常用监督学习算法的应用分析

Palak Narula
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引用次数: 0

摘要

监督学习是机器学习的一个分支,其中机器配备有标记数据,用于创建复杂的模型,可以预测相关未标记数据的标签。该领域的文献提供了广泛的算法和应用。然而,对这些算法进行比较的研究有限,这使得初学者很难选择最有效的算法并对其进行调整。本研究旨在分析常用的监督学习算法在样本数据集上的性能以及超参数调优的影响。在研究中,将每种算法应用于数据集,并分析验证曲线(对于超参数)和学习曲线,以了解算法的灵敏度和性能。该研究可以指导新研究者更好地理解、比较和选择适合其应用的有监督学习算法。此外,他们还可以调整超参数以提高效率,并创建算法集合以提高准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of Common Supervised Learning Algorithms Through Application
Supervised learning is a branch of machine learning wherein the machine is equipped with labelled data which it uses to create sophisticated models that can predict the labels of related unlabelled data.the literature on the field offers a wide spectrum of algorithms and applications.however, there is limited research available to compare the algorithms making it difficult for beginners to choose the most efficient algorithm and tune it for their application. This research aims to analyse the performance of common supervised learning algorithms when applied to sample datasets along with the effect of hyper-parameter tuning.for the research, each algorithm is applied to the datasets and the validation curves (for the hyper-parameters) and learning curves are analysed to understand the sensitivity and performance of the algorithms.the research can guide new researchers aiming to apply supervised learning algorithm to better understand, compare and select the appropriate algorithm for their application. Additionally, they can also tune the hyper-parameters for improved efficiency and create ensemble of algorithms for enhancing accuracy.
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