knitr::opts_chunk$set( collapse = TRUE, comment = "#>", fig.path = "vig/" ) options(rmarkdown.html_vignette.check_title = FALSE)
library(vivid)
Variable importance (VImp), variable interaction measures (VInt) and partial dependence plots (PDPs) are important summaries in the interpretation of statistical and machine learning models. In this vignette we describe new visualization techniques for exploring these model summaries. We construct heatmap and graph-based displays showing variable importance and interaction jointly, which are carefully designed to highlight important aspects of the fit. We describe a new matrix-type layout showing all single and bivariate partial dependence plots, and an alternative layout based on graph Eulerians focusing on key subsets. Our new visualisations are model-agnostic and are applicable to regression and classification supervised learning settings. They enhance interpretation even in situations where the number of variables is large and the interaction structure complex. Our R package vivid
(variable importance and variable interaction displays) provides an implementation. When referring to VImp and VInt together, we use the shorthand VIVI. For more information related to visualising variable importance and interactions in machine learning models see our published work^[Alan Inglis and Andrew Parnell and Catherine B. Hurley (2022) Visualizing Variable Importance and Variable Interaction Effects in Machine Learning Models. Journal of Computational and Graphical Statistics (3), pages 1-13].
Some of the plots used by vivid
are built upon the zenplots
package which requires the graph
package from BioConductor. To install the graph
and zenplots
packages use:
if (!requireNamespace("graph", quietly = TRUE)){
install.packages("BiocManager")
BiocManager::install("graph")
}
install.packages("zenplots")
Now we can install vivid
by using:
install.packages("vivid")
Alternatively you can install the latest development version of the package in R with the commands:
if(!require(remotes)) install.packages('remotes')
remotes::install_github('AlanInglis/vividPackage')
We then load the required packages. vivid
to create the visualizations and some other packages to create various model fits.
library(vivid) # for visualisations library(randomForest) # for model fit library(ranger) # for model fit
The data used in the following examples is simulated from the Friedman benchmark problem^[Friedman, Jerome H. (1991) Multivariate adaptive regression splines. The Annals of Statistics 19 (1), pages 1-67.]. This benchmark problem is commonly used for testing purposes. The output is created according to the equation:
For the following examples we set the number of features to equal 9 and the number of samples is set to 350 and fit a randomForest
random forest model with $y$ as the response. As the features $x_1$ to $x_5$ are the only variables in the model, therefore $x_6$ to $x_{9}$ are noise variables. As can be seen by the above equation, the only interaction is between $x_1$ and $x_2$
Create the data:
set.seed(101) genFriedman <- function(noFeatures = 10, noSamples = 100, sigma = 1 ) { # Set Values n <- noSamples # no of rows p <- noFeatures # no of variables e <- rnorm(n, sd = sigma) # Create matrix of values xValues <- matrix(runif(n * p, 0, 1), nrow = n) # Create matrix colnames(xValues) <- paste0("x", 1:p) # Name columns df <- data.frame(xValues) # Create dataframe # Equation: # y = 10sin(πx1x2) + 20(x3−0.5)^2 + 10x4 + 5x5 + ε y <- (10 * sin(pi * df$x1 * df$x2) + 20 * (df$x3 - 0.5)^2 + 10 * df$x4 + 5 * df$x5 + e) # Adding y to df df$y <- y df } myData <- genFriedman(noFeatures = 9, noSamples = 350, sigma = 1)
Here we fit the model. We create a random forest fit from the randomForest
package.
set.seed(1701) rf <- randomForest(y ~ ., data = myData)
To utilize vivid
, the initial step involves computing variable importance and interactions for a fitted model. The vivi function performs this calculation, producing a square, symmetrical matrix that contains variable importance on the diagonal and variable interactions on the off-diagonal. To calculate the pair-wise interaction strength interactions Friedman's model agnostic, unnormalized $H$-Statistic^[Friedman, J. H. and Popescu, B. E. (2008). “Predictive learning via rule ensembles.” The Annals of Applied Statistics. JSTOR, 916–54.] is used.
The unnormalized version of the $H$-statistic was chosen to have a more direct comparison of interaction effects across pairs of variables and the results of $H$ are on the scale of the response (for regression). For the importance, either a selected embedded importance measure can be used (as seen in section 4) or an agnostic permutation method^[Fisher A., Rudin C., Dominici F. (2018). All Models are Wrong but many are Useful: Variable Importance for Black-Box, Proprietary, or Misspecified Prediction Models, using Model Class Reliance. Arxiv.] can be selected.
The vivi function requires three inputs: a fitted machine learning model, a data frame used in the model's training, and the name of the response variable for the fit. The resulting matrix will have importance and interaction values for all variables in the data frame, excluding the response variable. By default, if no embedded variable importance method is available or selected, an agnostic permutation method is applied. For clarity, this is shown in the importanceType = 'agnostic'
argument below. For an example of using embedded methods, see Section 4.
Any variables that are not used by the supplied model will have their importance and interaction values set to zero. While the viviHeatmap
and viviNetwork
visualization functions (seen below) are tailored for displaying the results of vivi calculations, they can also work with any square matrix that has identical row and column names. (Note, the symmetry assumption is not required for viviHeatmap
and viviNetwork
uses interaction values from the lower-triangular part of the matrix only.)
This function works with multiple model fits and results in a matrix which can be supplied to the plotting functions. The predict function argument uses condvis2::CVpredict
by default, which works for many fit classes. To see a description of all function arguments use: ?vivid::vivi()
set.seed(1701) viviRf <- vivi(fit = rf, data = myData, response = "y", gridSize = 50, importanceType = "agnostic", nmax = 500, reorder = TRUE, predictFun = NULL, numPerm = 4, showVimpError = FALSE)
NOTE: If viewing this vignette from the vivid CRAN page, then some images may not format correctly. It is recommended to view this vignette via the following link: https://alaninglis.github.io/vivid/articles/vividVignette.html
The viviHeatmap
function generates a heatmap that displays variable importance and interactions, with importance values on the diagonal and interaction values on the off-diagonal. The function only requires a vivid
matrix as input, which does not need to be symmetrical. Additionally, color palettes can be specified for both importance and interactions via the impPal
and intPal
arguments. By default, we have opted for single-hue, color-blind friendly sequential color palettes developed by Zeileis et al^[Zeileis, Achim, Jason C. Fisher, Kurt Hornik, Ross Ihaka, Claire D. McWhite, Paul Murrell, Reto Stauffer, and Claus O. Wilke. 2020. “Colorspace: A Toolbox for Manipulating and Assessing Colors and Palettes.” Journal of Statistical Software, Articles 96 (1): 1–49]. These palettes represent low and high VIVI values with low and high luminance colors, respectively, which can aid in highlighting pertinent values.
The impLims
and intLims
arguments determine the range of importance and interaction values that will be assigned colors. If these arguments are not provided, the default values will be calculated based on the minimum and maximum VIVI values in the vivid
matrix. If any importance or interaction values fall outside of the specified limits, they will be squished to the closest limit. For brevity, only the required vivid
matrix input is shown in the following code. To see a description of all the function arguments, see ?vivid::viviheatmap()
viviHeatmap(mat = viviRf)
knitr::include_graphics("https://raw.githubusercontent.com/AlanInglis/vivid/master/vividVigplots/rfheatmap.png")
With viviNetwork
, a network graph is produced to visualize both importance and interactions. Similar to viviHeatmap
, this function only requires a vivid
matrix as input and uses visual elements, such as size and color, to depict the magnitude of importance and interaction values. The graph displays each variable as a node, where its size and color reflect its importance (larger and darker nodes indicate higher importance). Pairwise interactions are displayed through connecting edges, where thicker and darker edges indicate higher interaction values.
To begin we show the network using default settings.
viviNetwork(mat = viviRf)
knitr::include_graphics("https://raw.githubusercontent.com/AlanInglis/vivid/master/vividVigplots/rfnetwork.png")
We can also filter out any interactions below a set value using the intThreshold
argument. This can be useful when the number of variables included in the model is large or just to highlight the strongest interactions. By default, unconnected nodes are displayed, however, they can be removed by setting the argument removeNode = T
.
viviNetwork(mat = viviRf, intThreshold = 0.12, removeNode = FALSE) viviNetwork(mat = viviRf, intThreshold = 0.12, removeNode = TRUE)
knitr::include_graphics("https://raw.githubusercontent.com/AlanInglis/vivid/master/vividVigplots/rfnet_filter_comb1.png")
The network plot offers multiple customization possibilities when it comes to displaying the network style plot through use of the layout
argument. The default layout is a circle but the argument accepts any igraph
layout function or a numeric matrix with two columns, one row per node.
viviNetwork(mat = viviRf, layout = cbind(c(1,1,1,1,2,2,2,2,2), c(1,2,4,5,1,2,3,4,5)))
knitr::include_graphics("https://raw.githubusercontent.com/AlanInglis/vivid/master/vividVigplots/rfnet_custom_layout.png")
Finally, for the network plot to highlight any relationships in the model fit, we can cluster variables together using the cluster
argument. This argument can either accept a vector of cluster memberships for nodes or an igraph
package clustering function. In the following example, we manually select variables with VIVI values in the top 20\%. This selection allows us to focus only on the variables with the most impact on the response. The variables that remain are $x1$ to $x5$. We then perform a hierarchical clustering treating variable interactions as similarities, with the goal of grouping together high-interaction variables. Here we manually select the number of groups we want to show via the cutree
function (which cuts clustered data into a desired number of groups). Finally we rearrange the layout using igraph
. Here, igraph::layout_as_star
places the first variable (deemed most relevant using the VIVI seriation process) at the center, which in Figure 5 emphasizes its key role as the most important predictor which also has the strongest interactions.
set.seed(1701) # clustered and filtered network for rf intVals <- viviRf diag(intVals) <- NA # select VIVI values in top 20% impTresh <- quantile(diag(viviRf),.8) intThresh <- quantile(intVals,.8,na.rm=TRUE) sv <- which(diag(viviRf) > impTresh | apply(intVals, 1, max, na.rm=TRUE) > intThresh) h <- hclust(-as.dist(viviRf[sv,sv]), method="single") viviNetwork(viviRf[sv,sv], cluster = cutree(h, k = 3), # specify number of groups layout = igraph::layout_as_star)
knitr::include_graphics("https://raw.githubusercontent.com/AlanInglis/vivid/master/vividVigplots/rfnet_cluster.png")
In Figure 5, after applying a hierarchical clustering, we can see the strongest mutual interactions have been grouped together. Namley; $x1$, $x2$, and $x4$. The remaining variables are individually clustered.
The pdpVars
function constructs a grid of univariate PDPs with ICE curves for selected variables. We use ICE curves to assist in the identification of linear or non-linear effects. The fit, data frame used to train the model, and the name of the response variable are required inputs.
In the example below, we select the first five variables from our created vivid
matrix to display and set the number of ICE curves to be displayed to be 100, via the nIce
argument.
top5 <- colnames(viviRf)[1:5] pdpVars(data = myData, fit = rf, response = 'y', vars = top5, nIce = 100)
knitr::include_graphics("https://raw.githubusercontent.com/AlanInglis/vivid/master/vividVigplots/rfpdp.png")
By employing a matrix layout, the pdpPairs function generates a generalized pairs partial dependence plot (GPDP) that encompasses univariate partial dependence (with ICE curves) on the diagonal, bivariate partial dependence on the upper diagonal, and a scatterplot of raw variable values on the lower diagonal, where all colours are assigned to points and ICE curves by the predicted $\hat{y}$ value. As with the univariate PDP, the fit, data frame used to train the model, and the name of the response variable are required inputs. For a full description of all the function arguments, see ?vivid::pdpPairs
. In the following example, we select the first five variables to display and set the number of shown ICE curves to 100.
set.seed(1701) pdpPairs(data = myData, fit = rf, response = "y", nmax = 500, gridSize = 10, vars = c("x1", "x2", "x3", "x4", "x5"), nIce = 100)
knitr::include_graphics("https://raw.githubusercontent.com/AlanInglis/vivid/master/vividVigplots/rfGPGP_subset.png")
The pdpZen
function utilizes a space-saving technique based on graph Eulerians, introduced by Hierholzer and Wiener in 1873^[Hierholzer, Carl, and Chr Wiener. 1873. “Über Die möglichkeit, Einen Linienzug Ohne Wiederholung Und Ohne Unterbrechung Zu Umfahren.” Mathematische Annalen 6 (1): 30–32.] to create partial dependence plots. We refer to these plots as zen-partial dependence plots (ZPDP). These plots are based on zigzag expanded navigation plots, also known as zenplots, which are available in the zenplots package^[Hofert, Marius, and Wayne Oldford. 2020. “Zigzag Expanded Navigation Plots in R: The R Package zenplots.” Journal of Statistical Software 95 (4): 1–44.]. Zenplots were designed to showcase paired graphs of high-dimensional data with a focus on the most significant 2D displays. In our version, we display bivariate PDPs that emphasize variables with the most significant interaction values in a compact zigzag layout. This format is useful when dealing with high-dimensional predictor space.
To begin, we show a ZPDP using all the variables in the model.
set.seed(1701) pdpZen(data = myData, fit = rf, response = "y", nmax = 500, gridSize = 10)
knitr::include_graphics("https://raw.githubusercontent.com/AlanInglis/vivid/master/vividVigplots/rfzen_all.png")
In Fig 8, we can see PDPs laid out in a zigzag structure, with the most influential variable pairs displayed at the top and generally decreasing as we move down. In Figure 9, below, we select a subset of variables to display. In this case we select the first five variables from the data. The argument zpath
specifies the variables to be plotted, defaulting to all dataset variables aside from the response.
set.seed(1701) pdpZen(data = myData, fit = rf, response = "y", nmax = 500, gridSize = 10, zpath = c("x1", "x2", "x3", "x4", "x5"))
knitr::include_graphics("https://raw.githubusercontent.com/AlanInglis/vivid/master/vividVigplots/rfzen_subset.png")
We can also create a sequence or sequences of variable paths for use in pdpZen.
via the zPath
function. The zPath function takes four arguments. These are: viv
- a matrix of interaction values, cutoff
- exclude interaction values below this threshold, method
- a string indicating which method to use to create the path, and connect
- a logical value indicating if separate Eulerians should be connected.
You can choose between two methods when using the zPath
function: "greedy.weighted"
and "strictly.weighted"
. The first method utilizes a greedy Eulerian path algorithm for connected graphs. This method traverses each edge at least once, beginning at the highest-weighted edge, and moving on to the remaining edges while prioritizing the highest-weighted edge. If the graph has an odd number of nodes, some edges may be visited more than once, or additional edges may be visited. The second method, "strictly.weighted"
visits edges in strictly decreasing order by weight (in this case, interaction values). If the connect argument is set to TRUE
, the sequences generated by the strictly weighted method are combined to create a single path. In the code below, we provide an example of creating zen-paths using the "strictly.weighted"
method, from the top 10% of interaction scores in viviRf
(i.e., the created vivid
matrix.)
# set zpaths with different parameters intVals <- viviRf diag(intVals) <- NA intThresh <- quantile(intVals, .90, na.rm=TRUE) zpSw <- zPath(viv = viviRf, cutoff = intThresh, connect = FALSE, method = 'strictly.weighted') set.seed(1701) pdpZen(data = myData, fit = rf, response = "y", nmax = 500, gridSize = 10, zpath = zpSw)
knitr::include_graphics("https://raw.githubusercontent.com/AlanInglis/vivid/master/vividVigplots/rfzen_SW.png")
We supply an internal custom predict function called CVpredictfun
to both importance and interaction calculations. CVpredictfun
is a wrapper around CVpredict
from the condvis2
package^[Hurley, Catherine, Mark OConnell, and Katarina Domijan. 2022. Condvis2: Interactive Conditional Visualization for Supervised and Unsupervised Models in Shiny.]. CVpredict
accepts a broad range of fit classes thus streamlining the process of calculating variable importance and interactions.
In situations where the fit class is not handled by CVpredict
, supplying a custom predict function to the vivi
function by way of the predictFun
argument allows the agnostic VIVI values to be calculated. In the following, we provide a small example of using such a fit with vivid
by using the xgboost
package to create a gradient boosting machine (GBM). TO begin we build the model.
library("xgboost") gbst <- xgboost(data = as.matrix(myData[,1:9]), label = as.matrix(myData[,10]), nrounds = 100, verbose = 0)
We then build the vivid
matrix for the GBM fit using a custom predict function, which must be of the form given in the code snippet.
# predict function for GBM pFun <- function(fit, data, ...) predict(fit, as.matrix(data[,1:9])) set.seed(1701) viviGBst <- vivi(fit = gbst, data = myData, response = "y", reorder = FALSE, normalized = FALSE, predictFun = pFun, gridSize = 50, nmax = 500)
From this we can now create our visualisations. For brevity, we only show the heatmap.
viviHeatmap(mat = viviGBst)
knitr::include_graphics("https://raw.githubusercontent.com/AlanInglis/vivid/master/vividVigplots/gbmheat.png")
In the following we show examples of how to select different (embedded) importance metrics for use with the vivi
function. To illustrate the process we use a random forest model fit using the randomForest
and ranger
packages.
To begin we fit the randomForest
model.
set.seed(1701) rfEmbedded <- randomForest(y ~ ., data = myData, importance = TRUE)
Note that for a randomForest
model, if the argument importance = TRUE
, then multiple importance metrics are returned. In this case, as we have a regression random forest, the returned importance metrics are the percent increase in mean squared error (\%IncMSE) and the increase in node purity (IncNodePurity). In order to choose a specific metric for use with vivid
, it is necessary to specify one of the importance metrics returned by the random forest as the argument for the importanceType
parameter in the vivi
function. In the code below we select the \%IncMSE as the importance metric.
viviRfEmbedded <- vivi(fit = rfEmbedded, data = myData, response = "y", importanceType = "%IncMSE")
For a ranger
random forest model, the importance metric must be specified when fitting the model. In the code below, we select the impurity
as the importance metric.
rang <- ranger(y~., data = myData, importance = 'impurity')
Then when calling the vivi
function, the importanceType
argument is set to the same selected importance metric.
viviRangEmbedded <- vivi(fit = rang, data = myData, response = "y", importanceType = "impurity")
In this section, we briefly describe how to apply the above visualisations to a classification example using the iris
data set.
To begin we fit a ranger
random forest model with "Species" as the response and create the vivi matrix setting the category for classification to be "setosa" using class
.
set.seed(1701) rfClassif <- ranger(Species~ ., data = iris, probability = T, importance = "impurity") set.seed(101) viviClassif <- vivi(fit = rfClassif, data = iris, response = "Species", gridSize = 10, nmax = 50, reorder = TRUE, class = "setosa")
Next we plot the heatmap and network plot of the iris data.
viviHeatmap(mat = viviClassif) viviNetwork(mat = viviClassif)
knitr::include_graphics("https://raw.githubusercontent.com/AlanInglis/vivid/master/vividVigplots/classifVIVI.png")
As mentioned above, as PDPs are evaluated on a grid and can extrapolate where there is no data. To solve this issue we calculate a convex hull around the data and remove any points that fall outside the convex hull, as shown below.
set.seed(1701) pdpPairs(data = iris, fit = rfClassif, response = "Species", class = "setosa", convexHull = T, gridSize = 10, nmax = 50)
knitr::include_graphics("https://raw.githubusercontent.com/AlanInglis/vivid/master/vividVigplots/classifGPDP.png")
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