Stock price prediction using a frequency decomposition based GRU transformer neural network
C Li, G Qian - Applied Sciences, 2022 - mdpi.com
Stock price prediction is crucial but also challenging in any trading system in stock markets.
Currently, family of recurrent neural networks (RNNs) have been widely used for stock …
Currently, family of recurrent neural networks (RNNs) have been widely used for stock …
Electricity price estimation using deep learning approaches: An empirical study on Turkish markets in normal and Covid-19 periods
This study aims to estimate the prices in the next 24 h with deep learning methods in the
Turkish electricity market. The model is based on hourly data for the period 2017–2021 …
Turkish electricity market. The model is based on hourly data for the period 2017–2021 …
CI-STHPAN: Pre-trained Attention Network for Stock Selection with Channel-Independent Spatio-Temporal Hypergraph
Quantitative stock selection is one of the most challenging FinTech tasks due to the non-
stationary dynamics and complex market dependencies. Existing studies rely on channel …
stationary dynamics and complex market dependencies. Existing studies rely on channel …
[PDF][PDF] Identifying selected diseases of leaves using deep learning and transfer learning models
A Mimi, SFT Zohura, M Ibrahim… - Machine Graphics & …, 2023 - bibliotekanauki.pl
Leaf diseases may harm plants in different ways, often causing reduced productivity and, at
times, lethal consequences. Detecting such diseases in a timely manner can help plant …
times, lethal consequences. Detecting such diseases in a timely manner can help plant …
[HTML][HTML] Analytic prediction for acceptable pricing in industry interaction with complex network evolution based on knowledge graph fusion
This paper proposes a trend prediction analysis method based on the evolution of
knowledge graph fusion for the analysis of price fluctuation trends with limited information …
knowledge graph fusion for the analysis of price fluctuation trends with limited information …
DAM: A Universal Dual Attention Mechanism for Multimodal Timeseries Cryptocurrency Trend Forecasting
In the distributed systems landscape, Blockchain has catalyzed the rise of cryptocurrencies,
merging enhanced security and decentralization with significant investment opportunities …
merging enhanced security and decentralization with significant investment opportunities …
DeepClair: Utilizing Market Forecasts for Effective Portfolio Selection
Utilizing market forecasts is pivotal in optimizing portfolio selection strategies. We introduce
DeepClair, a novel framework for portfolio selection. DeepClair leverages a transformer …
DeepClair, a novel framework for portfolio selection. DeepClair leverages a transformer …
Time Series Forecasting Model for E-commerce Store Sales Using FB-Prophet
M Alsaidi, A Alhindi - 2023 14th International Conference on …, 2023 - ieeexplore.ieee.org
Recently, there has been a huge increase in online sales. Therefore, increasing e-
commerce sales improves the quality of business sales. To increase the efficiency of this …
commerce sales improves the quality of business sales. To increase the efficiency of this …
Stock Price Prediction: A Time Series Analysis
F Juairiah, M Mahatabe, HB Jamal… - … on Computer and …, 2022 - ieeexplore.ieee.org
Predicting future stock volatility has always been a demanding chore for research studies.
Individuals around the world have long regarded the stock market as a substantial profit. A …
Individuals around the world have long regarded the stock market as a substantial profit. A …
HPMG-Transformer: HP Filter Multi-Scale Gaussian Transformer for Liquor Stock Movement Prediction
L Huang - IEEE Access, 2024 - ieeexplore.ieee.org
Predicting financial stock prices, which are complex, volatile, and nonlinear, poses a
significant challenge due to the multitude of influencing factors and inherent uncertainty in …
significant challenge due to the multitude of influencing factors and inherent uncertainty in …