A comprehensive survey on deep neural networks for stock market: The need, challenges, and future directions

A Thakkar, K Chaudhari - Expert Systems with Applications, 2021 - Elsevier
The stock market has been an attractive field for a large number of organizers and investors
to derive useful predictions. Fundamental knowledge of stock market can be utilised with …

Review of recent trends in optimization techniques for plug-in hybrid, and electric vehicle charging infrastructures

I Rahman, PM Vasant, BSM Singh… - … and Sustainable Energy …, 2016 - Elsevier
For the consideration of environmental aspects of the personal transportation, electric
vehicle (EV) and plug-in hybrid electric vehicle (PHEV) has the prospective solution …

Robustness of LSTM neural networks for multi-step forecasting of chaotic time series

M Sangiorgio, F Dercole - Chaos, Solitons & Fractals, 2020 - Elsevier
Recurrent neurons (and in particular LSTM cells) demonstrated to be efficient when used as
basic blocks to build sequence to sequence architectures, which represent the state-of-the …

Recurrent marked temporal point processes: Embedding event history to vector

N Du, H Dai, R Trivedi, U Upadhyay… - Proceedings of the …, 2016 - dl.acm.org
Large volumes of event data are becoming increasingly available in a wide variety of
applications, such as healthcare analytics, smart cities and social network analysis. The …

Time series analysis and long short-term memory neural network to predict landslide displacement

B Yang, K Yin, S Lacasse, Z Liu - Landslides, 2019 - Springer
A good prediction of landslide displacement is an essential component for implementing an
early warning system. In the Three Gorges Reservoir Area (TGRA), many landslides deform …

Recent advances in neuro-fuzzy system: A survey

KV Shihabudheen, GN Pillai - Knowledge-Based Systems, 2018 - Elsevier
Neuro-fuzzy systems have attracted the growing interest of researchers in various scientific
and engineering areas due to its effective learning and reasoning capabilities. The neuro …

Modeling the intensity function of point process via recurrent neural networks

S Xiao, J Yan, X Yang, H Zha, S Chu - Proceedings of the AAAI …, 2017 - ojs.aaai.org
Event sequence, asynchronously generated with random timestamp, is ubiquitous among
applications. The precise and arbitrary timestamp can carry important clues about the …

A survey on machine-learning techniques in cognitive radios

M Bkassiny, Y Li, SK Jayaweera - … Communications Surveys & …, 2012 - ieeexplore.ieee.org
In this survey paper, we characterize the learning problem in cognitive radios (CRs) and
state the importance of artificial intelligence in achieving real cognitive communications …

Time series forecasting using LSTM networks: A symbolic approach

S Elsworth, S Güttel - arXiv preprint arXiv:2003.05672, 2020 - arxiv.org
Machine learning methods trained on raw numerical time series data exhibit fundamental
limitations such as a high sensitivity to the hyper parameters and even to the initialization of …

A novel approach to workload prediction using attention-based LSTM encoder-decoder network in cloud environment

Y Zhu, W Zhang, Y Chen, H Gao - EURASIP Journal on Wireless …, 2019 - Springer
Server workload in the form of cloud-end clusters is a key factor in server maintenance and
task scheduling. How to balance and optimize hardware resources and computation …