An Ensemble Method for the Analysis of Small Biomedical Data based on a Neural Network Without Training

I. Izonin, R.O. Tkachenko, O.L. Semchyshyn
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Abstract

To enhance the accuracy of analyzing short datasets, this paper proposes a novel ensemble learning method that utilizes a single the General Regression Neural Network (GRNN). The core idea behind this method is the synthesis of additional pairs of vectors with different signs around each current vector from the test sample. This is achieved by employing the method of random symmetric perturbations and averaging the prediction outputs for the current vector and all synthesized vectors in its vicinity. Implementing this approach leads to a significant increase in prediction accuracy for short datasets. It achieves error compensation for each pair of addi-tional vectors with different signs and also for the overall prediction result of the current vector and all additional pairs of synthetic vectors created for it. The effectiveness of the proposed method is validated through modeling on a small real-world biomedical dataset, and the optimal parameters have been selected. Comparative analysis with existing GRNN-based me¬thods demonstrates a substantial improvement in accuracy.
基于无训练神经网络的小型生物医学数据分析集合方法
为了提高分析短数据集的准确性,本文提出了一种利用单一通用回归神经网络(GRNN)的新型集合学习方法。该方法的核心思想是在测试样本的每个当前向量周围合成具有不同符号的额外向量对。这是通过采用随机对称扰动的方法和平均当前向量及其附近所有合成向量的预测输出来实现的。采用这种方法可以显著提高短数据集的预测精度。它不仅能对每对不同符号的附加矢量进行误差补偿,还能对当前矢量和为其创建的所有附加合成矢量对的整体预测结果进行误差补偿。通过在一个小型真实生物医学数据集上建模,验证了所提方法的有效性,并选出了最佳参数。与现有的基于 GRNN 的方法进行的比较分析表明,该方法大大提高了准确性。
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