cezeaux
-
Anomaly detection with density estimation trees. KDD 2017: Anomaly Detection in Finance . paper
Parikshit Ram, Alexander Gray
-
Binned Kernels for Anomaly Detection in Multi-timescale Data using Gaussian Processes. KDD 2017: Anomaly Detection in Finance . paper
Matthew van Adelsberg, Christian Schwantes
-
Ensemble-based Anomaly Detection Using Cooperative Agreement. KDD 2017: Anomaly Detection in Finance . paper
Rasha Kashef
-
Real-time anomaly detection system for time series at scale. KDD 2017: Anomaly Detection in Finance . paper
Ira Cohen, Meir Toledano, Yonatan Ben Simhon, Inbal Tadeski
-
PD-FDS: Purchase Density based Online Credit Card Fraud Detection System. KDD 2017: Anomaly Detection in Finance . paper
Youngjoon Ki, Ji Won Yoon
-
Deep Learning to Detect Treatment Fraud amongst Healthcare Providers. KDD 2017: Anomaly Detection in Finance . paper
Daniel Lasaga, Prakash Santhana
Finance NLP
-
Deep Semantic Compliance Advisor for Unstructured Document Compliance Checking. IJCAI 2020: AI in FinTech . paper
Honglei Guo, Bang An, Zhili Guo, Zhong Su
-
"The Squawk Bot": Joint Learning of Time Series and Text Data Modalities for Automated Financial Information Filtering. IJCAI 2020: AI in FinTech . paper
Xuan-Hong Dang, Syed Yousaf Shah, Petros Zerfos
-
A Unified Model for Financial Event Classification, Detection and Summarization. IJCAI 2020: AI in FinTech . paper
Quanzhi Li, Qiong Zhang
-
F-HMTC: Detecting Financial Events for Investment Decisions Based on Neural Hierarchical Multi-Label Text Classification. IJCAI 2020: AI in FinTech . paper
Xin Liang, Dawei Cheng, Fangzhou Yang, Yifeng Luo, Weining Qian, Aoying Zhou
-
Financial Risk Prediction with Multi-Round Q&A Attention Network. IJCAI 2020: AI in FinTech . paper
Zhen Ye, Yu Qin, Wei Xu
-
FinBERT: A Pre-trained Financial Language Representation Model for Financial Text Mining. IJCAI 2020: AI in FinTech . paper
Zhuang Liu, Degen Huang, Kaiyu Huang, Zhuang Li, Jun Zhao
-
Two-stage Behavior Cloning for Spoken Dialogue System in Debt Collection. IJCAI 2020: AI in FinTech . paper
Zihao Wang, Jia Liu, Hengbin Cui, Chunxiang Jin, Minghui Yang, Yafang Wang, Xiaolong Li, Renxin Mao
Blockchain
-
BitcoinHeist: Topological Data Analysis for Ransomware Prediction on the Bitcoin Blockchain. IJCAI 2020: AI in FinTech . paper
Cuneyt G. Akcora, Yitao Li, Yulia R. Gel, Murat Kantarcioglu
-
SEBF: A Single-Chain based Extension Model of Blockchain for Fintech. IJCAI 2020: AI in FinTech . paper
Yimu Ji, Weiheng Gu, Fei Chen, Xiaoying Xiao, Jing Sun, Shangdong Liu, Jing He, Yunyao Li, Kaixiang Zhang, Fen Mei, Fei Wu
-
Infochain: A Decentralized, Trustless and Transparent Oracle on Blockchain. IJCAI 2020: AI in FinTech . paper
Naman Goel, Cyril van Schreven, Aris Filos-Ratsikas, Boi Faltings
Market Maker
-
Market Manipulation: An Adversarial Learning Framework for Detection and Evasion. IJCAI 2020: AI in FinTech . paper
Xintong Wang, Michael P. Wellman
-
Data-Driven Market-Making via Model-Free Learning. IJCAI 2020: AI in FinTech . paper
Yueyang Zhong, YeeMan Bergstrom, Amy Ward
-
Robust Market Making via Adversarial Reinforcement Learning. IJCAI 2020: AI in FinTech . paper
Thomas Spooner, Rahul Savani
Others
-
IGNITE: A Minimax Game Toward Learning Individual Treatment Effects from Networked Observational Data. IJCAI 2020: AI in FinTech . paper
Ruocheng Guo, Jundong Li, Yichuan Li, K. Selçuk Candan, Adrienne Raglin, Huan Liu
-
Task-Based Learning via Task-Oriented Prediction Network with Applications in Finance. IJCAI 2020: AI in FinTech . paper
Di Chen, Yada Zhu, Xiaodong Cui, Carla P. Gomes
-
WATTNet: Learning to Trade FX via Hierarchical Spatio-Temporal Representation of Highly Multivariate Time Series. IJCAI 2020: AI in FinTech . paper
Michael Poli, Jinkyoo Park, Ilija Ilievski
Book
-
The Econometrics of Financial Markets
John Y. Campbell, Andrew W. Lo, A. Craig Mackinlay
-
Advances in Financial Machine Learning
Marcos Lopez de Prado
-
Financial Decisions and Markets: A Course in Asset Pricing
J. Campbell
Disscussion Group
对于AI+Finance方向感兴趣的童鞋,欢迎扫描下面的二维码学习交流: