Roshan KaloniTejas R NayakMitanshu SankheMr. Govind Wakure
Abstract: Extreme Learning Machine (ELM) is a learning method for single-hidden layer feedforward neural network (SLFN) training. The ELM strategy speeds up learning by generating input weights and biases for hidden nodes at random rather than modifying network parameters, making it much faster than the standard gradient-based approach. In this project, an ELM optimized by Hybrid Particle Swarm Optimization approach is presented to optimize the input weights and hidden biases for ELM. We will analyze and obtain results for benchmark datasets. The Optimized Extreme Learning Machine algorithm's output is compared to publicly available data. Later we will compare different algorithms and check which one gives better output metrics. Keywords: ELM, SLFN, PSO, Gradient-based approach, Optimization
Tiago MatiasRui AraújoCarlos Henggeler AntunesDulce Gabriel
Ibtissame MansouryDounia El BourakadiAli YahyaouyJaouad Boumhidi
Qiang ZhangHongxin LiChangnian LiuWei Hu