Stock Market Price Prediction: A Hybrid LSTM and Sequential
Self-Attention based Approach
- URL: http://arxiv.org/abs/2308.04419v1
- Date: Mon, 7 Aug 2023 14:21:05 GMT
- Title: Stock Market Price Prediction: A Hybrid LSTM and Sequential
Self-Attention based Approach
- Authors: Karan Pardeshi, Sukhpal Singh Gill, Ahmed M. Abdelmoniem
- Abstract summary: We propose a new model named Long Short-Term Memory (LSTM) with Sequential Self-Attention Mechanism (LSTM-SSAM)
We conduct extensive experiments on the three stock datasets: SBIN,BANK, and BANKBARODA.
The experimental results prove the effectiveness and feasibility of the proposed model compared to existing models.
- Score: 3.8154633976469086
- License: http://creativecommons.org/publicdomain/zero/1.0/
- Abstract: One of the most enticing research areas is the stock market, and projecting
stock prices may help investors profit by making the best decisions at the
correct time. Deep learning strategies have emerged as a critical technique in
the field of the financial market. The stock market is impacted due to two
aspects, one is the geo-political, social and global events on the bases of
which the price trends could be affected. Meanwhile, the second aspect purely
focuses on historical price trends and seasonality, allowing us to forecast
stock prices. In this paper, our aim is to focus on the second aspect and build
a model that predicts future prices with minimal errors. In order to provide
better prediction results of stock price, we propose a new model named Long
Short-Term Memory (LSTM) with Sequential Self-Attention Mechanism (LSTM-SSAM).
Finally, we conduct extensive experiments on the three stock datasets: SBIN,
HDFCBANK, and BANKBARODA. The experimental results prove the effectiveness and
feasibility of the proposed model compared to existing models. The experimental
findings demonstrate that the root-mean-squared error (RMSE), and R-square (R2)
evaluation indicators are giving the best results.
Related papers
- Predicting Stock Prices with FinBERT-LSTM: Integrating News Sentiment Analysis [2.7921137693344384]
We use deep learning networks, based on the history of stock prices and articles of financial, business, technical news that introduce market information to predict stock prices.
We developed a pre-trained NLP model known as FinBERT, designed to discern the sentiments within financial texts.
This model utilizes news categories related to the stock market structure hierarchy, namely market, industry, and stock related news categories, combined with the stock market's stock price situation in the previous week for prediction.
arXiv Detail & Related papers (2024-07-23T03:26:07Z) - Exploring Sectoral Profitability in the Indian Stock Market Using Deep Learning [0.0]
The study builds upon existing literature on stock price prediction methods, emphasizing the shift toward machine learning and deep learning approaches.
Using historical stock prices of 180 stocks across 18 sectors listed on the NSE, India, the LSTM model predicts future prices.
Results demonstrate the efficacy of the LSTM model in accurately predicting stock prices and informing investment decisions.
arXiv Detail & Related papers (2024-05-28T17:55:54Z) - 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) - HireVAE: An Online and Adaptive Factor Model Based on Hierarchical and
Regime-Switch VAE [113.47287249524008]
It is still an open question to build a factor model that can conduct stock prediction in an online and adaptive setting.
We propose the first deep learning based online and adaptive factor model, HireVAE, at the core of which is a hierarchical latent space that embeds the relationship between the market situation and stock-wise latent factors.
Across four commonly used real stock market benchmarks, the proposed HireVAE demonstrate superior performance in terms of active returns over previous methods.
arXiv Detail & Related papers (2023-06-05T12:58:13Z) - Can ChatGPT Forecast Stock Price Movements? Return Predictability and Large Language Models [51.3422222472898]
We document the capability of large language models (LLMs) like ChatGPT to predict stock price movements using news headlines.
We develop a theoretical model incorporating information capacity constraints, underreaction, limits-to-arbitrage, and LLMs.
arXiv Detail & Related papers (2023-04-15T19:22:37Z) - Univariate and Multivariate LSTM Model for Short-Term Stock Market
Prediction [1.6114012813668934]
This paper presents an LSTM model with two different input approaches for predicting the short-term stock prices of two Indian companies.
Ten years of historic data (2012-2021) is taken from the yahoo finance website to carry out analysis of proposed approaches.
arXiv Detail & Related papers (2022-05-08T07:01:12Z) - 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) - Stock Price Prediction Under Anomalous Circumstances [81.37657557441649]
This paper aims to capture the movement pattern of stock prices under anomalous circumstances.
We train ARIMA and LSTM models at the single-stock level, industry level, and general market level.
Based on 100 companies' stock prices in the period of 2016 to 2020, the models achieve an average prediction accuracy of 98%.
arXiv Detail & Related papers (2021-09-14T18:50:38Z) - Design and Analysis of Robust Deep Learning Models for Stock Price
Prediction [0.0]
Building predictive models for robust and accurate prediction of stock prices and stock price movement is a challenging research problem to solve.
This chapter proposes a collection of predictive regression models built on deep learning architecture for robust and precise prediction of the future prices of a stock listed in the diversified sectors in the National Stock Exchange (NSE) of India.
arXiv Detail & Related papers (2021-06-17T17:15:02Z) - Profitability Analysis in Stock Investment Using an LSTM-Based Deep
Learning Model [1.2891210250935146]
We present a deep learning-based regression model built on a long-and-short-term memory network (LSTM) network.
It extracts historical stock prices based on a stock's ticker name for a specified pair of start and end dates, and forecasts the future stock prices.
We deploy the model on 75 significant stocks chosen from 15 critical sectors of the Indian stock market.
arXiv Detail & Related papers (2021-04-06T11:09:51Z) - REST: Relational Event-driven Stock Trend Forecasting [76.08435590771357]
We propose a relational event-driven stock trend forecasting (REST) framework, which can address the shortcoming of existing methods.
To remedy the first shortcoming, we propose to model the stock context and learn the effect of event information on the stocks under different contexts.
To address the second shortcoming, we construct a stock graph and design a new propagation layer to propagate the effect of event information from related stocks.
arXiv Detail & Related papers (2021-02-15T07:22:09Z)
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.