# fm_casestudy_1_rcode_CAPM.r
#Execute the R-script ``fm_casestudy_1_0_DownloadData.r''
# creates the time-series matrix $casestudy1.data0.00$
# and saves it in R-workspace ``casestudy_1_0.Rdata'.
#source("fm_casestudy_1_0.r")
# 0.1 Load libraries ----
library("zoo")
## Warning: package 'zoo' was built under R version 3.1.3
##
## Attaching package: 'zoo'
##
## The following objects are masked from 'package:base':
##
## as.Date, as.Date.numeric
library("quantmod")
## Warning: package 'quantmod' was built under R version 3.1.3
## Loading required package: xts
## Warning: package 'xts' was built under R version 3.1.3
## Loading required package: TTR
## Warning: package 'TTR' was built under R version 3.1.3
## Version 0.4-0 included new data defaults. See ?getSymbols.
library("coefplot")
## Warning: package 'coefplot' was built under R version 3.1.3
## Loading required package: ggplot2
## Warning: package 'ggplot2' was built under R version 3.1.3
library ("graphics")
library("ggplot2")
#####
# 0.2 Load R dataset: casestudy_1_0.Rdata ----
load("casestudy_1_0.RData")
dim(casestudy1.data0.00)
## [1] 3834 14
names(casestudy1.data0.00)
## [1] "BAC" "GE" "JDSU" "XOM" "SP500"
## [6] "AEP" "DUK" "DGS3MO" "DGS1" "DGS5"
## [11] "DGS10" "DAAA" "DBAA" "DCOILWTICO"
head(casestudy1.data0.00)
## BAC GE JDSU XOM SP500 AEP DUK
## 2000-01-03 15.61121 31.37894 752.00 27.45076 1455.22 14.97396 40.60250
## 2000-01-04 14.68461 30.12378 684.50 26.92497 1399.42 15.15257 41.23363
## 2000-01-05 14.84576 30.07149 633.00 28.39281 1402.11 15.71819 42.91664
## 2000-01-06 16.11480 30.47353 599.00 29.86064 1403.45 15.80750 44.07370
## 2000-01-07 15.69179 31.65351 719.75 29.77301 1441.47 16.01588 45.23077
## 2000-01-10 15.14791 31.64044 801.50 29.35676 1457.60 15.95634 45.17818
## DGS3MO DGS1 DGS5 DGS10 DAAA DBAA DCOILWTICO
## 2000-01-03 5.48 6.09 6.50 6.58 7.75 8.27 NA
## 2000-01-04 5.43 6.00 6.40 6.49 7.69 8.21 25.56
## 2000-01-05 5.44 6.05 6.51 6.62 7.78 8.29 24.65
## 2000-01-06 5.41 6.03 6.46 6.57 7.72 8.24 24.79
## 2000-01-07 5.38 6.00 6.42 6.52 7.69 8.22 24.79
## 2000-01-10 5.42 6.07 6.49 6.57 7.72 8.27 24.71
tail(casestudy1.data0.00)
## BAC GE JDSU XOM SP500 AEP DUK DGS3MO DGS1 DGS5
## 2015-03-24 15.61 25.27 13.48 84.52 2091.50 57.25 76.06 0.02 0.24 1.37
## 2015-03-25 15.41 24.91 13.04 84.86 2061.05 55.91 74.96 0.04 0.25 1.41
## 2015-03-26 15.42 24.80 13.03 84.32 2056.15 55.33 74.35 0.03 0.28 1.47
## 2015-03-27 15.31 24.86 12.98 83.58 2061.02 55.90 75.00 0.04 0.27 1.42
## 2015-03-30 15.52 25.12 13.14 85.63 2086.24 56.58 75.90 0.04 0.27 1.41
## 2015-03-31 15.39 24.81 13.12 85.00 2067.89 56.25 76.78 0.03 0.26 1.37
## DGS10 DAAA DBAA DCOILWTICO
## 2015-03-24 1.88 3.50 4.41 47.03
## 2015-03-25 1.93 3.52 4.46 48.75
## 2015-03-26 2.01 3.61 4.56 51.41
## 2015-03-27 1.95 3.53 4.48 48.83
## 2015-03-30 1.96 3.55 4.51 48.66
## 2015-03-31 1.94 3.52 4.49 47.72
# 0.3 Define functions ----
# function to compute daily returns of a symbol
fcn.compute.r.daily.symbol0<-function(
symbol0="SP500",
rdbase0=casestudy1.data0.00, scaleLog=FALSE){
indexcol.symbol0<-match(symbol0, dimnames(rdbase0)[[2]],nomatch=0)
if (indexcol.symbol0==0){ return(NULL)}
if(scaleLog==FALSE){
r.daily.symbol0<-zoo(
x=exp(as.matrix(diff(log(rdbase0[,indexcol.symbol0]))))-1,
order.by=as.Date(time(rdbase0)[-1]))
dimnames(r.daily.symbol0)[[2]]<-paste("r.daily.",symbol0,sep="")
return(r.daily.symbol0)
}
if(scaleLog==TRUE){
r.daily.symbol0<-zoo(
x=(as.matrix(diff(log(rdbase0[,indexcol.symbol0])))),
#order.by=time(rdbase0)[-1])
order.by=as.Date(time(rdbase0)[-1]))
dimnames(r.daily.symbol0)[[2]]<-paste("dlog.daily.",symbol0,sep="")
return(r.daily.symbol0)
}
return(NULL)
}
fcn.compute.r.daily.riskfree<-function(rdbase0=casestudy1.data0.00){
r.daily.riskfree<-(.01*coredata(rdbase0[-1,"DGS3MO"]) *
diff(as.numeric(time(rdbase0)))/360)
dimnames(r.daily.riskfree)[[2]]<-"r.daily.riskfree"
r.daily.riskfree0<-zoo(
x=as.matrix(r.daily.riskfree),
#order.by=time(rdbase0)[-1])
order.by=as.Date(time(rdbase0)[-1]))
return(r.daily.riskfree0)
}
# function to compute submatrix of kperiod returns
fcn.rollksub<-function(x,kperiod=2,...){
x.0<-filter(as.matrix(coredata(x)), f=rep(1,times=kperiod), sides=1)
n0=floor(length(x)/kperiod)
indexsub0<-seq(kperiod,length(x),kperiod)
x.00<-x.0[indexsub0]
return(x.00)
}
# 1.1 Define list.symbol.00
list.symbol.00<-c("GE","BAC","XOM","JDSU")
# 2.0 Setup CAPM for symbol0 ----
symbol0<-list.symbol.00[1]
#symbol0<-list.symbol.00[2]
#symbol0<-list.symbol.00[3]
#symbol0<-list.symbol.00[4]
# 2.1 Plot time series of symbol0, SP500 and risk-free asset -----
# symbol0, SP500, and the risk-free interest rate
opar<-par()
# set graphics parameter to 3 panels
par(mfcol=c(3,1))
plot(casestudy1.data0.00[,symbol0],ylab="Price",
main=paste(symbol0, " Stock",sep=""))
plot(casestudy1.data0.00[,"SP500"], ylab="Value",main="S&P500 Index")
plot(casestudy1.data0.00[,"DGS3MO"], ylab="Rate" ,
main="3-Month Treasury Rate (Constant Maturity)")
![](data:image/png;base64,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)
# reset graphics parameter to 1 panel
par(mfcol=c(1,1))
# 2.2 Compute the returns series ----
r.daily.symbol0<-fcn.compute.r.daily.symbol0(symbol0, casestudy1.data0.00)
r.daily.SP500<-fcn.compute.r.daily.symbol0("SP500", casestudy1.data0.00)
r.daily.riskfree<-fcn.compute.r.daily.riskfree(casestudy1.data0.00)
# Note for returns time series of riskfree asset
# holding periods vary from 1-3 days corresponding
# to mid-week and over-weekend returns)
# plot(r.daily.riskfree)
# Compute excess returns of symbol0 and SP500
r.daily.symbol0.0 <-r.daily.symbol0 - r.daily.riskfree
dimnames(r.daily.symbol0.0)[[2]]<-paste("r.daily.",symbol0,".0",sep="")
r.daily.SP500.0<-r.daily.SP500 - r.daily.riskfree
dimnames(r.daily.SP500.0)[[2]]<-"r.daily.SP500.0"
dim(r.daily.SP500.0)
## [1] 3833 1
# 2.3 Create r.daily.data0 = merged series ----
# and display first and last sets of rows
dimnames(r.daily.symbol0)[[2]]
## [1] "r.daily.GE"
# Note: r.daily.symbol0 has names that use symbol0
r.daily.data0<-merge(r.daily.symbol0, r.daily.SP500, r.daily.riskfree,
r.daily.symbol0.0, r.daily.SP500.0)
head(r.daily.data0)
## r.daily.GE r.daily.SP500 r.daily.riskfree r.daily.GE.0
## 2000-01-04 -0.0400000000 -0.038344670 0.0001508333 -0.0401508333
## 2000-01-05 -0.0017359722 0.001922189 0.0001511111 -0.0018870833
## 2000-01-06 0.0133694590 0.000955674 0.0001502778 0.0132191812
## 2000-01-07 0.0387214059 0.027090400 0.0001494444 0.0385719615
## 2000-01-10 -0.0004129203 0.011189973 0.0004516667 -0.0008645869
## 2000-01-11 0.0016527601 -0.013062514 0.0001508333 0.0015019268
## r.daily.SP500.0
## 2000-01-04 -0.0384955037
## 2000-01-05 0.0017710780
## 2000-01-06 0.0008053962
## 2000-01-07 0.0269409552
## 2000-01-10 0.0107383063
## 2000-01-11 -0.0132133472
tail(r.daily.data0)
## r.daily.GE r.daily.SP500 r.daily.riskfree r.daily.GE.0
## 2015-03-24 -0.007852375 -0.006139421 5.555556e-07 -0.007852931
## 2015-03-25 -0.014246142 -0.014558905 1.111111e-06 -0.014247253
## 2015-03-26 -0.004415897 -0.002377502 8.333333e-07 -0.004416731
## 2015-03-27 0.002419355 0.002368563 1.111111e-06 0.002418244
## 2015-03-30 0.010458568 0.012236645 3.333333e-06 0.010455235
## 2015-03-31 -0.012340764 -0.008795776 8.333333e-07 -0.012341598
## r.daily.SP500.0
## 2015-03-24 -0.006139977
## 2015-03-25 -0.014560016
## 2015-03-26 -0.002378335
## 2015-03-27 0.002367452
## 2015-03-30 0.012233312
## 2015-03-31 -0.008796610
# 2.4 Excess Returns plot: symbol0 vs SP500 ----
par(mfcol=c(1,1))
plot(r.daily.SP500.0, r.daily.symbol0.0, main=symbol0)
abline(h=0,v=0)
![](data:image/png;base64,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)
# 3. Linear Regression for CAPM ----
#The linear regression model is fit using the R-function lm():
options(show.signif.stars=FALSE)
# (by default the output from summary.lm() uses stars (*)
# to indicate significant coefficients;
# automated processing of the output encounters errors
# with asterisks so the option to not show them is necessary)
lmfit0<-lm(r.daily.symbol0.0 ~ r.daily.SP500.0, x=TRUE, y=TRUE)
# 3.1 Apply lm(), summary.lm() ----
# The components of lmfit0:
names(lmfit0)
## [1] "coefficients" "residuals" "effects" "rank"
## [5] "fitted.values" "assign" "qr" "df.residual"
## [9] "xlevels" "call" "terms" "model"
## [13] "x" "y"
lmfit0.summary<-summary.lm(lmfit0)
# The components of lmfit0.summary:
names(lmfit0.summary)
## [1] "call" "terms" "residuals" "coefficients"
## [5] "aliased" "sigma" "df" "r.squared"
## [9] "adj.r.squared" "fstatistic" "cov.unscaled"
print(lmfit0.summary)
##
## Call:
## lm(formula = r.daily.symbol0.0 ~ r.daily.SP500.0, x = TRUE, y = TRUE)
##
## Residuals:
## Min 1Q Median 3Q Max
## -0.159282 -0.005513 -0.000422 0.005185 0.144856
##
## Coefficients:
## Estimate Std. Error t value Pr(>|t|)
## (Intercept) -5.225e-05 2.138e-04 -0.244 0.807
## r.daily.SP500.0 1.175e+00 1.673e-02 70.238 <2e-16
##
## Residual standard error: 0.01323 on 3831 degrees of freedom
## Multiple R-squared: 0.5629, Adjusted R-squared: 0.5628
## F-statistic: 4933 on 1 and 3831 DF, p-value: < 2.2e-16
# Under CAPM, the intercept should be zero
tstat.intercept<-round(lmfit0.summary$coefficients["(Intercept)", "t value"],digits=4)
pvalue.intercept<-round(lmfit0.summary$coefficients["(Intercept)", "Pr(>|t|)"],digits=4)
# The $t$-statistic for the intercept is:
print(tstat.intercept)
## [1] -0.2444
# The p-value for testing whether the intercept is zero is
print(pvalue.intercept)
## [1] 0.8069
# 3.2 R-squared plot ----
lmfit0.rsquared<-lmfit0.summary$r.squared
lmfit0.rsquared.pvalue<-pf(
q=lmfit0.summary$fstatistic[["value"]],
df1=lmfit0.summary$fstatistic[["numdf"]],
df2=lmfit0.summary$fstatistic[["dendf"]],
lower.tail=FALSE)
length(as.numeric(lmfit0$fitted.values))
## [1] 3833
length(as.numeric(lmfit0$y))
## [1] 3833
modelname0<-"CAPM"
plot(x=lmfit0$fitted.values,
y=lmfit0$y,
xlab="Fitted Values",
ylab="Actual Values",
main=paste(c(modelname0,
"\n Plot: Actual vs Fitted Values\n",
"(R-Squared = ",round(lmfit0.rsquared,digits=4),
")"),collapse=""))
abline(a=0,b=1,col='green',lwd=2)
![](data:image/png;base64,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)
# 3.3 Coefficients Plot ----
library("coefplot")
par(mfcol=c(1,1))
coefplot(lmfit0, lwdInner=4, lwdOuter=1,
title=paste(modelname0,
"\n Coefficients Plot",sep=""),
plot=TRUE)
![](data:image/png;base64,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)
# 3.4a Residuals Analysis: Histogram/Gaussian Fits----
std.residuals<-sort(as.numeric(lmfit0$residuals))
par(mfcol=c(1,1))
hist(std.residuals, freq=FALSE, nclass=100,
main=paste(c(modelname0 ,
"\n Histogram of Std. Residuals \n",
"Normal Fits: MLE(Green) and Robust(Blue)"),
collapse=""))
std.residuals.mean=mean(std.residuals)
std.residuals.stdev.mle=sqrt(mean(std.residuals^2) - (mean(std.residuals))^2)
std.residuals.stdev.robust=IQR(std.residuals)/1.3490
std.residuals.density.mle<-dnorm(std.residuals, mean=std.residuals.mean, sd=std.residuals.stdev.mle)
std.residuals.density.robust<-dnorm(std.residuals, mean=std.residuals.mean, sd=std.residuals.stdev.robust)
lines(std.residuals, std.residuals.density.mle, col='green',lwd=2)
lines(std.residuals, std.residuals.density.robust, col='blue',lwd=2)
![](data:image/png;base64,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)
# 3.4b Residuals Analysis: QQPlot/Gaussian Fits----
par(mfcol=c(1,1))
qqnorm(std.residuals,
main=paste(modelname0,
"\n Normal QQ Plot of Std. Residuals",sep=""))
abline(a=0,b=sqrt(var(std.residuals)), col='green', lwd=3)
abline(a=0,b=IQR(std.residuals)/1.3490, col='blue', lwd=3)
title(sub=paste("Residual Sigma Fits: MLE(Green) and Robust(Blue)"))
![](data:image/png;base64,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)
# 3.4c Residuals Analysis: MLE-Percentile Histogram ----
par(mfcol=c(1,1))
#
nclass0=100
hist(100.*pnorm(std.residuals,mean=std.residuals.mean, sd=std.residuals.stdev.mle), nclass=nclass0,
xlab="Fitted Percentile",
main=paste(c(modelname0,
"\nHistogram of Residuals\nMLE-Fitted Percentiles"),
collapse=""))
abline(h=length(std.residuals)/nclass0, col="green",lwd=2)
![](data:image/png;base64,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)
# 3.4c Residuals Analysis: Robust-Fitted Percentile Histogram ----
par(mfcol=c(1,1))
hist(100.*pnorm(std.residuals,mean=std.residuals.mean, sd=std.residuals.stdev.robust), nclass=nclass0,
xlab="Fitted Percentile",
main=paste(c(modelname0,
"\nHistogram of Residuals\nRobust-Fitted Percentiles"),
collapse=""))
abline(h=length(std.residuals)/nclass0, col="blue",lwd=2)
![](data:image/png;base64,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)
# 3.5 Regression Diagnostics: Leverage/Hat Values ----
# For the functions hatvalues() and influence.measures()
# the input argument lmfit0 must handle indexes properly
y00=coredata(r.daily.symbol0.0)
x00=coredata(r.daily.SP500.0)
lmfit00<-lm(y00~x00, x=TRUE, y=TRUE)
# This replacement code snippet eliminates warnings and errors returned from
# the functon influence.measures(lmfit0) below
#
lmfit0.hat<-zoo(x=hatvalues(lmfit00),
order.by=as.Date(names(lmfit00$fitted.values)))
par(mfcol=c(1,1))
plot(lmfit0.hat, ylab="Leverage/Hat Value",
main=paste(c(modelname0,
"\nLeverage/Hat Values"),
collapse=""))
![](data:image/png;base64,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)
# Note the cases are time points of the time series data
# The financial crisis of 2008 is evident
# 3.6 Regression Diagnostics Plot----
# The R function $plot.lm()$ generates a
# 2x2 display of plots for various regression diagnostic statistics:
oldpar=par(no.readonly=TRUE)
layout(matrix(c(1,2,3,4),2,2)) # optional 4 graphs/page
plot(lmfit00)
![](data:image/png;base64,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)
par(oldpar,no.readonly=TRUE)
#######ADDITION
# Some useful R functions
# anova.lm(): conduct an Analysis of Variance for the linear regression model, detailing the computation of the F-statistic for no regression structure.
# #anova.lm(lmfit0)
# influence.measures(): compute regression diagnostics evaluating case influence for the linear regression model; includes `hat' matirx, case-deletion statistics for the regression coefficients and for the residual standard deviation.
# 3.7 Apply influence.measures() ----
# Compute influence measures (case-deletion statistics)
lmfit0.inflm<-influence.measures(lmfit00)
# Table counts of influential/non-influential cases
# as measured by the hat/leverage statistic.
table(lmfit0.inflm$is.inf[,"hat"])
##
## FALSE TRUE
## 3682 151
# 3.8 Plot data, fitted model, influential cases ----
# selective highlighting of influential cases
plot(r.daily.SP500.0, r.daily.symbol0.0,
main=paste(symbol0," vs SP500 Data \n OLS Fit (Green line)\n High-Leverage Cases (red points)\n High Cooks Dist (blue Xs)",sep=""),
cex.main=0.8)
abline(h=0,v=0)
abline(lmfit0, col=3, lwd=3)
# Plot cases with high leverage as red (col=2) "o"s
index.inf.hat<-which(lmfit0.inflm$is.inf[,"hat"]==TRUE)
points(r.daily.SP500.0[index.inf.hat], r.daily.symbol0.0[index.inf.hat],
col=2, pch="o")
# Plot cases with high cooks distance as big (cex=2) blue (col=4) "X"s
index.inf.cook.d<-which(lmfit0.inflm$is.inf[,"cook.d"]==TRUE)
dim(r.daily.SP500.0)
## [1] 3833 1
dim(r.daily.SP500.0)
## [1] 3833 1
points(r.daily.SP500.0[index.inf.cook.d], r.daily.symbol0.0[index.inf.cook.d],
col=4, pch="X", cex=2.)
![](data:image/png;base64,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)