Partial Correlation-Based Attention for Multivariate Time Series Forecasting
2020 ◽
Vol 34
(10)
◽
pp. 13720-13721
Keyword(s):
A multivariate time-series forecasting has great potentials in various domains. However, it is challenging to find dependency structure among the time-series variables and appropriate time-lags for each variable, which change dynamically over time. In this study, I suggest partial correlation-based attention mechanism which overcomes the shortcomings of existing pair-wise comparisons-based attention mechanisms. Moreover, I propose data-driven series-wise multi-resolution convolutional layers to represent the input time-series data for domain agnostic learning.
2018 ◽
Vol 15
(147)
◽
pp. 20180695
◽
2020 ◽
pp. 115-123
Keyword(s):
2021 ◽
2014 ◽
Vol 49
(1)
◽
pp. 67-77
◽
Keyword(s):