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A machine learning based approach to classify autism with optimum behavior sets

机译:基于机器学习的方法以最佳行为集对自闭症进行分类

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Machine Learning based behavioural analytics emphasis the need to develop accurate prediction models for detecting the risk of autism faster than the traditional diagnostic methods. Quality of prediction rely on the accuracy of the supplied dataset and the machine learning model.To improve accuracy of prediction, dimensionality reduction with feature selection is applied to eliminate noisy features from a dataset. In this work an ASD diagnosis dataset with 21 features obtained from UCI machine learning repository is experimented with swarm intelligence based binay firefly feature selection wrapper. The alternative hypothesis of the experiment claims that it is possible for a machine learning model to achieve a better classification accuracy with minimum feature subsets.Using Swarm intelligence based single-objective binary firefly feature selection wrapper it is found that 10 features among 21 features of ASD dataset are sufficient to distinguish between ASD and non-ASD patients.The results obtained with our approach justifies the hypothesis by producing an average accuracy in the range of 92.12%-97.95% with optimum feature subsets which is approximately equal to the average accuracy produced by entire ASD diagnosis dataset.
机译:基于机器学习的行为分析强调需要开发准确的预测模型,以比传统的诊断方法更快地检测自闭症的风险。预测的质量取决于所提供的数据集和机器学习模型的准确性。为了提高预测的准确性,通过使用特征选择降低维数来消除数据集中的嘈杂特征。在这项工作中,使用基于群体智能的Binay萤火虫特征选择包装器对从UCI机器学习存储库中获得的具有21个特征的ASD诊断数据集进行了实验。实验的另一种假设认为,机器学习模型可以以最少的特征子集实现更好的分类精度。使用基于Swarm智能的单目标二进制萤火虫特征选择包装器,发现了ASD 21个特征中的10个特征数据集足以区分ASD和非ASD患者。我们的方法获得的结果通过产生92.12%-97.95%范围内的平均准确度以及最佳特征子集来证明这一假设是正确的,该子集的最佳准确度大约等于整个ASD诊断数据集。

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