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A4.Rmd
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---
title: "A4Q1"
author: "Tianyi Fang"
date: "April 18, 2018"
output: pdf_document
---
```{r setup, include=FALSE}
knitr::opts_chunk$set(echo = TRUE)
```
```{r}
library(ggplot2)
```
```{r}
air_data = read.csv("AirCondData4WebSp2018.csv")
#only need first and second row
n1 = air_data$fail_n[1]
n2 = air_data$fail_n[2]
xbar1 = air_data$avg_hour[1]
xbar2 = air_data$avg_hour[2]
```
(a)
f(xi1|tethaj1) = exp(thetaj1)
f(thetai|alpha, beta) = gamma(alpha, beta)
alpha = U[a,b]
```{r}
air_test_func <- function(n, a, b){
#create a df to record test result
air_test = data.frame('alpha' = rep(NA, n), 'beta' = rep(NA,n), 'theta1'=rep(NA, n), 'theta2'=rep(NA, n), 'u' = rep(NA, n), 'r' = rep(NA, n))
#Initialize
air_test$theta1[1] = 1
air_test$theta2[1] = 1
air_test$alpha[1] = runif(1, a, b)
air_test$beta[1] = runif(1, -0.05*air_test$alpha[1] + 4, -0.05*air_test$alpha[1]+5.3)
#iteratively generate theta1 and theta2 by MCMC
i = 2
while(i <= n){
air_test$alpha[i]= runif(1, a, b)
air_test$beta[i] = runif(1, -0.05*air_test$alpha[i] + 4, -0.05 * air_test$alpha[i]+5.3)
theta1_star = rgamma(1, shape = air_test$alpha[i], scale = air_test$beta[i])
theta2_star = rgamma(1, shape = air_test$alpha[i], scale = air_test$beta[i])
num = (1/theta1_star)^n1*(exp(-n1*(xbar1/theta1_star)))*(1/theta2_star)^n2*(exp(-n2*(xbar2/theta2_star)))
dem = (1/air_test$theta1[i-1])^n1*(exp(-n1*(xbar1/air_test$theta1[i-1])))*(1/air_test$theta2[i-1])^n2*(exp(-n2*(xbar2/air_test$theta2[i-1])))
ratio = min(num/dem, 1)
u = runif(1,0,1)
if(u < ratio){
#update with theta_star
air_test$theta1[i] = theta1_star
air_test$theta2[i] = theta2_star
#check u<r
air_test$r[i] = ratio
air_test$u[i] = u
i = i + 1
}
}
#drop burn_in
t_burn = 0.05*n
air_drop_burnin = air_test[-(1:t_burn), ]
n_new = nrow(air_drop_burnin)
#print the result
print(paste('avg_alpha:', mean(air_drop_burnin$alpha)))
print(paste('avg_beta:', mean(air_drop_burnin$beta)))
print(paste('avg_theta1:', mean(air_drop_burnin$theta1)))
print(paste('avg_theta2:', mean(air_drop_burnin$theta2)))
print(paste('P(??1 ??? ??2 +10|X1, X2):', sum(air_drop_burnin$theta1-air_drop_burnin$theta2 >=10)/n_new))
print(paste('P(??1 ??? ??2 +20|X1, X2):', sum(air_drop_burnin$theta1-air_drop_burnin$theta2 >=20)/n_new))
return(air_drop_burnin)
}
```
n=10000, a = 30, b = 45 for U(a,b)
```{r}
result1 = air_test_func(10000, 30, 45)
```
```{r}
result2 = air_test_func(10000, 30, 65)
```
(b) alpha = 40, beta = 2.5
```{r}
air_test_func2 <- function(n){
#create a df to record test result
air_test = data.frame('theta1'=rep(NA, n), 'theta2'=rep(NA, n), 'u' = rep(NA, n), 'r' = rep(NA, n))
#Initialize
air_test$theta1[1] = 1
air_test$theta2[1] = 1
alpha = 40
beta = 2.5
#iteratively generate theta1 and theta2 by MCMC
i = 2
while(i <= n){
theta1_star = rgamma(1, shape = alpha, scale = beta)
theta2_star = rgamma(1, shape = alpha, scale = beta)
num = (1/theta1_star)^n1*(exp(-n1*(xbar1/theta1_star)))*(1/theta2_star)^n2*(exp(-n2*(xbar2/theta2_star)))
dem = (1/air_test$theta1[i-1])^n1*(exp(-n1*(xbar1/air_test$theta1[i-1])))*(1/air_test$theta2[i-1])^n2*(exp(-n2*(xbar2/air_test$theta2[i-1])))
ratio = min(num/dem, 1)
u = runif(1,0,1)
if(u < ratio){
#update with theta_star
air_test$theta1[i] = theta1_star
air_test$theta2[i] = theta2_star
#check u<r
air_test$r[i] = ratio
air_test$u[i] = u
i = i + 1
}
}
#drop burn_in
t_burn = 0.05*n
air_drop_burnin = air_test[-(1:t_burn), ]
n_new = nrow(air_drop_burnin)
#print the result
print(paste('avg_theta1:', mean(air_drop_burnin$theta1)))
print(paste('avg_theta2:', mean(air_drop_burnin$theta2)))
print(paste('P(??1 ??? ??2 +10|X1, X2):', sum(air_drop_burnin$theta1-air_drop_burnin$theta2 >=10)/n_new))
print(paste('P(??1 ??? ??2 +20|X1, X2):', sum(air_drop_burnin$theta1-air_drop_burnin$theta2 >=20)/n_new))
return(air_drop_burnin)
}
```
```{r}
result_b = air_test_func2(10000)
```
Extra Credit: doing it using result of (a)
```{r}
delta = seq(10, 20, 0.5)
p = rep(NA, length(delta))
for(i in (1:length(delta))){
b = delta[i]
p[i] = sum(result1$theta1-result1$theta2 >=b)/n_new
}
g1 = data.frame('delta' = delta, 'prob' = p)
ggplot(g1, aes(x = g1.delta, y = g1.prob)) + geom_line()
```
Q2
```{r}
lamb_data = read.csv('q3data.csv')
lxbar2 = lamb_data$Average[2]
lxbar3 = lamb_data$Average[3]
sigma2 = 9
sigma3 = 9
n2 = 9
n3 = 9
```
h1(beta) = U[8,18], h2(taos) = gamma(16, 0.25)
method1
```{r}
lamb_test = data.frame('beta'= rep(NA, n), 'tao'=rep(NA, n), 'm2' = rep(NA,n), 'm3'= rep(NA,n), 'v2'= rep(NA,n), 'v3'= rep(NA,n), 'y2'= rep(NA,n), 'y3'= rep(NA,n))
n= 1000
lamb_test$beta = runif(n, 8, 18)
lamb_test$tao = rgamma(n, 16, 0.25)
lamb_test$m2 = (sigma2*lamb_test$beta + lamb_test$tao*lxbar2)/(sigma2/n2+lamb_test$tao)
lamb_test$m3 = (sigma3*lamb_test$beta + lamb_test$tao*lxbar3)/(sigma3/n3+lamb_test$tao)
lamb_test$v2 = (sigma2/n2*lamb_test$tao)/(sigma2/n2+lamb_test$tao)
lamb_test$v3 = (sigma3/n3*lamb_test$tao)/(sigma3/n3+lamb_test$tao)
lamb_test$y2 = rnorm(n,lamb_test$m2, sigma2+lamb_test$v2)
lamb_test$y3 = rnorm(n,lamb_test$m3, sigma2+lamb_test$v3)
```
method2, directly getP(y2-y3>b|X2, X3)
```{r}
m_delta = lamb_test$tao/(1+lamb_test$tao)*(lxbar2-lxbar3)
dem = sqrt(18+2*lamb_test$tao/(1+lamb_test$tao))
lamb_result2 = data.frame('m2_m3' = m_delta, 'dem' = dem)
```
y2-y3 > b
```{r}
lamb_result = data.frame('y2' = lamb_test$y2, 'y3' = lamb_test$y3)
get_lamb_result <- function(df, var){
for(i in var){
b = strtoi(substr(i, 2,2))
df[i] = ifelse(df['y2']>df['y3'] + b, 1,0)
#lamb_result = cbind(lamb_result, i_result)
print(paste('P(y2>y3+',b, 'is:', colMeans(df[i])))
}
return(df)
}
get_lamb_result2 <- function(df, var){
for(i in var){
b = strtoi(substr(i, 2,2))
df[i] = 1-dnorm(unlist((b-df['m2_m3'])/df['dem']))
#lamb_result = cbind(lamb_result, i_result)
print(paste('P(y2>y3+',b, 'is:', colMeans(df[i])))
}
return(df)
}
```
```{r}
var = c('b0', 'b1', 'b3', 'b5')
lamb_1 = get_lamb_result(lamb_result, var)
lamb_2 = get_lamb_result2(lamb_result2, var)
```
Q3
```{r}
deltaq = c(32, 34, 36, 38, 40)
deltaq2 = seq(32, 40, 0.5)
q = 100
r = 100
n = 200
sigma = 20
p2 = rep(NA, length(deltaq2))
for (i in deltaq2){
index = which(deltaq2 == i)
c_nqr2 = n/r*(30+1.28*sqrt(2*sigma/n)-q/n*i)
pp2 = dnorm((i-c_nqr2)/sqrt(2*sigma/r + 2*sigma/q))
print(pp2)
p2[index] = pp2
}
g = data.frame('delta' = deltaq, 'prob' = p)
g2 =data.frame('delta' = deltaq2, 'prob' = p2)
#plot
ggplot() +
geom_point(data = g, aes(x = delta, y = prob), color = 'red')+
geom_line(data = g, aes(x = delta, y = prob), color = 'red') +
geom_point(data = g2, aes(x = delta, y = prob), color = 'darkblue')+
geom_line(data = g2, aes(x = delta, y = prob), color = 'darkblue') +
ggtitle('Distribution of P based on different deltaq') + xlab('deltaq') +ylab('probability')
```
EXTRA CREDIT: SPRT
```{r}
theta2 = 1
theta1 = 0
upper = rep(NA, 20)
lower = rep(NA, 20)
for(i in seq(1, 21)){
#get (lower, upper) for i(1~20) stage
upper[i] = log(9)/(theta2-theta1) + i*(theta1+theta2)/2
lower[i] = -log(9)/(theta2-theta1) + i*(theta1+theta2)/2
}
library(tidyr)
bound = data.frame('index' = seq(1, 21), 'upper' = upper, 'lower' = lower)
bound %>%
gather(key, value, upper, lower) %>%
ggplot(aes(x = index, y = value, colour = key)) +
geom_line(size = 2) +
ggtitle(" Bound Area for X(theta1 = 0, theta2 = 1)") +
xlab('n') + ylab('SumXi')
```
simulation
```{r}
#generate 1000 sequences, each sequence with 20 steps
a = 1000
b = 20
sprt_matrix = matrix(NA, nrow = a, ncol = b)
stop_vector = rep(NA, a)
sum_x = rep(NA, a)
for(t in seq(1, a)){
print(paste('At', t, 'sequence'))
i = 1
while(i < b){
#get the xi
sprt_matrix[t, i] = rnorm(1, 0.5, 1)
sumxi= sum(sprt_matrix[t, i])
if(sumxi >= upper[i]){
print(paste('Stop! at', i, 'stage, say theta = theta2'))
stop_vector[t] = i
sum_x[t] = sumxi
break
}else if(sumxi <= lower[i]){
print(paste('Stop! at', i, 'stage, say theta = theta1'))
stop_vector[t] =i
sum_x[t] = sumxi
break
}else{
#print(paste('Continue to', i+1, 'stage'))
i = i+1
}
}
}
# get the percentage of stop at i stage
print('How is the probability stop at i:')
print(table(stop_vector)/a)
print('The probability it will stop within some number:')
print(sum(table(stop_vector)/a))
```
```{r}
library(reshape2)
rr = data.frame('stage' = stop_vector, 'sumx' = sum_x)
ggplot() +
geom_line(data = bound, mapping = aes(x = index, y = upper), colour = '#d95f02', linetype = 1, size = 2) +
geom_line(data = bound, mapping = aes(x = index, y = lower), colour = '#1b9e77', linetype = 1, size = 2) +
geom_point(data = rr, mapping = (aes(x = stage, y = sumx))) +
xlab('n') + ylab('SumXi')