diff --git a/docs/_templates/layout.html b/docs/_templates/layout.html
deleted file mode 100644
index 60ab8b2..0000000
--- a/docs/_templates/layout.html
+++ /dev/null
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-{% extends "!layout.html" %}
-
-{% block footer %}
-{{ super() }}
-
-
-
-{% endblock %}
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index 7c9290d..4f44043 100644
Binary files a/docs/build/doctrees/environment.pickle and b/docs/build/doctrees/environment.pickle differ
diff --git a/docs/build/html/.buildinfo b/docs/build/html/.buildinfo
index cabaafa..b4e170f 100644
--- a/docs/build/html/.buildinfo
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# This file hashes the configuration used when building these files. When it is not found, a full rebuild will be done.
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index 562eff4..cd64cda 100644
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+++ b/docs/build/html/_modules/index.html
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Overview: module code — pyFTS 1.2.3 documentation
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index f39ab1b..01187bf 100644
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pyFTS.benchmarks.Measures — pyFTS 1.2.3 documentation
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index c13bdd7..80763b5 100644
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-
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pyFTS.benchmarks.ResidualAnalysis — pyFTS 1.2.3 documentation
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index 878bed2..336abf5 100644
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@@ -5,7 +5,18 @@
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pyFTS.benchmarks.Util — pyFTS 1.2.3 documentation
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index 4700cc8..d7b4499 100644
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@@ -5,7 +5,18 @@
-
+
pyFTS.benchmarks.arima — pyFTS 1.2.3 documentation
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index 3bd2bfb..01e3a2a 100644
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pyFTS.benchmarks.benchmarks — pyFTS 1.2.3 documentation
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index e369010..8d9224a 100644
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@@ -5,7 +5,18 @@
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pyFTS.benchmarks.knn — pyFTS 1.2.3 documentation
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index 41cd02d..612abd5 100644
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+++ b/docs/build/html/_modules/pyFTS/benchmarks/naive.html
@@ -5,7 +5,18 @@
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pyFTS.benchmarks.naive — pyFTS 1.2.3 documentation
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index e3631bf..414ddce 100644
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@@ -5,7 +5,18 @@
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+
pyFTS.benchmarks.quantreg — pyFTS 1.2.3 documentation
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index 4d1ae9d..7a06e86 100644
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@@ -5,7 +5,18 @@
-
+
pyFTS.common.Composite — pyFTS 1.2.3 documentation
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index f4e056c..5031ac4 100644
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@@ -5,7 +5,18 @@
-
+
pyFTS.common.FLR — pyFTS 1.2.3 documentation
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index e556f30..2ea3b36 100644
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@@ -5,7 +5,18 @@
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+
pyFTS.common.FuzzySet — pyFTS 1.2.3 documentation
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index 9bcfad8..df02d06 100644
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pyFTS.common.Membership — pyFTS 1.2.3 documentation
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index 9e0f11c..b0ca7cc 100644
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+++ b/docs/build/html/_modules/pyFTS/common/SortedCollection.html
@@ -5,7 +5,18 @@
-
+
pyFTS.common.SortedCollection — pyFTS 1.2.3 documentation
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index 5ddbc69..d280992 100644
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@@ -5,7 +5,18 @@
-
+
pyFTS.common.Transformations — pyFTS 1.2.3 documentation
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index 392b04c..5a1eac1 100644
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+
pyFTS.common.Util — pyFTS 1.2.3 documentation
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index 370b828..eac199c 100644
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pyFTS.common.flrg — pyFTS 1.2.3 documentation
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+
pyFTS.common.fts — pyFTS 1.2.3 documentation
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index ba300b0..ffaf2be 100644
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@@ -5,7 +5,18 @@
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pyFTS.common.tree — pyFTS 1.2.3 documentation
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index c81edce..e189799 100644
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+
pyFTS.data.AirPassengers — pyFTS 1.2.3 documentation
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@@ -5,7 +5,18 @@
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+
pyFTS.data.Bitcoin — pyFTS 1.2.3 documentation
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index ac67db3..8089578 100644
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@@ -5,7 +5,18 @@
-
+
pyFTS.data.DowJones — pyFTS 1.2.3 documentation
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+
pyFTS.data.EURGBP — pyFTS 1.2.3 documentation
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index df971de..59f6e50 100644
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pyFTS.data.EURUSD — pyFTS 1.2.3 documentation
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index 002464f..6d30066 100644
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-
+
pyFTS.data.Enrollments — pyFTS 1.2.3 documentation
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@@ -5,7 +5,18 @@
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+
pyFTS.data.Ethereum — pyFTS 1.2.3 documentation
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index 3b86aed..d469641 100644
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+
pyFTS.data.GBPUSD — pyFTS 1.2.3 documentation
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pyFTS.data.INMET — pyFTS 1.2.3 documentation
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+
pyFTS.data.NASDAQ — pyFTS 1.2.3 documentation
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pyFTS.data.SONDA — pyFTS 1.2.3 documentation
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pyFTS.data.SP500 — pyFTS 1.2.3 documentation
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pyFTS.data.TAIEX — pyFTS 1.2.3 documentation
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pyFTS.data.artificial — pyFTS 1.2.3 documentation
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pyFTS.data.common — pyFTS 1.2.3 documentation
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pyFTS.data.henon — pyFTS 1.2.3 documentation
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pyFTS.data.logistic_map — pyFTS 1.2.3 documentation
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pyFTS.data.lorentz — pyFTS 1.2.3 documentation
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pyFTS.data.mackey_glass — pyFTS 1.2.3 documentation
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pyFTS.data.rossler — pyFTS 1.2.3 documentation
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pyFTS.data.sunspots — pyFTS 1.2.3 documentation
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pyFTS.models.chen — pyFTS 1.2.3 documentation
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pyFTS.models.cheng — pyFTS 1.2.3 documentation
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pyFTS.models.ensemble.ensemble — pyFTS 1.2.3 documentation
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pyFTS.models.ensemble.multiseasonal — pyFTS 1.2.3 documentation
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pyFTS.models.hofts — pyFTS 1.2.3 documentation
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pyFTS.models.hwang — pyFTS 1.2.3 documentation
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pyFTS.models.ifts — pyFTS 1.2.3 documentation
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pyFTS.models.ismailefendi — pyFTS 1.2.3 documentation
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pyFTS.models.multivariate.FLR — pyFTS 1.2.3 documentation
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pyFTS.models.multivariate.common — pyFTS 1.2.3 documentation
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pyFTS.models.multivariate.flrg — pyFTS 1.2.3 documentation
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pyFTS.models.multivariate.mvfts — pyFTS 1.2.3 documentation
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index f8fbb8d..382b169 100644
--- a/docs/build/html/_modules/pyFTS/models/multivariate/variable.html
+++ b/docs/build/html/_modules/pyFTS/models/multivariate/variable.html
@@ -5,7 +5,18 @@
-
+
pyFTS.models.multivariate.variable — pyFTS 1.2.3 documentation
diff --git a/docs/build/html/_modules/pyFTS/models/nonstationary/common.html b/docs/build/html/_modules/pyFTS/models/nonstationary/common.html
index 6380734..04f922c 100644
--- a/docs/build/html/_modules/pyFTS/models/nonstationary/common.html
+++ b/docs/build/html/_modules/pyFTS/models/nonstationary/common.html
@@ -5,7 +5,18 @@
-
+
pyFTS.models.nonstationary.common — pyFTS 1.2.3 documentation
diff --git a/docs/build/html/_modules/pyFTS/models/nonstationary/cvfts.html b/docs/build/html/_modules/pyFTS/models/nonstationary/cvfts.html
index ee194c1..46d4409 100644
--- a/docs/build/html/_modules/pyFTS/models/nonstationary/cvfts.html
+++ b/docs/build/html/_modules/pyFTS/models/nonstationary/cvfts.html
@@ -5,7 +5,18 @@
-
+
pyFTS.models.nonstationary.cvfts — pyFTS 1.2.3 documentation
diff --git a/docs/build/html/_modules/pyFTS/models/nonstationary/flrg.html b/docs/build/html/_modules/pyFTS/models/nonstationary/flrg.html
index d40b389..1aa2f30 100644
--- a/docs/build/html/_modules/pyFTS/models/nonstationary/flrg.html
+++ b/docs/build/html/_modules/pyFTS/models/nonstationary/flrg.html
@@ -5,7 +5,18 @@
-
+
pyFTS.models.nonstationary.flrg — pyFTS 1.2.3 documentation
diff --git a/docs/build/html/_modules/pyFTS/models/nonstationary/honsfts.html b/docs/build/html/_modules/pyFTS/models/nonstationary/honsfts.html
index 4f9e819..3ee1306 100644
--- a/docs/build/html/_modules/pyFTS/models/nonstationary/honsfts.html
+++ b/docs/build/html/_modules/pyFTS/models/nonstationary/honsfts.html
@@ -5,7 +5,18 @@
-
+
pyFTS.models.nonstationary.honsfts — pyFTS 1.2.3 documentation
diff --git a/docs/build/html/_modules/pyFTS/models/nonstationary/nsfts.html b/docs/build/html/_modules/pyFTS/models/nonstationary/nsfts.html
index 9ddf316..b771fa7 100644
--- a/docs/build/html/_modules/pyFTS/models/nonstationary/nsfts.html
+++ b/docs/build/html/_modules/pyFTS/models/nonstationary/nsfts.html
@@ -5,7 +5,18 @@
-
+
pyFTS.models.nonstationary.nsfts — pyFTS 1.2.3 documentation
diff --git a/docs/build/html/_modules/pyFTS/models/nonstationary/partitioners.html b/docs/build/html/_modules/pyFTS/models/nonstationary/partitioners.html
index 24a6e19..f19aeea 100644
--- a/docs/build/html/_modules/pyFTS/models/nonstationary/partitioners.html
+++ b/docs/build/html/_modules/pyFTS/models/nonstationary/partitioners.html
@@ -5,7 +5,18 @@
-
+
pyFTS.models.nonstationary.partitioners — pyFTS 1.2.3 documentation
diff --git a/docs/build/html/_modules/pyFTS/models/nonstationary/perturbation.html b/docs/build/html/_modules/pyFTS/models/nonstationary/perturbation.html
index 85fdcd2..38c2a73 100644
--- a/docs/build/html/_modules/pyFTS/models/nonstationary/perturbation.html
+++ b/docs/build/html/_modules/pyFTS/models/nonstationary/perturbation.html
@@ -5,7 +5,18 @@
-
+
pyFTS.models.nonstationary.perturbation — pyFTS 1.2.3 documentation
diff --git a/docs/build/html/_modules/pyFTS/models/nonstationary/util.html b/docs/build/html/_modules/pyFTS/models/nonstationary/util.html
index e1f88d9..c52b00c 100644
--- a/docs/build/html/_modules/pyFTS/models/nonstationary/util.html
+++ b/docs/build/html/_modules/pyFTS/models/nonstationary/util.html
@@ -5,7 +5,18 @@
-
+
pyFTS.models.nonstationary.util — pyFTS 1.2.3 documentation
diff --git a/docs/build/html/_modules/pyFTS/models/pwfts.html b/docs/build/html/_modules/pyFTS/models/pwfts.html
index c623c74..6182a93 100644
--- a/docs/build/html/_modules/pyFTS/models/pwfts.html
+++ b/docs/build/html/_modules/pyFTS/models/pwfts.html
@@ -5,7 +5,18 @@
-
+
pyFTS.models.pwfts — pyFTS 1.2.3 documentation
diff --git a/docs/build/html/_modules/pyFTS/models/sadaei.html b/docs/build/html/_modules/pyFTS/models/sadaei.html
index 141d404..80da7d0 100644
--- a/docs/build/html/_modules/pyFTS/models/sadaei.html
+++ b/docs/build/html/_modules/pyFTS/models/sadaei.html
@@ -5,7 +5,18 @@
-
+
pyFTS.models.sadaei — pyFTS 1.2.3 documentation
diff --git a/docs/build/html/_modules/pyFTS/models/seasonal/SeasonalIndexer.html b/docs/build/html/_modules/pyFTS/models/seasonal/SeasonalIndexer.html
index 7bd1688..2b9652a 100644
--- a/docs/build/html/_modules/pyFTS/models/seasonal/SeasonalIndexer.html
+++ b/docs/build/html/_modules/pyFTS/models/seasonal/SeasonalIndexer.html
@@ -5,7 +5,18 @@
-
+
pyFTS.models.seasonal.SeasonalIndexer — pyFTS 1.2.3 documentation
diff --git a/docs/build/html/_modules/pyFTS/models/seasonal/cmsfts.html b/docs/build/html/_modules/pyFTS/models/seasonal/cmsfts.html
index 7f30077..be38c41 100644
--- a/docs/build/html/_modules/pyFTS/models/seasonal/cmsfts.html
+++ b/docs/build/html/_modules/pyFTS/models/seasonal/cmsfts.html
@@ -5,7 +5,18 @@
-
+
pyFTS.models.seasonal.cmsfts — pyFTS 1.2.3 documentation
diff --git a/docs/build/html/_modules/pyFTS/models/seasonal/common.html b/docs/build/html/_modules/pyFTS/models/seasonal/common.html
index a65dcef..9141efd 100644
--- a/docs/build/html/_modules/pyFTS/models/seasonal/common.html
+++ b/docs/build/html/_modules/pyFTS/models/seasonal/common.html
@@ -5,7 +5,18 @@
-
+
pyFTS.models.seasonal.common — pyFTS 1.2.3 documentation
diff --git a/docs/build/html/_modules/pyFTS/models/seasonal/msfts.html b/docs/build/html/_modules/pyFTS/models/seasonal/msfts.html
index 05e2de2..c82cc44 100644
--- a/docs/build/html/_modules/pyFTS/models/seasonal/msfts.html
+++ b/docs/build/html/_modules/pyFTS/models/seasonal/msfts.html
@@ -5,7 +5,18 @@
-
+
pyFTS.models.seasonal.msfts — pyFTS 1.2.3 documentation
diff --git a/docs/build/html/_modules/pyFTS/models/seasonal/partitioner.html b/docs/build/html/_modules/pyFTS/models/seasonal/partitioner.html
index 34cf632..1057a6a 100644
--- a/docs/build/html/_modules/pyFTS/models/seasonal/partitioner.html
+++ b/docs/build/html/_modules/pyFTS/models/seasonal/partitioner.html
@@ -5,7 +5,18 @@
-
+
pyFTS.models.seasonal.partitioner — pyFTS 1.2.3 documentation
diff --git a/docs/build/html/_modules/pyFTS/models/seasonal/sfts.html b/docs/build/html/_modules/pyFTS/models/seasonal/sfts.html
index 349885f..847c2cd 100644
--- a/docs/build/html/_modules/pyFTS/models/seasonal/sfts.html
+++ b/docs/build/html/_modules/pyFTS/models/seasonal/sfts.html
@@ -5,7 +5,18 @@
-
+
pyFTS.models.seasonal.sfts — pyFTS 1.2.3 documentation
diff --git a/docs/build/html/_modules/pyFTS/models/song.html b/docs/build/html/_modules/pyFTS/models/song.html
index 37e1531..91b1d9d 100644
--- a/docs/build/html/_modules/pyFTS/models/song.html
+++ b/docs/build/html/_modules/pyFTS/models/song.html
@@ -5,7 +5,18 @@
-
+
pyFTS.models.song — pyFTS 1.2.3 documentation
diff --git a/docs/build/html/_modules/pyFTS/models/yu.html b/docs/build/html/_modules/pyFTS/models/yu.html
index fc193af..7fea056 100644
--- a/docs/build/html/_modules/pyFTS/models/yu.html
+++ b/docs/build/html/_modules/pyFTS/models/yu.html
@@ -5,7 +5,18 @@
-
+
pyFTS.models.yu — pyFTS 1.2.3 documentation
diff --git a/docs/build/html/_modules/pyFTS/partitioners/CMeans.html b/docs/build/html/_modules/pyFTS/partitioners/CMeans.html
index 3dae295..9c330ee 100644
--- a/docs/build/html/_modules/pyFTS/partitioners/CMeans.html
+++ b/docs/build/html/_modules/pyFTS/partitioners/CMeans.html
@@ -5,7 +5,18 @@
-
+
pyFTS.partitioners.CMeans — pyFTS 1.2.3 documentation
diff --git a/docs/build/html/_modules/pyFTS/partitioners/Entropy.html b/docs/build/html/_modules/pyFTS/partitioners/Entropy.html
index 8cc80a4..d2c31cc 100644
--- a/docs/build/html/_modules/pyFTS/partitioners/Entropy.html
+++ b/docs/build/html/_modules/pyFTS/partitioners/Entropy.html
@@ -5,7 +5,18 @@
-
+
pyFTS.partitioners.Entropy — pyFTS 1.2.3 documentation
diff --git a/docs/build/html/_modules/pyFTS/partitioners/FCM.html b/docs/build/html/_modules/pyFTS/partitioners/FCM.html
index d7f6d9a..6d82b1b 100644
--- a/docs/build/html/_modules/pyFTS/partitioners/FCM.html
+++ b/docs/build/html/_modules/pyFTS/partitioners/FCM.html
@@ -5,7 +5,18 @@
-
+
pyFTS.partitioners.FCM — pyFTS 1.2.3 documentation
diff --git a/docs/build/html/_modules/pyFTS/partitioners/Grid.html b/docs/build/html/_modules/pyFTS/partitioners/Grid.html
index aea085f..1ce490f 100644
--- a/docs/build/html/_modules/pyFTS/partitioners/Grid.html
+++ b/docs/build/html/_modules/pyFTS/partitioners/Grid.html
@@ -5,7 +5,18 @@
-
+
pyFTS.partitioners.Grid — pyFTS 1.2.3 documentation
diff --git a/docs/build/html/_modules/pyFTS/partitioners/Huarng.html b/docs/build/html/_modules/pyFTS/partitioners/Huarng.html
index 3dc97d5..747242b 100644
--- a/docs/build/html/_modules/pyFTS/partitioners/Huarng.html
+++ b/docs/build/html/_modules/pyFTS/partitioners/Huarng.html
@@ -5,7 +5,18 @@
-
+
pyFTS.partitioners.Huarng — pyFTS 1.2.3 documentation
diff --git a/docs/build/html/_modules/pyFTS/partitioners/Singleton.html b/docs/build/html/_modules/pyFTS/partitioners/Singleton.html
index 9994663..2f62074 100644
--- a/docs/build/html/_modules/pyFTS/partitioners/Singleton.html
+++ b/docs/build/html/_modules/pyFTS/partitioners/Singleton.html
@@ -5,7 +5,18 @@
-
+
pyFTS.partitioners.Singleton — pyFTS 1.2.3 documentation
diff --git a/docs/build/html/_modules/pyFTS/partitioners/Util.html b/docs/build/html/_modules/pyFTS/partitioners/Util.html
index 71db0de..629c882 100644
--- a/docs/build/html/_modules/pyFTS/partitioners/Util.html
+++ b/docs/build/html/_modules/pyFTS/partitioners/Util.html
@@ -5,7 +5,18 @@
-
+
pyFTS.partitioners.Util — pyFTS 1.2.3 documentation
diff --git a/docs/build/html/_modules/pyFTS/partitioners/parallel_util.html b/docs/build/html/_modules/pyFTS/partitioners/parallel_util.html
index 7c7b514..9be087a 100644
--- a/docs/build/html/_modules/pyFTS/partitioners/parallel_util.html
+++ b/docs/build/html/_modules/pyFTS/partitioners/parallel_util.html
@@ -5,7 +5,18 @@
-
+
pyFTS.partitioners.parallel_util — pyFTS 1.2.3 documentation
diff --git a/docs/build/html/_modules/pyFTS/partitioners/partitioner.html b/docs/build/html/_modules/pyFTS/partitioners/partitioner.html
index b83c709..4425f6a 100644
--- a/docs/build/html/_modules/pyFTS/partitioners/partitioner.html
+++ b/docs/build/html/_modules/pyFTS/partitioners/partitioner.html
@@ -5,7 +5,18 @@
-
+
pyFTS.partitioners.partitioner — pyFTS 1.2.3 documentation
diff --git a/docs/build/html/_modules/pyFTS/probabilistic/ProbabilityDistribution.html b/docs/build/html/_modules/pyFTS/probabilistic/ProbabilityDistribution.html
index 9855fab..dd830e1 100644
--- a/docs/build/html/_modules/pyFTS/probabilistic/ProbabilityDistribution.html
+++ b/docs/build/html/_modules/pyFTS/probabilistic/ProbabilityDistribution.html
@@ -5,7 +5,18 @@
-
+
pyFTS.probabilistic.ProbabilityDistribution — pyFTS 1.2.3 documentation
diff --git a/docs/build/html/_modules/pyFTS/probabilistic/kde.html b/docs/build/html/_modules/pyFTS/probabilistic/kde.html
index 338d2a5..370fe66 100644
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+++ b/docs/build/html/_modules/pyFTS/probabilistic/kde.html
@@ -5,7 +5,18 @@
-
+
pyFTS.probabilistic.kde — pyFTS 1.2.3 documentation
diff --git a/docs/build/html/genindex.html b/docs/build/html/genindex.html
index 726eea5..d3e38f4 100644
--- a/docs/build/html/genindex.html
+++ b/docs/build/html/genindex.html
@@ -6,7 +6,18 @@
-
+
Index — pyFTS 1.2.3 documentation
diff --git a/docs/build/html/index.html b/docs/build/html/index.html
index 3f609a2..5f20753 100644
--- a/docs/build/html/index.html
+++ b/docs/build/html/index.html
@@ -5,7 +5,18 @@
-
+
pyFTS - Fuzzy Time Series for Python — pyFTS 1.2.3 documentation
diff --git a/docs/build/html/modules.html b/docs/build/html/modules.html
index 109b34d..4e8bb2a 100644
--- a/docs/build/html/modules.html
+++ b/docs/build/html/modules.html
@@ -5,7 +5,18 @@
-
+
pyFTS — pyFTS 1.2.3 documentation
@@ -161,11 +172,12 @@
Module contents
Submodules
pyFTS.partitioners.partitioner module
+pyFTS.partitioners.CMeans module
+pyFTS.partitioners.Entropy module
+pyFTS.partitioners.FCM module
pyFTS.partitioners.Grid module
pyFTS.partitioners.Huarng module
-pyFTS.partitioners.Entropy module
-pyFTS.partitioners.CMeans module
-pyFTS.partitioners.FCM module
+pyFTS.partitioners.Singleton module
pyFTS.partitioners.Util module
pyFTS.partitioners.parallel_util module
diff --git a/docs/build/html/py-modindex.html b/docs/build/html/py-modindex.html
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--- a/docs/build/html/py-modindex.html
+++ b/docs/build/html/py-modindex.html
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-
+
Python Module Index — pyFTS 1.2.3 documentation
diff --git a/docs/build/html/pyFTS.benchmarks.html b/docs/build/html/pyFTS.benchmarks.html
index d3ec05f..fb3a96d 100644
--- a/docs/build/html/pyFTS.benchmarks.html
+++ b/docs/build/html/pyFTS.benchmarks.html
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pyFTS.benchmarks package — pyFTS 1.2.3 documentation
diff --git a/docs/build/html/pyFTS.common.html b/docs/build/html/pyFTS.common.html
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--- a/docs/build/html/pyFTS.common.html
+++ b/docs/build/html/pyFTS.common.html
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-
+
pyFTS.common package — pyFTS 1.2.3 documentation
diff --git a/docs/build/html/pyFTS.data.html b/docs/build/html/pyFTS.data.html
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-
+
pyFTS.data package — pyFTS 1.2.3 documentation
diff --git a/docs/build/html/pyFTS.html b/docs/build/html/pyFTS.html
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--- a/docs/build/html/pyFTS.html
+++ b/docs/build/html/pyFTS.html
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-
+
pyFTS package — pyFTS 1.2.3 documentation
diff --git a/docs/build/html/pyFTS.models.ensemble.html b/docs/build/html/pyFTS.models.ensemble.html
index 10f6bdc..0b82334 100644
--- a/docs/build/html/pyFTS.models.ensemble.html
+++ b/docs/build/html/pyFTS.models.ensemble.html
@@ -5,7 +5,18 @@
-
+
pyFTS.models.ensemble package — pyFTS 1.2.3 documentation
diff --git a/docs/build/html/pyFTS.models.html b/docs/build/html/pyFTS.models.html
index a828162..015e18e 100644
--- a/docs/build/html/pyFTS.models.html
+++ b/docs/build/html/pyFTS.models.html
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-
+
pyFTS.models package — pyFTS 1.2.3 documentation
diff --git a/docs/build/html/pyFTS.models.multivariate.html b/docs/build/html/pyFTS.models.multivariate.html
index fcfb2d5..efa4fca 100644
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+++ b/docs/build/html/pyFTS.models.multivariate.html
@@ -5,7 +5,18 @@
-
+
pyFTS.models.multivariate package — pyFTS 1.2.3 documentation
diff --git a/docs/build/html/pyFTS.models.nonstationary.html b/docs/build/html/pyFTS.models.nonstationary.html
index 8fb7a18..d0911e3 100644
--- a/docs/build/html/pyFTS.models.nonstationary.html
+++ b/docs/build/html/pyFTS.models.nonstationary.html
@@ -5,7 +5,18 @@
-
+
pyFTS.models.nonstationary package — pyFTS 1.2.3 documentation
diff --git a/docs/build/html/pyFTS.models.seasonal.html b/docs/build/html/pyFTS.models.seasonal.html
index 9ae785f..e5a600c 100644
--- a/docs/build/html/pyFTS.models.seasonal.html
+++ b/docs/build/html/pyFTS.models.seasonal.html
@@ -5,7 +5,18 @@
-
+
pyFTS.models.seasonal package — pyFTS 1.2.3 documentation
diff --git a/docs/build/html/pyFTS.partitioners.html b/docs/build/html/pyFTS.partitioners.html
index b4f8ed5..2e29378 100644
--- a/docs/build/html/pyFTS.partitioners.html
+++ b/docs/build/html/pyFTS.partitioners.html
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-
+
pyFTS.partitioners package — pyFTS 1.2.3 documentation
diff --git a/docs/build/html/pyFTS.probabilistic.html b/docs/build/html/pyFTS.probabilistic.html
index 7465012..a240e8c 100644
--- a/docs/build/html/pyFTS.probabilistic.html
+++ b/docs/build/html/pyFTS.probabilistic.html
@@ -5,7 +5,18 @@
-
+
pyFTS.probabilistic package — pyFTS 1.2.3 documentation
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+++ b/docs/build/html/quickstart.html
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+
pyFTS Quick Start — pyFTS 1.2.3 documentation
diff --git a/docs/build/html/search.html b/docs/build/html/search.html
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+++ b/docs/build/html/search.html
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-
+
Search — pyFTS 1.2.3 documentation
diff --git a/docs/build/html/searchindex.js b/docs/build/html/searchindex.js
index 4a0b3e0..1e04a06 100644
--- a/docs/build/html/searchindex.js
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roger:4,roi:4,root:3,rossler:[1,2],rule:[3,4,8,13],rules_by_axi:4,run:3,run_interv:3,run_point:3,run_probabilist:3,sadaei:[1,2,13],salang:9,same:4,sampl:[3,5,6,13],sampler:7,save:[3,4,9,11],save_best:3,save_dataframe_interv:3,save_dataframe_point:3,save_dataframe_probabilist:3,save_model:4,scale:[3,4,13],scale_down:9,scale_param:3,scale_up:9,scan:4,scheme:[3,13],scienc:5,scientist:0,score:3,search:[0,4,6,13],season:[2,3,4,6,13],seasonalensembleft:7,seasonalflrg:10,seasonalft:10,seasonalindex:[2,6],second:10,second_of_dai:10,second_of_hour:10,second_of_minut:10,secur:5,selecaosimples_menorrms:3,select:5,sep:5,separ:5,sequenc:4,seri:[1,2,3,4,6,7,8,9,10,11],set:[3,4,6,8,9,10,11,12,13],set_data:10,set_lh:8,set_ord:4,set_rh:8,set_transform:7,setnam:11,sever:[3,11],severiano:6,sft:[2,6],shape:4,sharp:3,sharpavg:3,sharpstd:3,shortnam:4,show:[4,11],show_and_save_imag:4,shyi:6,side:4,sigma_inc:5,sigma_ini:5,sigmf:4,sigmoid:4,silva:[0,6],simpl:[0,5,10],simple_model_predict:4,simple_model_train:4,simplenonstationary_gridpartitioner_build:9,simplenonstationarypartition:9,simpler:4,simplesearch_rms:3,singl:4,single_plot_residu:3,singleton:[1,2,4],singletonpartition:11,sistema:5,size:[3,4,9,11],slice:4,slide:[3,4],sliding_window:4,sliding_window_benchmark:3,smape:3,smith:4,smooth:[4,13],social:[11,13],solar:6,sonda:[1,2],song:[1,2,10,13],sort:4,sort_ascend:3,sort_column:3,sortedcollect:[1,2],sourc:[3,4,5,6,7,8,9,10,11,12],sp500:5,space:3,specif:[3,4,6,7,8,9,10],split:[3,4,11],splitabov:11,splitbelow:11,splite:13,sql:3,sqlite3:3,sqlite:3,squar:3,ssci:6,standard:[3,5,13],start:[0,3,4,9],start_dispy_clust:4,stat:[3,6,13],station:5,stationari:9,statist:[0,3],statsmodel:3,step:[3,4,6,7,8,9,10,13],steps_ahead:[3,4],stochast:5,stock:5,stop_dispy_clust:4,store:[3,4],strang:5,string:[4,8,11],strip_datepart:10,structur:4,student:0,submodul:[0,1],subpackag:[0,1],suitabl:0,sum:6,sunspot:[1,2],superset:4,support:4,symbol:5,symmetr:3,symposium:6,synthet:[3,5],syst:[6,10,11,13],system:[5,6,9],tabl:3,tabular_dataframe_column:3,tag:3,taiex:[1,2,6,13],taiwan:5,take:13,tam:[3,9,11,12],target:3,tau:[3,5],technol:[11,13],tempor:[4,10,13],term:[3,6,13],test:[3,4,13],test_data:3,than:[4,13],thei:4,theil:3,theilsinequ:3,theoret:3,theori:13,thi:[0,4,5,6,9,10,13],thoma:4,those:4,thres1:11,thres2:11,threshold:11,through:5,time:[1,2,3,4,6,7,8,9,10,11],time_from:3,time_to:3,timegridpartition:10,times2:3,timeseri:5,titl:[3,11,12],tool:[0,13],total:5,tradit:6,train:[3,4,6,7,8,9,10,11],train_data:[3,7],train_individual_model:7,train_method:4,train_paramet:4,transact:9,transform:[1,2,3,8,9,11,13],transformations_param:4,transit:[4,13],translat:13,trapezoid:[4,11,13],trapmf:4,tree:[1,2],trend:[6,13],trendweightedflrg:6,trendweightedft:6,triangular:4,trigger:4,trimf:4,tsa:3,tsdl:5,tupl:3,two:5,twse:5,type:[3,4,5,12,13],typeonlegend:3,uavg:3,ufmg:0,under:4,unified_scaled_interv:3,unified_scaled_interval_pinbal:3,unified_scaled_point:3,unified_scaled_probabilist:3,uniform:5,uniqu:[4,6,9,10],uniquefilenam:4,unit:10,univari:5,univers:[0,3,4,5,9,10,11,12,13],unpack_arg:9,uod:[3,4,6,12],uod_clip:4,up_param:3,update_model:6,update_uod:7,updateuod:[4,8],upper:[4,5,6,9],upper_set:11,url:[0,3,5],usa:5,usag:0,usd:[1,2],use:[0,4],used:[3,4,6,11,13],user:3,using:[4,6,13],ustatist:3,ustd:3,usual:[4,13],util:[1,2,6],val:11,valid:4,valu:[3,4,5,6,7,8,9,10,12,13],valueerror:4,variabl:[2,4,6],varianc:[4,5],vector:4,veri:[5,6],verif:3,visualize_distribut:6,vmax:5,vmin:5,vol:[6,10,11,13],want:0,weather:3,weight:[5,6,13],weightedflrg:6,weightedft:6,when:4,where:[3,4],which:[3,4,13],white_nois:5,whose:0,width:[9,11,12],width_param:9,window:[3,4],window_index:9,window_kei:3,window_s:9,windows:[3,4],winkler:3,winkler_mean:3,winkler_scor:3,without:4,word:3,work:4,wrap:3,www:5,yahoo:5,year:10,yearli:5,yeh:[11,13],you:4,young:4,younger:4,youngest:4,zenodo:0},titles:["pyFTS - Fuzzy Time Series for Python","pyFTS","pyFTS package","pyFTS.benchmarks package","pyFTS.common package","pyFTS.data package","pyFTS.models package","pyFTS.models.ensemble package","pyFTS.models.multivariate package","pyFTS.models.nonstationary package","pyFTS.models.seasonal package","pyFTS.partitioners package","pyFTS.probabilistic package","pyFTS Quick Start"],titleterms:{FTS:13,airpasseng:5,arima:3,artifici:5,benchmark:3,bitcoin:5,chaotic:5,chen:6,cheng:6,cmean:11,cmsft:10,common:[4,5,8,9,10],composit:4,conf:2,content:[2,3,4,5,6,7,8,9,10,11,12],cvft:9,data:5,dataset:5,dowjon:5,enrol:5,ensembl:7,entropi:11,ethereum:5,eur:5,exampl:13,fcm:11,flr:[4,8],flrg:[4,8,9],fts:4,fuzzi:[0,13],fuzzyset:4,gbp:5,glass:5,grid:11,henon:5,hoft:6,honsft:9,how:[0,13],huarng:11,hwang:6,ift:6,index:0,inmet:5,instal:13,ismailefendi:6,kde:12,knn:3,librari:0,logistic_map:5,lorentz:5,mackei:5,measur:3,membership:4,model:[6,7,8,9,10],modul:[2,3,4,5,6,7,8,9,10,11,12],msft:10,multiseason:7,multivari:8,mvft:8,naiv:3,nasdaq:5,nonstationari:9,nsft:9,packag:[2,3,4,5,6,7,8,9,10,11,12],parallel_util:11,partition:[9,10,11],perturb:9,probabilist:12,probabilitydistribut:12,pwft:6,pyft:[0,1,2,3,4,5,6,7,8,9,10,11,12,13],pyftsa:[],python:0,quantreg:3,quick:13,refer:[0,13],residualanalysi:3,rossler:5,sadaei:6,season:10,seasonalindex:10,seri:[0,5,13],sft:10,singleton:11,sonda:5,song:6,sortedcollect:4,start:13,submodul:[2,3,4,5,6,7,8,9,10,11,12],subpackag:[2,6],sunspot:5,taiex:5,time:[0,5,13],transform:4,tree:4,usag:13,usd:5,util:[3,4,9,11],variabl:8,what:[0,13]}})
\ No newline at end of file
diff --git a/docs/conf.py b/docs/conf.py
index 07599cc..63aa721 100644
--- a/docs/conf.py
+++ b/docs/conf.py
@@ -46,6 +46,7 @@ extensions = [
'sphinx.ext.ifconfig',
'sphinx.ext.viewcode',
'sphinx.ext.githubpages',
+ 'sphinxcontrib.googleanalytics'
]
# Add any paths that contain templates here, relative to this directory.
@@ -170,6 +171,8 @@ texinfo_documents = [
# -- Extension configuration -------------------------------------------------
+googleanalytics_id = 'UA-55120145-3'
+
# -- Options for intersphinx extension ---------------------------------------
# Example configuration for intersphinx: refer to the Python standard library.