Diversity in Machine Learning
Zhiqiang Gong, Ping Zhong, Weidong Hu

TL;DR
This paper systematically reviews how diversity in data, models, and inference enhances machine learning performance across various applications, highlighting current methods, benefits, and future challenges.
Contribution
It provides a comprehensive survey of diversification techniques in machine learning, covering data, model, and inference diversity, and discusses their impact on different real-world tasks.
Findings
Diversity improves discriminative power of training data.
Model diversity captures unique or complementary information.
Inference diversity offers multiple plausible solutions.
Abstract
Machine learning methods have achieved good performance and been widely applied in various real-world applications. They can learn the model adaptively and be better fit for special requirements of different tasks. Generally, a good machine learning system is composed of plentiful training data, a good model training process, and an accurate inference. Many factors can affect the performance of the machine learning process, among which the diversity of the machine learning process is an important one. The diversity can help each procedure to guarantee a total good machine learning: diversity of the training data ensures that the training data can provide more discriminative information for the model, diversity of the learned model (diversity in parameters of each model or diversity among different base models) makes each parameter/model capture unique or complement information and the…
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