Review of ML and AutoML solutions to forecast time-series data
Time-series forecasting is a significant discipline of data modeling where past observations
of the same variable are analyzed to predict the future values of the time series. Its …
of the same variable are analyzed to predict the future values of the time series. Its …
A review of time-series anomaly detection techniques: A step to future perspectives
Anomaly detection is a significant problem that has been studied in a broader spectrum of
research areas due to its diverse applications in different domains. Despite the usage of …
research areas due to its diverse applications in different domains. Despite the usage of …
Short-term stock market price trend prediction using a comprehensive deep learning system
J Shen, MO Shafiq - Journal of big Data, 2020 - Springer
In the era of big data, deep learning for predicting stock market prices and trends has
become even more popular than before. We collected 2 years of data from Chinese stock …
become even more popular than before. We collected 2 years of data from Chinese stock …
A reversible automatic selection normalization (RASN) deep network for predicting in the smart agriculture system
Due to the nonlinear modeling capabilities, deep learning prediction networks have become
widely used for smart agriculture. Because the sensing data has noise and complex …
widely used for smart agriculture. Because the sensing data has noise and complex …
S_I_LSTM: stock price prediction based on multiple data sources and sentiment analysis
S Wu, Y Liu, Z Zou, TH Weng - Connection Science, 2022 - Taylor & Francis
Stocks price prediction is a current hot spot with great promise and challenges. Recently,
there have been many stock price prediction methods. However, the prediction accuracy of …
there have been many stock price prediction methods. However, the prediction accuracy of …
A survey on safeguarding critical infrastructures: Attacks, AI security, and future directions
Technologies such as artificial intelligence (AI), blockchain, and the Internet of Things (IoT)
have converged in driving the next wave of digital revolution. Amalgamating the …
have converged in driving the next wave of digital revolution. Amalgamating the …
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 …
Stock Price prediction using LSTM and SVR
G Bathla - 2020 Sixth International Conference on Parallel …, 2020 - ieeexplore.ieee.org
Stock price movement is non-linear and complex. Several research works have been carried
out to predict stock prices. Traditional approaches such as Linear Regression and Support …
out to predict stock prices. Traditional approaches such as Linear Regression and Support …
Approaches and applications of early classification of time series: A review
Early classification of time series has been extensively studied for minimizing class
prediction delay in time-sensitive applications such as medical diagnostic and industrial …
prediction delay in time-sensitive applications such as medical diagnostic and industrial …
MapChain: A blockchain-based verifiable healthcare service management in IoT-based big data ecosystem
Internet of Things (IoT)-based Healthcare services, which are becoming more widespread
today, continuously generate huge amounts of data which is often called big data. Due to the …
today, continuously generate huge amounts of data which is often called big data. Due to the …