Title
Adding reliability to ELM forecasts by confidence intervals.
Abstract
This paper proposes a way of providing transparent and interpretable results for ELM models by adding confidence intervals to the predicted outputs. In supervised learning, outputs are often random variables because they may depend on information that is unavailable, due to the presence of noise, or the projection function itself may be stochastic. Probability distribution of outputs is input dependent, and the observed output values are samples from that distribution. However, ELM predicts deterministic outputs. The proposed method addresses that problem by estimating predictive Confidence Intervals (CIs) at a confidence level α, such that random output values fall between these intervals with probability α.Assuming that the outputs are normally distributed, only a standard deviation is needed to compute CIs of a predicted output (the predicted output itself is a mean). Our method provides CIs for ELM predictions by estimating standard deviation of a random output for a particular input sample. It shows good results on both toy and real skin segmentation datasets, and compares well with the existing Confidence-weighted ELM methods. On a toy dataset, the predicted CIs accurately represent the variable variance of outputs. On a real dataset, CIs improve the precision of a classification task at a cost of recall.
Year
DOI
Venue
2017
10.1016/j.neucom.2016.09.021
Neurocomputing
Keywords
Field
DocType
Extreme learning machines,Confidence,Confidence interval,Regression,Skin segmentation,Big data
Random variable,Regression,Segmentation,Projection (set theory),Supervised learning,Probability distribution,Artificial intelligence,Confidence interval,Statistics,Standard deviation,Mathematics,Machine learning
Journal
Volume
Issue
ISSN
219
C
0925-2312
Citations 
PageRank 
References 
1
0.35
16
Authors
7
Name
Order
Citations
PageRank
Anton Akusok114310.72
Andrey Gritsenko253.45
Yoan Miche3105454.56
Kaj-Mikael Björk414816.40
Rui Nian550.75
Paula Lauren6122.50
A. Lendasse7716.26