Abstract: We propose a generic framework for time-series forecasting called DeepTrace, which comprises of 5 model variants. These variants are constructed using two or more of three task specific components, namely, Convolutional Block, Recurrent Block and Linear Block, combined in a specific order. We also introduce a novel training methodology by using future contextual frames. However, these frames are dropped during the testing phase to verify the robustness of DeepTrace in real-world scenarios. We use an optimizer to offset the loss incurred due to the non-provision of future contextual frames. The genericness of the framework is tested by evaluating the performance on real-world time series datasets across diverse domains. We conducted substantial experiments that show the proposed framework outperforms the existing state-of-art methods.
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