Direct Versus Iterated Multi-Step Forecasting Of Glycaemia In Type 1 Diabetics Using Autoregressive Models

PHEALTH 2020: PROCEEDINGS OF THE 17TH INTERNATIONAL CONFERENCE ON WEARABLE MICRO AND NANO TECHNOLOGIES FOR PERSONALIZED HEALTH(2020)

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摘要
The paper compares two approaches to multi-step ahead glycaemia forecasting. While the direct approach uses a different model for each number of steps ahead, the iterative approach applies one one-step ahead model iteratively. Although it is well known that the iterative approach suffers from the error accumulation problem, there are no clear outcomes supporting a proper choice between those two methods. This paper provides such comparison for different ARX models and shows that the iterative approach outperformed the direct method for one-hour ahead (12-steps ahead) forecasting. Moreover, the classical linear ARX model outperformed more complex non-linear versions for training data covering one-month period.
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关键词
direct forecast, iterated forecast, type I diabetes, glycaemia, ARX model, blood glucose
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