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Artificial Immune System: An Effective Way to Reduce Model Overfitting

机译:人工免疫系统:减少模型过度拟合的有效方法

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Artificial immune system (AIS) algorithms have been successfully applied in the domain of supervised learning. The main objective of supervised learning algorithms is to generate a robust and generalized model that can work well not only on seen data (training data) but also predict well on unseen data (test data). One of the main issues with supervised learning approaches is model overfitting. Model overfitting occurs when there is insufficient training data, or training data is too simple to cover the structural complexity of the domain being modelled. In overfitting, the final model works well on training data because the model is specialized on training data but provides significantly inaccurate predictions on test data due to the model's lack of generalization capabilities. In this paper, we propose a novel approach to address this model overfitting that is inspired by the processes of natural immune systems. Here, we propose that the issue of overfitting can be addressed by generating more data samples by analyzing existing scarce data. The proposed approach is tested on benchmarked datasets using two different classifiers, namely, artificial neural networks and C4.5 (decision tree algorithm).
机译:人工免疫系统(AIS)算法已成功应用于监督学习领域。监督学习算法的主要目标是生成一个健壮且通用的模型,该模型不仅可以在可见数据(训练数据)上很好地工作,而且可以在看不见数据(测试数据)上很好地预测。监督学习方法的主要问题之一是模型过度拟合。当训练数据不足或训练数据过于简单以致无法覆盖要建模的域的结构复杂性时,就会发生模型过度拟合。在过度拟合中,最终模型在训练数据上效果很好,因为该模型专用于训练数据,但由于该模型缺乏归纳能力,因此对测试数据的预测非常不准确。在本文中,我们提出了一种新颖的方法来解决这种模型过度拟合的问题,这种方法受到自然免疫系统过程的启发。在这里,我们建议可以通过分析现有的稀缺数据来生成更多数据样本来解决过度拟合的问题。使用两种不同的分类器,即人工神经网络和C4.5(决策树算法),对基准数据集进行了测试。

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