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| File | Version | Author | Date | Message |
|---|---|---|---|---|
| Rmd | ac8e9ff | Dave Tang | 2025-11-14 | Likelihood Ratio Tests |
This notebook demonstrates three fundamental concepts in statistical hypothesis testing:
We’ll use a simple, concrete example throughout: testing whether a coin is fair.
Suppose we flip a coin 100 times and observe 65 heads. Is this coin fair (\(p = 0.5\)) or biased?
n_flips <- 100
observed_heads <- 65
observed_proportion <- observed_heads / n_flips
A test statistic is a function of our data. For this problem, we’ll use the number of heads as our test statistic.
test_statistic <- observed_heads
test_statistic
[1] 65
The test statistic alone doesn’t tell us much. We need to know: is 65 heads unusual if the coin is fair?
Our null hypothesis (\(H_0\)) is that the coin is fair: \(p = 0.5\).
Under this hypothesis, the number of heads follows a Binomial(100, 0.5) distribution. This is our null distribution.
possible_heads <- 0:100
null_probabilities <- dbinom(possible_heads, size = n_flips, prob = 0.5)
null_dist_df <- data.frame(
heads = possible_heads,
probability = null_probabilities
)
ggplot(null_dist_df, aes(x = heads, y = probability)) +
geom_col(fill = "skyblue", alpha = 0.7) +
geom_vline(xintercept = observed_heads, color = "red", lty = 2) +
annotate(
"text",
x = observed_heads + 10,
y = max(null_probabilities) * 0.9,
label = paste("Observed:", observed_heads),
color = "red",
size = 5
) +
labs(
title = "Null Distribution: Binomial(100, 0.5)",
subtitle = "Distribution of heads if coin is fair",
x = "Number of Heads",
y = "Probability"
) +
theme_minimal()

The p-value is the probability of observing a test statistic as extreme or more extreme than what we observed, assuming the null hypothesis is true.
p_value <- 2 * pbinom(
observed_heads - 1,
size = n_flips,
prob = 0.5,
lower.tail = FALSE
)
p_value
[1] 0.003517642
If the coin were fair, we’d observe 65 or more heads only 0.35% of the time.
We can also build the null distribution empirically through simulation.
set.seed(1984)
n_simulations <- 10000
simulated_heads <- rbinom(n_simulations, size = n_flips, prob = 0.5)
ggplot(data.frame(heads = simulated_heads), aes(x = heads)) +
geom_histogram(
aes(y = after_stat(density)),
bins = 20,
fill = "lightblue",
alpha = 0.7,
color = "black"
) +
geom_vline(
xintercept = observed_heads,
color = "red",
lty = 2
) +
labs(
title = "Simulated Null Distribution (10,000 simulations)",
subtitle = "Each simulation: 100 flips of a fair coin",
x = "Number of Heads",
y = "Density"
) +
theme_minimal()

empirical_p_value <- mean(abs(simulated_heads - 50) >= abs(observed_heads - 50))
round(empirical_p_value, 4)
[1] 0.0029
The Likelihood Ratio Test compares two models:
The likelihood is the probability of observing our data given a model.
p_null <- 0.5
likelihood_null <- dbinom(observed_heads, size = n_flips, prob = p_null)
likelihood_null
[1] 0.0008638557
# Maximum likelihood estimate
p_alternative <- observed_heads / n_flips
likelihood_alternative <- dbinom(observed_heads, size = n_flips, prob = p_alternative)
likelihood_alternative
[1] 0.08340469
my_ratio <- round(likelihood_alternative / likelihood_null, 2)
my_ratio
[1] 96.55
The data is 96.55 times more likely under \(H_1\) than \(H_0\).
We typically work with log-likelihoods because likelihoods can be very small.
log_lik_null <- dbinom(observed_heads, size = n_flips, prob = p_null, log = TRUE)
log_lik_null
[1] -7.054105
log_lik_alternative <- dbinom(observed_heads, size = n_flips, prob = p_alternative, log = TRUE)
log_lik_alternative
[1] -2.484051
The likelihood ratio test statistic is:
\[\Lambda = -2 \log\left(\frac{L(\text{H}_0)}{L(\text{H}_1)}\right) = -2[\log L(\text{H}_0) - \log L(\text{H}_1)]\]
lrt_statistic <- -2 * (log_lik_null - log_lik_alternative)
lrt_statistic
[1] 9.140108
Under certain conditions (Wilks’ theorem), the LRT statistic follows a chi-squared distribution with degrees of freedom equal to the difference in number of parameters between models. In this case: df = 1 (alternative has 1 more parameter than null).
# Degrees of freedom
df <- 1
# P-value from chi-squared distribution
lrt_p_value <- pchisq(lrt_statistic, df = df, lower.tail = FALSE)
chi_sq_values <- seq(0, 15, length.out = 1000)
chi_sq_density <- dchisq(chi_sq_values, df = df)
ggplot(data.frame(x = chi_sq_values, y = chi_sq_density), aes(x, y)) +
geom_line(linewidth = 1, color = "blue") +
geom_area(
data = subset(
data.frame(
x = chi_sq_values,
y = chi_sq_density
),
x >= lrt_statistic
),
aes(x, y),
fill = "red",
alpha = 0.3
) +
geom_vline(xintercept = lrt_statistic, color = "red", lty = 2) +
annotate(
"text",
x = lrt_statistic + 2,
y = 3,
label = paste("Observed LRT:", round(lrt_statistic, 2)),
color = "red", size = 5) +
labs(
title = "Null Distribution of LRT Statistic",
subtitle = "Chi-squared distribution with 1 degree of freedom",
x = "LRT Statistic Value",
y = "Density"
) +
theme_minimal()

Let’s verify our LRT matches the standard proportion test:
# Standard proportion test
prop_test <- prop.test(observed_heads, n_flips, p = 0.5, correct = FALSE)
cat("=== Comparison of Methods ===\n\n")
=== Comparison of Methods ===
cat("Exact binomial test p-value:", round(p_value, 4), "\n")
Exact binomial test p-value: 0.0035
cat("Simulated p-value:", round(empirical_p_value, 4), "\n")
Simulated p-value: 0.0029
cat("LRT p-value:", round(lrt_p_value, 4), "\n")
LRT p-value: 0.0025
cat("prop.test p-value:", round(prop_test$p.value, 4), "\n")
prop.test p-value: 0.0027
sessionInfo()
R version 4.5.0 (2025-04-11)
Platform: x86_64-pc-linux-gnu
Running under: Ubuntu 24.04.3 LTS
Matrix products: default
BLAS: /usr/lib/x86_64-linux-gnu/openblas-pthread/libblas.so.3
LAPACK: /usr/lib/x86_64-linux-gnu/openblas-pthread/libopenblasp-r0.3.26.so; LAPACK version 3.12.0
locale:
[1] LC_CTYPE=en_US.UTF-8 LC_NUMERIC=C
[3] LC_TIME=en_US.UTF-8 LC_COLLATE=en_US.UTF-8
[5] LC_MONETARY=en_US.UTF-8 LC_MESSAGES=en_US.UTF-8
[7] LC_PAPER=en_US.UTF-8 LC_NAME=C
[9] LC_ADDRESS=C LC_TELEPHONE=C
[11] LC_MEASUREMENT=en_US.UTF-8 LC_IDENTIFICATION=C
time zone: Etc/UTC
tzcode source: system (glibc)
attached base packages:
[1] stats graphics grDevices utils datasets methods base
other attached packages:
[1] lubridate_1.9.4 forcats_1.0.0 stringr_1.5.1 dplyr_1.1.4
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loaded via a namespace (and not attached):
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[33] fs_1.6.6 pkgconfig_2.0.3 callr_3.7.6 pillar_1.10.2
[37] bslib_0.9.0 later_1.4.2 gtable_0.3.6 glue_1.8.0
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[49] rmarkdown_2.29 compiler_4.5.0 getPass_0.2-4