Weight class prediction based on sparrow search algorithm optimised random forest model

Yuanming Sun
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Abstract

In this paper, we improve the traditional random forest model by optimising the random forest algorithm based on sparrow search algorithm and compare the effectiveness of the two models for weight class prediction. Initial exploration of the data revealed that age, height, weight and BMI play an important role in weight class prediction. Correlation analyses showed a strong correlation between age and BMI and weight class. The experimental results show that the random forest model optimised based on the sparrow search algorithm achieves 100% in prediction accuracy, which improves the accuracy by 1.2% compared with the traditional random forest algorithm, and has better prediction effect. The significance of this paper is that a random forest algorithm optimised based on the sparrow search algorithm is proposed and experimentally demonstrated to have better performance in weight class prediction. This is of great significance in the fields of weight management, health assessment, and disease risk assessment. In addition, this study demonstrates the value of data analysis and machine learning methods in solving real-world problems. In conclusion, this paper provides new ideas for further improvement and application of machine learning algorithms, and provides references and lessons for researchers in related fields.
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基于麻雀搜索算法优化随机森林模型的权重等级预测
本文通过优化基于麻雀搜索算法的随机森林算法,改进了传统的随机森林模型,并比较了两种模型在体重等级预测中的有效性。对数据的初步探索表明,年龄、身高、体重和体重指数在体重等级预测中起着重要作用。相关分析表明,年龄和体重指数与体重等级之间存在很强的相关性。实验结果表明,基于麻雀搜索算法优化的随机森林模型预测准确率达到 100%,与传统随机森林算法相比,准确率提高了 1.2%,预测效果更好。本文的意义在于提出了一种基于麻雀搜索算法优化的随机森林算法,并通过实验证明其在权重等级预测方面具有更好的性能。这在体重管理、健康评估和疾病风险评估领域具有重要意义。此外,本研究还证明了数据分析和机器学习方法在解决实际问题中的价值。总之,本文为进一步改进和应用机器学习算法提供了新思路,也为相关领域的研究人员提供了参考和借鉴。
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