Details of the HypertTS update are as follows:
-
Adapted to TensorFlow versions
2.11.0
and above. -
Fixed the issue of unstable random seed in NAS mode.
-
Fixed handling of
int
variables in DL mode. -
Updated CI.
-
Fixed the unordered indexing problem in the
arrow_head
data loading. -
Refactored the identification of discrete variables in DL mode.
-
Added the
Lion
optimizer. -
Corrected variable name spelling error,
HybirdRNN
->HybridRNN
. -
Corrected the
trend
parameter in theVAR
model. -
Adjusted the field of view length for evaluation segmentation in forecast tasks.
-
Added seasonal analysis.
-
Fixed the issue of truncating negative values to 0 in forecast tasks.
-
Updated
hypernets
andnumpy
versions. -
Supported the
AdamW
optimizer (tensorflow >= 2.14.0
). -
Adjusted the legend margin in visualizations.
-
Add
TimeSeriesForestClassifier
andIndividualTDEClassifier
built-in algorithm for stats mode classification. -
sktime
dependencies are removed and replaced with built-in algorithm support. If need to useKNN
classification, please manually installsktime
. -
Thanks to @NatLee for his contributions to hyperts.