Created
October 5, 2011 02:01
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Fitting various random lines to the housing data to get an intuition about the loss function.
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# Example of randomly chosen lines | |
plot(housing) | |
abline(0, 5, col="red") | |
abline(-50, 10, col="blue") | |
# Create the loss function | |
loss <- function(intercept, slope) sum(((intercept + (slope * housing[, "num.rooms"])) - housing[, "median.values"])^2)/2 | |
# Create some data for a given line and compute the loss | |
loss(0, 5) | |
loss(-30, 10) | |
# Test a few different slopes with different intercepts | |
x <- -50:50 | |
y <- -10:10 | |
z <- sapply(x, function(intercept) (sapply(y, function(slope, intercept) loss(intercept, slope), intercept=intercept))) | |
rownames(z) <- y | |
colnames(z) <- x | |
# 3D plot of loss function | |
library(lattice) | |
wireframe(z, shade=TRUE, xlab="theta0", ylab="theta1", zlab="loss function", aspect = c(61/87, 0.4), light.source = c(10,0,10)) | |
# Contour plot | |
library(reshape) | |
library(ggplot2) | |
loss.values <- as.data.frame(melt(z)) | |
names(loss.values) <- c("slope", "intercept", "loss") | |
v <- ggplot(loss.values, aes(intercept, slope, z = loss)) | |
v + geom_tile(aes(fill = loss)) + stat_contour() |
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