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arxiv: 1811.02361 · v1 · pith:GLLAVMM7new · submitted 2018-11-06 · 💻 cs.LG · stat.ML

Kalman Filter Modifier for Neural Networks in Non-stationary Environments

classification 💻 cs.LG stat.ML
keywords learningenvironmentmodelnon-stationaryaccuracydecreasesenvironmentsfilter
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Learning in a non-stationary environment is an inevitable problem when applying machine learning algorithm to real world environment. Learning new tasks without forgetting the previous knowledge is a challenge issue in machine learning. We propose a Kalman Filter based modifier to maintain the performance of Neural Network models under non-stationary environments. The result shows that our proposed model can preserve the key information and adapts better to the changes. The accuracy of proposed model decreases by 0.4% in our experiments, while the accuracy of conventional model decreases by 90% in the drifts environment.

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