Paper
28 July 2023 Prediction of Wordle player data based on BP neural network optimized by genetic algorithm
Jiaqi Liu, Yang Ma, Jinpeng Cheng, Xin Wu
Author Affiliations +
Proceedings Volume 12756, 3rd International Conference on Applied Mathematics, Modelling, and Intelligent Computing (CAMMIC 2023); 127563X (2023) https://doi.org/10.1117/12.2686750
Event: 2023 3rd International Conference on Applied Mathematics, Modelling and Intelligent Computing (CAMMIC 2023), 2023, Tangshan, China
Abstract
This article mainly uses the data provided by Wordle player to predict the distribution of score results for a certain word in the future. However, the scoring results have high uncertainty. There are many evaluation indicators and impact factors. In order to predict the results more accurately, this paper proposes a BP neural network data prediction model based on genetic algorithm optimization(GA BP algorithm). We introduce three factors: time, prevalence of each word and number of repeated letters. We determine the BP neural network topology, each parameter of BP and each parameter of GA, then train it. The data correlation between the training set, validation set, test set and overall results after training is derived and the result is good. The predicted result for the term EERIE on March 1, 2023 is: 0.00%, 2.06%, 16.21%, 32.95%, 28.50%, 15.78%, 4.48% from 1 to X in that order.
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Jiaqi Liu, Yang Ma, Jinpeng Cheng, and Xin Wu "Prediction of Wordle player data based on BP neural network optimized by genetic algorithm", Proc. SPIE 12756, 3rd International Conference on Applied Mathematics, Modelling, and Intelligent Computing (CAMMIC 2023), 127563X (28 July 2023); https://doi.org/10.1117/12.2686750
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KEYWORDS
Neural networks

Education and training

Data modeling

Genetic algorithms

Mathematical optimization

Machine learning

Neurons

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