distantia
Time
Series Dissimilarity
Version 2.0.0 of distantia
is a full re-write of the
original package and will break existing workflows
before making them better. Please refer to the Changelog
for details before updating.
The R package distantia
offers an
efficient, feature-rich toolkit for managing, comparing, and analyzing
time series data. It is designed to handle a wide range of scenarios,
including:
distantia::distances
.psi
.zoo
objects.tsl_...()
functions for generating,
resampling, transforming, analyzing, and visualizing univariate and
multivariate time series.If you find this package useful, please cite it as:
Blas M. Benito, H. John B. Birks (2020). distantia: an open-source toolset to quantify dissimilarity between multivariate ecological time-series. Ecography, 43(5), 660-667. doi: 10.1111/ecog.04895.
Blas M. Benito (2024). distantia: A Toolset for Time Series Dissimilarity Analysis. R package version 2.0.0. url: https://blasbenito.github.io/distantia/.
Version 1.0.2 of distantia
can be installed from
CRAN.
install.packages("distantia")
Version 2.0.0 can be installed from GitHub.
::install_github(
remotesrepo = "blasbenito/distantia",
ref = "development"
)
This section showcases several features of the package
distantia
. Please, check the Articles
section for further details.
All heavy duty functions in distantia
support
parallelization via the future package. However, due
to the high efficiency of the C++ backend of distantia
,
parallel execution is only worth it for very large datasets and
restricted permutation analyses.
Progress bars provided by the progressr package are also available. Unfortunately, the latter does not work in Rmarkdown documents like this one.
library(distantia, quietly = TRUE)
library(future)
# library(progressr)
#parallelization setup
# future::plan(future::multisession)
#progress bar (does not work in Rmarkdown)
#progressr::handlers(global = TRUE)
The albatross
data frame contains daily GPS data of 4
individuals of Waved Albatross in the Pacific captured during the summer
of 2008. Below are the first 10 rows of this data frame:
#> name time x y speed temperature heading
#> 1 X132 2008-05-31 -89.62097 -1.389512 0.1473333 29.06667 212.0307
#> 2 X132 2008-06-01 -89.62101 -1.389508 0.2156250 28.25000 184.0337
#> 3 X132 2008-06-02 -89.62101 -1.389503 0.2143750 27.68750 123.1269
#> 4 X132 2008-06-03 -89.62099 -1.389508 0.2018750 27.81250 183.4600
#> 5 X132 2008-06-04 -89.62098 -1.389507 0.2256250 27.68750 114.8931
#> 6 X132 2008-06-05 -89.62925 -1.425734 1.3706667 25.73333 245.8033
The code below transforms the data to a Time Series List
with tsl_initialize()
and applies global scaling and
centering with tsl_transform()
and
f_scale_global
to facilitate time series comparisons.
<- tsl_initialize(
tsl x = distantia::albatross,
name_column = "name",
time_column = "time",
lock_step = TRUE
|>
) tsl_transform(
f = f_scale_global
)
tsl_plot(
tsl = tsl,
ylim = "relative"
)
Lock-step analysis performs direct comparisons between samples observed at the same time without any time distortion. It requires time series of the same length preferably observed at the same times.
<- distantia(
df_ls tsl = tsl,
lock_step = TRUE
)
c("x", "y", "psi")]
df_ls[, #> x y psi
#> 1 X132 X134 1.888451
#> 3 X132 X153 2.128340
#> 5 X134 X153 2.187862
#> 4 X134 X136 2.270977
#> 2 X132 X136 2.427479
#> 6 X136 X153 2.666099
The “psi” column shows normalized dissimilarity values and is used to sort the data frame from lowest to highest dissimilarity. Hence, the first row shows the most similar pair of time series.
The function distantia_boxplot()
enables a quick
identification of the time series that are either more dissimilar (top)
or similar (bottom) to others.
distantia_boxplot(df = df_ls, text_cex = 0.8)
By default, distantia()
computes unrestricted dynamic
time warping with orthogonal and diagonal least cost paths.
<- distantia(
df_dtw tsl = tsl
)
c("x", "y", "psi")]
df_dtw[, #> x y psi
#> 1 X132 X134 1.299380
#> 5 X134 X153 2.074241
#> 3 X132 X153 2.091923
#> 4 X134 X136 2.358040
#> 2 X132 X136 2.449381
#> 6 X136 X153 2.666099
The function distantia_dtw_plot()
provides detailed
insights into the alignment between a pair of time series resulting from
DTW.
distantia_dtw_plot(
tsl = tsl[c("X132", "X153")]
)
Deviations from the perfect diagonal in the least-cost path reveal adjustments made by DTW to align time series by shape rather than time.
The article Dynamic Time Warping vs Lock-Step provides further insights on the advantages and disadvantages of each method in different scenarios.
The function distantia()
implements restricted
permutation tests to assess the significance of dissimilarity scores. It
provides several setups to support different assumptions.
For example, the configuration below rearranges complete rows within 7-day blocks, assuming strong dependencies within rows and between observations that are close in time.
::plan(future::multisession)
future
<- distantia(
df_dtw tsl = tsl,
repetitions = 1000,
permutation = "restricted_by_row",
block_size = 7 #one week
)
::plan(future::sequential)
future
c("x", "y", "psi", "p_value")]
df_dtw[, #> x y psi p_value
#> 1 X132 X134 1.299380 0.001
#> 5 X134 X153 2.074241 0.001
#> 3 X132 X153 2.091923 0.001
#> 4 X134 X136 2.358040 0.184
#> 2 X132 X136 2.449381 0.499
#> 6 X136 X153 2.666099 0.007
The “p_value” column represents the fraction of permutations yielding a psi score lower than the observed value, and indicates the strength of similarity between two time series. A significance threshold (e.g., 0.05, depending on iterations) helps identifying pairs of time series with a robust similarity.
When comparing multivariate time series, certain variables contribute
more to similarity or dissimilarity. The momentum()
function uses a leave-one-out algorithm to quantify each variable’s
contribution to the overall dissimilarity between two time series.
<- momentum(
df_importance tsl = tsl
)
c("x", "y", "variable", "importance", "effect")]
df_importance[, #> x y variable importance effect
#> 1 X132 X134 x 87.6066043 decreases similarity
#> 2 X132 X134 y 93.9587187 decreases similarity
#> 3 X132 X134 speed -21.9171171 increases similarity
#> 4 X132 X134 temperature 72.8121621 decreases similarity
#> 5 X132 X134 heading -38.0165137 increases similarity
#> 6 X132 X136 x 48.3845903 decreases similarity
#> 7 X132 X136 y 93.5214543 decreases similarity
#> 8 X132 X136 speed -61.1729252 increases similarity
#> 9 X132 X136 temperature 356.8824838 decreases similarity
#> 10 X132 X136 heading -102.9830173 increases similarity
#> 11 X132 X153 x 427.7381576 decreases similarity
#> 12 X132 X153 y 156.1285451 decreases similarity
#> 13 X132 X153 speed -40.9249630 increases similarity
#> 14 X132 X153 temperature -14.2831545 increases similarity
#> 15 X132 X153 heading -79.3532025 increases similarity
#> 16 X134 X136 x 61.3361468 decreases similarity
#> 17 X134 X136 y 108.9650664 decreases similarity
#> 18 X134 X136 speed -59.2603918 increases similarity
#> 19 X134 X136 temperature 310.6812842 decreases similarity
#> 20 X134 X136 heading -90.2797292 increases similarity
#> 21 X134 X153 x 592.0783167 decreases similarity
#> 22 X134 X153 y 116.4310429 decreases similarity
#> 23 X134 X153 speed -52.4149093 increases similarity
#> 24 X134 X153 temperature 0.9936944 decreases similarity
#> 25 X134 X153 heading -85.0271172 increases similarity
#> 26 X136 X153 x 507.6153648 decreases similarity
#> 27 X136 X153 y 56.6957442 decreases similarity
#> 28 X136 X153 speed -65.4516103 increases similarity
#> 29 X136 X153 temperature 240.9053814 decreases similarity
#> 30 X136 X153 heading -116.2461929 increases similarity
Positive “importance” values indicate variables contributing to dissimilarity, while negative values indicate contribution to similarity. The function documentation provides more details on how importance scores are computed.
The momentum_boxplot()
function provides a quick insight
into which variables contribute the most to similarity or dissimilarity
across all pairs of time series.
momentum_boxplot(
df = df_importance
)
The package distantia
provides tools to group together
time series by dissimilarity using hierarchical or K-means clustering.
The example below applies the former to the albatross
dataset to find out groups of individuals with the most similar movement
time series.
<- distantia_cluster_hclust(
dtw_hclust df = df_dtw,
clusters = NULL, #automatic mode
method = NULL #automatic mode
)
#cluster object
$cluster_object
dtw_hclust#>
#> Call:
#> stats::hclust(d = d_dist, method = method)
#>
#> Cluster method : ward.D
#> Number of objects: 4
#number of clusters
$clusters
dtw_hclust#> [1] 2
#clustering data frame
#group label in column "cluster"
#negatives in column "silhouette_width" higlight anomalous cluster assignation
$df
dtw_hclust#> name cluster silhouette_width
#> 1 X132 1 0.3077225
#> 2 X134 1 0.2846556
#> 3 X136 2 0.0000000
#> 4 X153 1 0.2186781
#tree plot
par(mar=c(3,1,1,3))
plot(
x = stats::as.dendrogram(
$cluster_object
dtw_hclust
),horiz = TRUE
)
This is just a summary of the features implemented in the package.
Please visit the Articles section to find out more
about distantia
.
If you encounter bugs or issues with the documentation, please file a issue on GitHub.