1 research outputs found
Diversity in Machine Learning
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 diversity in inference can
provide multiple choices each of which corresponds to a specific plausible
local optimal result. Even though the diversity plays an important role in
machine learning process, there is no systematical analysis of the
diversification in machine learning system. In this paper, we systematically
summarize the methods to make data diversification, model diversification, and
inference diversification in the machine learning process, respectively. In
addition, the typical applications where the diversity technology improved the
machine learning performance have been surveyed, including the remote sensing
imaging tasks, machine translation, camera relocalization, image segmentation,
object detection, topic modeling, and others. Finally, we discuss some
challenges of the diversity technology in machine learning and point out some
directions in future work.Comment: Accepted by IEEE Acces