Houping Xiao, Jing Gao, et al.
SDM 2017
Classification is an important data analysis tool that uses a model built from historical data to predict class labels for new observations. More and more applications are featuring data streams, rather than finite stored data sets, which are a challenge for traditional classification algorithms. Concept drifts and skewed distributions, two common properties of data stream applications, make the task of learning in streams difficult. The authors aim to develop a new approach to classify skewed data streams that uses an ensemble of models to match the distribution over under-samples of negatives and repeated samples of positives. © 2008 IEEE.
Houping Xiao, Jing Gao, et al.
SDM 2017
Kun Zhang, Wei Fan
KAIS
Rita Chattopadhyay, Jieping Ye, et al.
KDD 2011
Qi Liu, Han Zhou, et al.
PLoS ONE