lgb.plot.importance.R 2.99 KB
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#' @name lgb.plot.importance
#' @title Plot feature importance as a bar graph
#' @description Plot previously calculated feature importance: Gain, Cover and Frequency, as a bar graph.
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#' @param tree_imp a \code{data.table} returned by \code{\link{lgb.importance}}.
#' @param top_n maximal number of top features to include into the plot.
#' @param measure the name of importance measure to plot, can be "Gain", "Cover" or "Frequency".
#' @param left_margin (base R barplot) allows to adjust the left margin size to fit feature names.
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#' @param cex (base R barplot) passed as \code{cex.names} parameter to \code{\link[graphics]{barplot}}.
#'            Set a number smaller than 1.0 to make the bar labels smaller than R's default and values
#'            greater than 1.0 to make them larger.
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#'
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#' @details
#' The graph represents each feature as a horizontal bar of length proportional to the defined importance of a feature.
#' Features are shown ranked in a decreasing importance order.
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#'
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#' @return
#' The \code{lgb.plot.importance} function creates a \code{barplot}
#' and silently returns a processed data.table with \code{top_n} features sorted by defined importance.
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#'
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#' @examples
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#' data(agaricus.train, package = "lightgbm")
#' train <- agaricus.train
#' dtrain <- lgb.Dataset(train$data, label = train$label)
#'
#' params <- list(
#'     objective = "binary"
#'     , learning_rate = 0.01
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#'     , num_leaves = 63L
#'     , max_depth = -1L
#'     , min_data_in_leaf = 1L
#'     , min_sum_hessian_in_leaf = 1.0
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#' )
#'
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#' model <- lgb.train(params, dtrain, 10L)
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#'
#' tree_imp <- lgb.importance(model, percentage = TRUE)
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#' lgb.plot.importance(tree_imp, top_n = 10L, measure = "Gain")
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#' @importFrom graphics barplot par
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#' @export
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lgb.plot.importance <- function(tree_imp,
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                                top_n = 10L,
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                                measure = "Gain",
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                                left_margin = 10L,
                                cex = NULL
                                ) {
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  # Check for measurement (column names) correctness
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  measure <- match.arg(
    measure
    , choices = c("Gain", "Cover", "Frequency")
    , several.ok = FALSE
  )
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  # Get top N importance (defaults to 10)
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  top_n <- min(top_n, nrow(tree_imp))
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  # Parse importance
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  tree_imp <- tree_imp[order(abs(get(measure)), decreasing = TRUE), ][seq_len(top_n), ]
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  # Attempt to setup a correct cex
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  if (is.null(cex)) {
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    cex <- 2.5 / log2(1.0 + top_n)
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  }
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  # Refresh plot
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  op <- graphics::par(no.readonly = TRUE)
  on.exit(graphics::par(op))
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  graphics::par(
    mar = c(
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      op$mar[1L]
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      , left_margin
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      , op$mar[3L]
      , op$mar[4L]
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    )
  )
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  # Do plot
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  tree_imp[.N:1L,
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           graphics::barplot(
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               height = get(measure)
               , names.arg = Feature
               , horiz = TRUE
               , border = NA
               , main = "Feature Importance"
               , xlab = measure
               , cex.names = cex
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               , las = 1L
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           )]
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  # Return invisibly
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  invisible(tree_imp)
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}