2021
DOI: 10.36227/techrxiv.14546022
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Investigation of weight initialization using Fibonacci Sequence on the performance of neural networks*

Abstract: <div>Initializing weights are important for fast convergence and performance improvement of Artificial Neural Network models. This study proposes a heuristic method to initialize weights for Neural Network with Fibonacci sequence. Experiments have been carried out with different network structures and datasets and results have been compared with other initialization techniques such as Zero, Random, Xavier and He. It has been observed that for small sized datasets, Fibonacci initialization technique repor… Show more

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