Classification Using Extreme Learning Machine
Keywords:
classification, neural network, extreme learning machine, moore penroseAbstract
Extreme Learning Machine (ELM) has become popular for solving classification problem due to its fast speed. The performance of ELM often relies on random input hidden node parameters. Neural network also uses artificial intelligence by adjusting weights and minimizing the error. The learning speed of feed forward neural network is very slow. Due to two slow gradient-based learning algorithms and iterative tuning of various parameters. This paper presents a comparative study of back propagation algorithm and an extremely fast ELM technique for single layer feed forward neural network which takes random hidden nodes and determines the output weights without iterative tuning. In theory, this algorithm tends to provides better performance at extremely fast learning speed.
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