基于机器学习的计算研究报告统计有效性和模型复杂性

B. Olorisade, P. Brereton, Péter András
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引用次数: 2

摘要

背景:统计有效性和模型复杂性是增强对计算模型的理解和正确评估的重要概念。然而,关于这些的信息在应用机器学习的出版物中经常缺失。目的:本研究的目的是显示提供细节的重要性,这些细节可以表明出版物中模型的统计有效性和复杂性。这是在使用机器学习技术的引文筛选自动化的背景下探索的。方法:我们建立了15个支持向量机(SVM)模型,每个模型都使用word2vec(平均词)特征和来自医疗保健研究和质量机构(AHRQ)药物评估审查计划(DERP)的15个审查主题的数据。结果:支持向量机发现word2vec特征是充分线性可分的,因此我们使用了线性核。在15个模型中的11个中,负面(大多数)类使用超过80%的训练数据作为支持向量(SVs),大约45%的正面训练数据。结论:在这种情况下,对SVs的探索表明,模型过于复杂,不超过训练向量的2%-5%(最好更少)的理想期望。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reporting Statistical Validity and Model Complexity in Machine Learning based Computational Studies
Background:: Statistical validity and model complexity are both important concepts to enhanced understanding and correctness assessment of computational models. However, information about these are often missing from publications applying machine learning. Aim: The aim of this study is to show the importance of providing details that can indicate statistical validity and complexity of models in publications. This is explored in the context of citation screening automation using machine learning techniques. Method: We built 15 Support Vector Machine (SVM) models, each developed using word2vec (average word) features --- and data for 15 review topics from the Drug Evaluation Review Program (DERP) of the Agency for Healthcare Research and Quality (AHRQ). Results: The word2vec features were found to be sufficiently linearly separable by the SVM and consequently we used the linear kernels. In 11 of the 15 models, the negative (majority) class used over 80% of its training data as support vectors (SVs) and approximately 45% of the positive training data. Conclusions: In this context, exploring the SVs revealed that the models are overly complex against ideal expectations of not more than 2%-5% (and preferably much less) of the training vectors.
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