mtt_haum/code/03_haum_descriptives.R

302 lines
9.5 KiB
R

# setwd("C:/Users/nwickelmaier/Nextcloud/Documents/MDS/2023ss/60100_master_thesis/code/")
library(lattice)
#library(mtt)
devtools::load_all("../../../../software/mtt")
# Achims colors (used by lattice)
#cc <- palette.colors(palette = "Okabe-Ito")
#plot(1:10, col = cc, pch = 16, cex = 2)
# Read data
datlogs <- read.table("results/haum/event_logfiles_2024-01-02_19-44-50.csv",
colClasses = c("character", "character", "POSIXct",
"POSIXct", "character", "integer",
"numeric", "character", "character",
rep("numeric", 3), "character",
"character", rep("numeric", 11),
"character", "character"),
sep = ";", header = TRUE)
datlogs$event <- factor(datlogs$event, levels = c("move", "flipCard",
"openTopic",
"openPopup"))
### Number of log files
length(unique(datlogs$fileId.start))
length(unique(datlogs$fileId.stop))
length(unique(c(datlogs$fileId.start, datlogs$fileId.stop)))
# 22803
### Number of activities
nrow(datlogs)
table(datlogs$event)
proportions(table(datlogs$event))
proportions(table(datlogs$event[datlogs$event != "move"]))
### Time range
range(as.Date(datlogs$date.start))
### Topics per item
print(xtabs( ~ item + topic, datlogs), zero = "-")
lattice::dotplot(xtabs( ~ item + topic, datlogs), auto.key = TRUE)
### Which item gets touched most often?
counts_item <- table(datlogs$item)
barchart(counts_item)
items <- unique(datlogs$item)
#items <- items[!items %in% c("504", "505")]
datart <- extract_artworks(items,
paste0(items, ".xml"),
"../data/haum/ContentEyevisit/eyevisit_cards_light/")
datart <- datart[order(datart$artwork), ]
names(counts_item) <- datart$title
pdf("../figures/counts_item.pdf", width = 20, height = 10, pointsize = 10)
par(mai = c(5, .6, .1, .1))
tmp <- barplot(counts_item, las = 2, ylim = c(0, 60000),
border = "white", col = "#3CB4DC")
text(tmp, counts_item + 1000, datart$artwork)
dev.off()
### Which item gets touched most often first?
datcase <- datlogs[!duplicated(datlogs$case), ]
counts_case <- table(datcase$item)
names(counts_case) <- datart$title
tmp <- barplot(counts_case, las = 2, border = "white")
text(tmp, counts_case + 100, datart$item)
counts <- rbind(counts_item, counts_case)
barplot(counts, las = 2, border = "white", col = c("gray", "darkorange"))
### Which teasers seem to work well?
barplot(table(datlogs$topic), las = 2)
### Dwell times/duration
datagg <- aggregate(duration ~ event + item, datlogs, mean)
datagg$ds <- datagg$duration / 1000
bwplot(ds ~ event, datagg)
bwplot(ds ~ event | item, datagg)
xyplot(ds ~ event, datagg, groups = item)
# without aggregation
bwplot(duration ~ event, datlogs)
# in min
set.seed(1027)
pdf("../figures/duration.pdf", width = 5, height = 5, pointsize = 10)
bwplot(I(duration/1000/60) ~ event, datlogs[sample(nrow(datlogs), 100000), ],
ylab = "Duration in min")
dev.off()
### Move events
datmove <- aggregate(cbind(duration, scaleSize, rotationDegree, distance, x.start,
y.start, x.stop, y.stop) ~ item, datlogs,
mean)
hist(log(datlogs$scaleSize))
# --> better interpretable on logscale
plot(y.start ~ x.start, datmove, pch = 16, col = "gray")
points(y.start ~ x.start, datmove, col = "#3CB4DC", cex = datmove$scaleSize)
plot(y.start ~ x.start, datmove, type = "n", xlab = "x", ylab = "y",
xlim = c(0, 3840), ylim = c(0, 2160))
with(datmove, text(x.start, y.start, item, col = "gray", cex = 1.5))
with(datmove,
arrows(x.start, y.start, x.stop, y.stop, length = 0.07, lwd = 2)
)
abline(v = c(0, 3840), h = c(0, 2160), col = "#3CB4DC", lwd = 2)
datscale <- aggregate(scaleSize ~ item, datlogs, max)
plot(y.start ~ x.start, datmove, pch = 16, col = "gray")
points(y.start ~ x.start, datmove, col = "#3CB4DC", cex = datscale$scaleSize)
plot(y.start ~ x.start, datmove, type = "n", xlab = "x", ylab = "y",
xlim = c(0, 3840), ylim = c(0, 2160))
#with(datmove, text(x.stop, y.stop, item))
with(datmove, text(x.start, y.start, item))
### Are there certain areas of the table that are touched most often?
# heatmap
cuts <- 100
datlogs$x.start.cat <- cut(datlogs$x.start, cuts)
datlogs$y.start.cat <- cut(datlogs$y.start, cuts)
tab <- xtabs( ~ x.start.cat + y.start.cat, datlogs)
colnames(tab) <- paste0("c", 1:cuts)
rownames(tab) <- paste0("c", 1:cuts)
heatmap(tab, Rowv = NA, Colv = NA)
library(ggplot2)
ggplot(as.data.frame(tab)) +
geom_tile(aes(x = x.start.cat, y = y.start.cat, fill = Freq)) +
scale_fill_gradient(low = "gray40", high = "orange")
dattrim <- datlogs[datlogs$x.start < 3840 &
datlogs$x.start > 0 &
datlogs$y.start < 2160 &
datlogs$y.start > 0 &
datlogs$x.stop < 3840 &
datlogs$x.stop > 0 &
datlogs$y.stop < 2160 &
datlogs$y.stop > 0, ]
cuts <- 100 # 200, 100, 70, ...
# start
dattrim$x.start.cat <- cut(dattrim$x.start, cuts)
dattrim$y.start.cat <- cut(dattrim$y.start, cuts)
tab.start <- xtabs( ~ x.start.cat + y.start.cat, dattrim)
colnames(tab.start) <- NULL
rownames(tab.start) <- NULL
pdf("../figures/heatmap_start.pdf", width = 5, height = 5, pointsize = 10)
heatmap(tab.start, Rowv = NA, Colv = NA)
dev.off()
my_colors <- colorRampPalette(c("#009E73", "#E69F00"))
heatmap(tab.start, Rowv = NA, Colv = NA, col = my_colors(1000))
ggplot(as.data.frame(tab.start)) +
geom_tile(aes(x = x.start.cat, y = y.start.cat, fill = Freq)) +
scale_fill_gradient(low = "#009E73", high = "#E69F00")
# stop
dattrim$x.stop.cat <- cut(dattrim$x.stop, cuts)
dattrim$y.stop.cat <- cut(dattrim$y.stop, cuts)
tab.stop <- xtabs( ~ x.stop.cat + y.stop.cat, dattrim)
colnames(tab.stop) <- NULL
rownames(tab.stop) <- NULL
pdf("../figures/heatmap_stop.pdf", width = 5, height = 5, pointsize = 10)
heatmap(tab.stop, Rowv = NA, Colv = NA)
dev.off()
heatmap(tab.stop, Rowv = NA, Colv = NA, col = my_colors(10))
### How many visitors per day
datlogs$date <- as.Date(datlogs$date.start)
# Interactions per day
datint <- aggregate(case ~ date, datlogs, length)
plot(datint, type = "h")
# Cases per day
datcase <- aggregate(case ~ date, datlogs, function(x) length(unique(x)))
plot(datcase, type = "h")
# Paths per day
datpath <- aggregate(path ~ date, datlogs, function(x) length(unique(x)))
plot(datpath, type = "h")
plot(path ~ date, datpath, type = "h", col = "#3CB4DC")
points(case ~ date, datcase, type = "h")
pdf("../figures/cases_per_day2.pdf", width = 9, height = 5, pointsize = 10)
par(mai = c(.6, .6, .1, .1), mgp = c(2.4, 1, 0))
plot(case ~ date, datcase, type = "h", col = "#3CB4DC")
abline(v = datcase$date[datcase$date %in% c("2020-03-13", "2022-10-25")],
col = "#FF6900", lty = 2)
text(datcase$date[datcase$date == "2020-03-13"]+470, 80,
"Corona gap from 2020-03-13 to 2022-10-25",
col = "#D55E00")
dev.off()
### Other stuff
## function dependencies of mtt
devtools::load_all("../../../../software/mtt")
#library(mtt)
library(mvbutils)
foodweb(where = "package:mtt")
pdf("../figures/fun_depend_mtt.pdf", width = 8, height = 4, pointsize = 10)
foodweb(where = "package:mtt",
prune = c("parse_logfiles", "create_eventlogs", "extract_artworks",
"extract_topics"),
#expand.ybox = 1.8, #cex = .6,
#border = TRUE,
#boxcolor = "gray",
color.lines = FALSE,
lwd = 2, mai = c(0, 0, 0, 0))
dev.off()
## weird behavior of timeMs
pdf("../figures/timeMs.pdf", width = 9, height = 6, pointsize = 10)
#par(mai = c(.6, .6, .1, .1), mgp = c(2.4, 1, 0))
#plot(timeMs.start ~ as.factor(fileId), datlogs[1:2000,], xlab = "fileId")
bwplot(timeMs.start ~ as.factor(fileId.start), datlogs[1:2000,], xlab = "",
scales = list(x = list(rot = 90), y = list(rot = 90)))
dev.off()
## x,y-coordinates out of range
set.seed(1522)
pdf("../figures/xycoord.pdf", width = 5, height = 5, pointsize = 10)
par(mai = c(.6, .6, .1, .1), mgp = c(2.4, 1, 0))
#par(mfrow = c(1, 2))
plot(y.start ~ x.start, datlogs[sample(nrow(datlogs), 10000), ])
abline(v = c(0, 3840), h = c(0, 2160), col = "#3CB4DC", lwd = 2)
#plot(y.stop ~ x.stop, datlogs)
#abline(v = c(0, 3840), h = c(0, 2160), col = "#3CB4DC", lwd = 2)
legend("bottomleft", "Random sample of 10,000", bg = "white")
legend("topleft", "4K-Display: 3840 x 2160", bg = "white")
dev.off()
## moves
dat001 <- datlogs[which(datlogs$item == "001"), ]
index <- as.numeric(as.factor(dat001$path))
cc <- sample(colors(), 100)
plot(y.start ~ x.start, dat001, type = "n", xlab = "x", ylab = "y",
xlim = c(0, 3840), ylim = c(0, 2160))
with(dat001[1:200,], arrows(x.start, y.start, x.stop, y.stop,
length = .07, col = cc[index]))
plot(y.start ~ x.start, dat001, xlab = "x", ylab = "y",
xlim = c(0, 3840), ylim = c(0, 2160), pch = 16, col = "gray")
points(y.start ~ x.start, dat001, xlab = "x", ylab = "y",
xlim = c(0, 3840), ylim = c(0, 2160), cex = dat001$scaleSize,
col = "blue")
cc <- sample(colors(), 70)
dat1 <- datlogs[!duplicated(datlogs$item), ]
dat1 <- dat1[order(dat1$item), ]
plot(y.start ~ x.start, dat1, type = "n", xlim = c(-100, 4500), ylim = c(-100, 2500))
abline(h = c(0, 2160), v = c(0, 3840), col = "lightgray")
with(dat1, points(x.start, y.start, col = cc, pch = 16))
with(dat1, points(x.stop, y.stop, col = cc, pch = 16))
with(dat1, arrows(x.start, y.start, x.stop, y.stop, length = .07, col = cc))