no code implementations • 16 Apr 2025 • Dikshit Chauhan, Shivani, P. N. Suganthan
Nature has long inspired the development of swarm intelligence (SI), a key branch of artificial intelligence that models collective behaviors observed in biological systems for solving complex optimization problems.
1 code implementation • 8 Oct 2024 • A. Quadir, M. Sajid, Mushir Akhtar, M. Tanveer, P. N. Suganthan
Further, we employ twin support vector machine (TSVM) in the RVFL space for classification.
no code implementations • 18 Jul 2024 • Ruobin Gao, Maohan Liang, Heng Dong, Xuewen Luo, P. N. Suganthan
This paper comprehensively reviews recent advances in underwater acoustic signal denoising, an area critical for improving the reliability and clarity of underwater communication and monitoring systems.
1 code implementation • 2 Jun 2024 • M. Sajid, M. Tanveer, P. N. Suganthan
Within the framework of edRVFL-FIS, each base model utilizes the original, hidden layer and defuzzified features to make predictions.
1 code implementation • 19 Feb 2024 • Zhongzheng Qiao, Quang Pham, Zhen Cao, Hoang H Le, P. N. Suganthan, Xudong Jiang, Ramasamy Savitha
Real-world environments are inherently non-stationary, frequently introducing new classes over time.
1 code implementation • IEEE Transactions on Fuzzy Systems 2024 • M. Sajid, A. K. Malik, M. Tanveer, P. N. Suganthan
The resulting fuzzified features then navigate a hidden layer through random projection as well as yielding defuzzified values via defuzzification.
no code implementations • 25 Aug 2023 • Yanjie Song, Yutong Wu, Yangyang Guo, Ran Yan, P. N. Suganthan, Yue Zhang, Witold Pedrycz, Swagatam Das, Rammohan Mallipeddi, Oladayo Solomon Ajani. Qiang Feng
Reinforcement learning (RL) integrated as a component in the EA framework has demonstrated superior performance in recent years.
no code implementations • 13 Apr 2023 • M. A. Ganaie, M. Tanveer, I. Beheshti, N. Ahmad, P. N. Suganthan
Thus, oblique decision trees generate the oblique hyperplane for splitting the data at each non-leaf node.
no code implementations • 8 Apr 2023 • Yangyang Guo, Hao Wang, Lei He, Witold Pedrycz, P. N. Suganthan, Yanjie Song
The RL-GP adopts the ensemble population strategies.
no code implementations • 5 Mar 2023 • Yanjie Song, P. N. Suganthan, Witold Pedrycz, Junwei Ou, Yongming He, Yingwu Chen, Yutong Wu
By offering guidance for future scientific research and engineering applications, this survey significantly contributes to the advancement of ERL.
no code implementations • 14 Mar 2022 • Ruilin Li, Ruobin Gao, P. N. Suganthan
Specifically, the performance of different decomposition methods and ensemble modes was further compared.
no code implementations • 13 Feb 2022 • A. K. Malik, Ruobin Gao, M. A. Ganaie, M. Tanveer, P. N. Suganthan
To overcome these issues, randomization based neural networks such as random vector functional link (RVFL) network have been proposed.
no code implementations • 7 Jan 2022 • Sujanya Suresh, Savitha Ramasamy, P. N. Suganthan, Cheryl Sze Yin Wong
Knowledge tracing is the task of predicting a learner's future performance based on the history of the learner's performance.
no code implementations • CVPR 2022 • Minghui Hu, Yujie Wang, Tat-Jen Cham, Jianfei Yang, P. N. Suganthan
We show that with the help of a content-rich discrete visual codebook from VQ-VAE, the discrete diffusion model can also generate high fidelity images with global context, which compensates for the deficiency of the classical autoregressive model along pixel space.
no code implementations • 3 Nov 2021 • M. A. Ganaie, M. Tanveer, P. N. Suganthan, V. Snasel
The oblique double random forest models are multivariate decision trees.
no code implementations • 30 Jul 2021 • Ruobin Gao, Liang Du, P. N. Suganthan, Qin Zhou, Kum Fai Yuen
Electricity load forecasting is crucial for the power systems' planning and maintenance.
no code implementations • 6 Apr 2021 • M. A. Ganaie, Minghui Hu, A. K. Malik, M. Tanveer, P. N. Suganthan
Deep ensemble learning models combine the advantages of both the deep learning models as well as the ensemble learning such that the final model has better generalization performance.
no code implementations • 4 Oct 2019 • Rakesh Katuwal, P. N. Suganthan
Specifically, we introduce direct connections (feature reuse) from preceding layers to the fore layers of the network as in the original RVFL network.
no code implementations • 30 Jun 2019 • Rakesh Katuwal, P. N. Suganthan, M. Tanveer
The parameters of the hidden layers of the dRVFL are randomly generated within a suitable range and kept fixed while the output weights are computed using the closed form solution as in a standard RVFL network.
no code implementations • 13 Jul 2018 • Yingyu Zhang, Yuanzhen Li, Quan-Ke Panb, P. N. Suganthan
Recent studies show that a well designed combination of the decomposition method and the domination method can improve the performance , i. e., convergence and diversity, of a MOEA.
no code implementations • 5 Feb 2018 • Rakesh Katuwal, P. N. Suganthan
In this paper, we first present a new variant of oblique decision tree based on a linear classifier, then construct an ensemble classifier based on the fusion of a fast neural network, random vector functional link network and oblique decision trees.