MLD3 / Deep-Residual-Time-Series-Forecasting

Implementation of architecture for 2020 OhioT1D competition submission. Includes weights from pre-training runs with Tidepool data set. Baseline architecture is N-BEATS, modifications include RNN/shared output blocks, additional Losses. https://folk.idi.ntnu.no/kerstinb/kdh/KDH_ECAI_2020_Proceedings.pdf

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Deep Residual Time Series Forecasting

Implementation of architecture for our 2020 OhioT1D competition submission. Includes weights from pre-training runs with Tidepool data set.

The baseline architecture is N-BEATS (https://arxiv.org/abs/1905.10437), modifications include using blocks with an RNN and shared outputs, the use of additional variables, and additional Losses.

drtf.py contains all code for analysis

convert_data.py converts raw competition data into a format suitable for drtf.py to read

PRETRAINS.txt contains links to download pretraining weights derived from the tidepool database (https://www.tidepool.org/)

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Implementation of architecture for 2020 OhioT1D competition submission. Includes weights from pre-training runs with Tidepool data set. Baseline architecture is N-BEATS, modifications include RNN/shared output blocks, additional Losses. https://folk.idi.ntnu.no/kerstinb/kdh/KDH_ECAI_2020_Proceedings.pdf


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