Price graphs: Utilizing the structural information of financial time
series for stock prediction
- URL: http://arxiv.org/abs/2106.02522v1
- Date: Fri, 4 Jun 2021 14:46:08 GMT
- Title: Price graphs: Utilizing the structural information of financial time
series for stock prediction
- Authors: Junran Wu, Ke Xu, Xueyuan Chen, Shangzhe Li and Jichang Zhao
- Abstract summary: We propose a novel framework to address both issues regarding stock prediction.
In terms of transforming time series into complex networks, we convert market price series into graphs.
We take graph embeddings to represent the associations among temporal points as the prediction model inputs.
- Score: 4.4707451544733905
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Stock prediction, with the purpose of forecasting the future price trends of
stocks, is crucial for maximizing profits from stock investments. While great
research efforts have been devoted to exploiting deep neural networks for
improved stock prediction, the existing studies still suffer from two major
issues. First, the long-range dependencies in time series are not sufficiently
captured. Second, the chaotic property of financial time series fundamentally
lowers prediction performance. In this study, we propose a novel framework to
address both issues regarding stock prediction. Specifically, in terms of
transforming time series into complex networks, we convert market price series
into graphs. Then, structural information, referring to associations among
temporal points and the node weights, is extracted from the mapped graphs to
resolve the problems regarding long-range dependencies and the chaotic
property. We take graph embeddings to represent the associations among temporal
points as the prediction model inputs. Node weights are used as a priori
knowledge to enhance the learning of temporal attention. The effectiveness of
our proposed framework is validated using real-world stock data, and our
approach obtains the best performance among several state-of-the-art
benchmarks. Moreover, in the conducted trading simulations, our framework
further obtains the highest cumulative profits. Our results supplement the
existing applications of complex network methods in the financial realm and
provide insightful implications for investment applications regarding decision
support in financial markets.
Related papers
- Loss Shaping Constraints for Long-Term Time Series Forecasting [79.3533114027664]
We present a Constrained Learning approach for long-term time series forecasting that respects a user-defined upper bound on the loss at each time-step.
We propose a practical Primal-Dual algorithm to tackle it, and aims to demonstrate that it exhibits competitive average performance in time series benchmarks, while shaping the errors across the predicted window.
arXiv Detail & Related papers (2024-02-14T18:20:44Z) - Financial Time-Series Forecasting: Towards Synergizing Performance And
Interpretability Within a Hybrid Machine Learning Approach [2.0213537170294793]
This paper propose a comparative study on hybrid machine learning algorithms and leverage on enhancing model interpretability.
For the interpretability, we carry out a systematic overview on the preprocessing techniques of time-series statistics, including decomposition, auto-correlational function, exponential triple forecasting, which aim to excavate latent relations and complex patterns appeared in the financial time-series forecasting.
arXiv Detail & Related papers (2023-12-31T16:38:32Z) - Diffusion Variational Autoencoder for Tackling Stochasticity in
Multi-Step Regression Stock Price Prediction [54.21695754082441]
Multi-step stock price prediction over a long-term horizon is crucial for forecasting its volatility.
Current solutions to multi-step stock price prediction are mostly designed for single-step, classification-based predictions.
We combine a deep hierarchical variational-autoencoder (VAE) and diffusion probabilistic techniques to do seq2seq stock prediction.
Our model is shown to outperform state-of-the-art solutions in terms of its prediction accuracy and variance.
arXiv Detail & Related papers (2023-08-18T16:21:15Z) - Temporal and Heterogeneous Graph Neural Network for Financial Time
Series Prediction [14.056579711850578]
We propose a temporal and heterogeneous graph neural network-based (THGNN) approach to learn the dynamic relations among price movements in financial time series.
We conduct extensive experiments on the stock market in the United States and China.
arXiv Detail & Related papers (2023-05-09T11:17:46Z) - Bayesian Bilinear Neural Network for Predicting the Mid-price Dynamics
in Limit-Order Book Markets [84.90242084523565]
Traditional time-series econometric methods often appear incapable of capturing the true complexity of the multi-level interactions driving the price dynamics.
By adopting a state-of-the-art second-order optimization algorithm, we train a Bayesian bilinear neural network with temporal attention.
By addressing the use of predictive distributions to analyze errors and uncertainties associated with the estimated parameters and model forecasts, we thoroughly compare our Bayesian model with traditional ML alternatives.
arXiv Detail & Related papers (2022-03-07T18:59:54Z) - GCNET: graph-based prediction of stock price movement using graph
convolutional network [8.122270502556372]
GCNET is a general prediction framework that can be applied for the prediction of the price fluctuations for any set of interacting stocks based on their historical data.
Our experiments and evaluations on sets of stocks from S&P500 and NASDAQ show that GCNET significantly improves the performance of SOTA in terms of accuracy and MCC measures.
arXiv Detail & Related papers (2022-02-19T16:13:44Z) - Multi-head Temporal Attention-Augmented Bilinear Network for Financial
time series prediction [77.57991021445959]
We propose a neural layer based on the ideas of temporal attention and multi-head attention to extend the capability of the underlying neural network.
The effectiveness of our approach is validated using large-scale limit-order book market data.
arXiv Detail & Related papers (2022-01-14T14:02:19Z) - Low-Rank Temporal Attention-Augmented Bilinear Network for financial
time-series forecasting [93.73198973454944]
Deep learning models have led to significant performance improvements in many problems coming from different domains, including prediction problems of financial time-series data.
The Temporal Attention-Augmented Bilinear network was recently proposed as an efficient and high-performing model for Limit Order Book time-series forecasting.
In this paper, we propose a low-rank tensor approximation of the model to further reduce the number of trainable parameters and increase its speed.
arXiv Detail & Related papers (2021-07-05T10:15:23Z) - FinGAT: Financial Graph Attention Networks for Recommending Top-K
Profitable Stocks [10.302225525539006]
In existing approaches on modeling time series of stock prices, the relationships among stocks and sectors are either neglected or pre-defined.
We propose a novel deep learning-based model, Financial Graph Attention Networks (FinGAT), to tackle the task.
Experiments conducted on Taiwan Stock, S&P 500, and NASDAQ datasets exhibit remarkable recommendation performance.
arXiv Detail & Related papers (2021-06-18T14:51:14Z) - Deep Stock Predictions [58.720142291102135]
We consider the design of a trading strategy that performs portfolio optimization using Long Short Term Memory (LSTM) neural networks.
We then customize the loss function used to train the LSTM to increase the profit earned.
We find the LSTM model with the customized loss function to have an improved performance in the training bot over a regressive baseline such as ARIMA.
arXiv Detail & Related papers (2020-06-08T23:37:47Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.