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Releases: MattWillFlood/EntropyHub.jl

v2.0 Update

26 Apr 18:07
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Update to Website

v2.0.0

24 Apr 20:03
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EntropyHub v2.0.0

Diff since v1.0.1

v2.0

----- New multivariate methods -----

Five new multivariate entropy functions incorporating several method-specific variations

----- New multivariate multiscale methods -----

Two new multivariate multiscale entropy functions

----- Extra signal processing tools -----

WindowData() is a new function that allows users to segment data (univariate or multivariate time series) into windows with/without overlapping samples! This allows users to calculate entropy on subsequences of their data to perform analyses with greater time resolution.

Other little fixes...

----- Docs edits -----

  • Examples in the www.EntropyHub.xyz documentation were updated to match the latest package syntax.

v1.0.1

20 Apr 12:52
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v1.0.1

----- New Windowing Tool -----
A new function WindowData() has been added to allow users to calculate entropy within subsequence windows of their data.

v1.0.0

30 Mar 01:58
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Testing website deployment

v1.0.0

30 Mar 01:32
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Just a test to see if docs deploy...

v1.0.0

24 Mar 22:06
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EntropyHub v1.0.0

Diff since v0.2.0

v1.0
----- New entropy methods -----
Two new base entropy functions (and their multiscale versions) have been added:

Diversity Entropy
Range Entropy

----- New fuzzy membership functions -----
Several new fuzzy membership functions have been added to FuzzEn, XFuzzEn and FuzzEn2D to provide more options for mapping the degree of similarity between embedding vectors.
These include trapezoidal, triangular and gaussian, among others.
Further info on these membership functions can be found here.

----- Phase Permutation Entropy -----
A new variant - 'phase' permutation entropy - has been added to PermEn.
This method employs a hilbert transformation of the data sequence, based on the methods outlined here.

----- Cross-Entropy with different length sequences -----
EntropyHub v1.0 now allows for cross-entropy (and multiscale cross-entropy) estimation with different length signals (except XCondEn and XPermEn).
As a result, the new cross-entropy functions require a separate input for each sequence (Sig1, Sig2).

----- Refined-Composite Multiscale Fuzzy Entropy -----
In addition to the refined-composite multiscale sample entropy that was available in earlier versions, now one can estimate the refined-composite multiscale fuzzy entropy based on the method outlined here.
What's more, refined-composite multicale cross-fuzzy entropy is also available, and both can be estimated using any of the fuzzy membership functions in FuzzEn or XFuzzEn.

----- Generalized Multiscale Entropy -----
Generaized multiscale entropy and generalized multiscale cross-entropy can now be estimated. Just choose the 'generalized' as the graining procedure in MSEn or XMSEn.

----- Variance of sample entropy estimate -----
Based on the method outlined by Lake et al., it is now possible to obtain a measure of the variance in the sample entropy estimate.
This is achieved by approximating the number of overlapping embedding vectors.
To do so, just set the parameter 'Vcp'==true in SampEn and XSampEn, but note that doing so requires a lot of computer memory.

Several little bugs and inconsistencies have also been fixed in this release. We want to thank all of you who have identified and alerted us to these bugs.
Most of these bugs have been noted via the GitHub issues portal.

----- Bug fixes -----

The DispEn2D function in python has now fixed MattWillFlood/EntropyHub#8.
The type hint for FuzzEn in python has been updated MattWillFlood/EntropyHub#1.
#3 are now resolved.
A bug in the K2En python function led to incorrect entropy estimates for data sequences with many equal values. This has been corrected.
----- Other Changes -----

The 'equal' method for discretizing data in DispEn and DispEn2D has been updated to be consistent across Python, MatLab and Julia. This is unlikely to have impacted any users previously.
The zeroth dimension (m=0) estimate of ApEn and XApEn has been changed to -phi(1).
The default radius threshold distance for XApEn, XSampEn and XK2En has been changed to use the pooled standard deviation [i.e. 0.2*SDpooled(X,Y)].

v0.2.0

16 Dec 01:11
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EntropyHub v0.2.0

Diff since v0.1.1

v0.1.1

03 Jul 19:49
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EntropyHub v0.1.1

Diff since v0.1.0

v0.1.0

20 Jun 14:09
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EntropyHub v0.1.0