# Cumulative Return in Trading Strategy Test

I have a Signal based on order imbalance that I want to test against historic stock data.

I also have the price for each of these Signals and then I calculate a Trend on the price to see if the returns are rising or falling in the last previous 4 prices. From the Signal I have taken

``````nSignal <- pnorm(Signal, mean = mean(Signal), sd = sd(Signal))
``````

Now my idea is to buy/short each time nSignal rises above 0.70. If the trend is positive then I would place a buy and if it the trend is negative I would place a short order.

``````Sell   if( nSignal > = 0.70 && Trend < 0 )
Buy    if( nSignal > = 0.70 && Trend > 0 )
Ignore if( nSignal > = 0.70 && Trend = 0 )
``````

I am then getting out of the position when the nSignal begins to decline again. I do not want to have more than one open position at any time. So if there is a Buy/Sell signal occuring while I have an open position I would ignore.

My questions are regarding the coding of the Sell and Buy vectors and calculation of the returns on these. I would ideally like to have 1 vector as output.

I can produce the Buy / Sell signal, but I am stuck on telling R to ignore further buy / sell until nSignal drops and the position is released. I have attached what I would like to calculate.

``````   dd <- textConnection("PriceTao,nSignal,Trend,Sell ,Buy,,Return
79.5,0.800495492911607,0.00631674578326402, ,,,
79.55,0.849748126078447,0.00378111963884864, ,,,
79.7,0.781025021425822,0.00440489652262133, ,release,79.7,0.00100623484156181
79.85,0.835339437922026,0.00376766425320585, ,release,79.85,0.000429459362427442
80,0.829431322197511,0.00376057994561618, ,,,
79.75,0.721861766918789,0.000635579945616138, ,,,
79.8,0.749198554641736,-0.000619518523171436,Sell, ,79.8,
79.9,0.655121878771812,-0.00124490792027077,release, ,79.9,-0.000285955381947645
79.85,0.638399458172212,0.00125430985194441, , ,,
79.75,0.677237812176031,-0.00062499754849088, , ,,
79.8,0.77229131417357,-0.00125117113292239,Sell, ,79.8,
79.9,0.78060399324371,0.00062774392694287, ,,,
80,0.785209846277682,0.00313165653529857, ,,,
80,0.71354933296563,0.00250469728764968,release,,80,-0.000571553096032407
80,0.723175396790292,0.00125156445556929, ,,,
80.05,0.645047940052525,0.000624999999999876, , ,,
79.95,0.654754824370203,-0.000624219237976287, , ,,
79.95,0.66648952405407,-0.000624219237976287, , ,,
80.05,0.66246174072327,1.56250061034147E-06, , ,,
80.1,0.64268970941157,0.00187539135757464, , ,,
80.05,0.626534449371471,0.00125117163223132, , ,,
80.05,0.659757399947805,3.89893644814343E-07, , ,,
80.15,0.605440623800618,0.000624999512632951, , ,,
80.15,0.555063339554548,0.00124921923797627, , ,,
80.1,0.623048801370024,0.000625388919822667, , ,,
79.95,0.671863289394849,-0.00249648949418346, , ,,
80.05,0.629889151643382,-0.00124570775559696, , ,,
80.15,0.692044829948308,0.000627341800532921, , ,,
80.35,0.767181308420401,0.00374298579328602, ,release,80.35,0.000283988254209611
80.2,0.712321509444304,0.000626933947966979, ,,,
")

close(dd)
Data
``````
-
Basically, you create a column that is all `NA`. Then you insert a 1 on rows that are buys and a -1 on rows that are sells. That represents your position. Now, use `na.locf` to fill your position forward. If you made your example reproducible I could show you better. –  GSee Feb 16 '13 at 17:02
@GSee I created a more reproducible example. I had copied data into Excel to simplify, but the formatting didn't copy over. Thanks for your tips –  Morten Feb 16 '13 at 17:33

Here's an implementation of the basic moving average cross system. It should be trivial to adjust it to fit your needs.

``````library(quantmod)
library(tseries) # for maxdrawdown if you want it

x <- getSymbols("SPY", src="yahoo", from="2012-01-01", to="2012-12-31", auto.assign=FALSE)
n1 <- 20 # for short term moving average
n2 <- 50 # for long term moving average

x\$spd <- x\$ma1 - x\$ma2 # difference between the two
x\$spd[1:n2] <- 0 # flat until we have enough data to calculate both MAs
x\$cross <- c(0, diff(x\$spd > 0, na.pad=FALSE)) # short cross long
x\$pos <- NA # Position
x\$pos[x\$cross == 1] <- 1 # long where it crosses from below
x\$pos[x\$cross == -1] <- -1 # short where it crosses from above
# fill forward your position until you get the next signal.  Also, you have to
# lag your signal because today's return will be a result of yesterday's position
x\$pos[is.na(x\$pos)] <- 0
x\$cumret <- cumsum(x\$pos * x\$ret)
out <- data.frame(n1=n1, n2=n2, cumret=as.numeric(last(x\$cumret)),
out
tail(x)
``````

### Edit

``````library(quantmod) # for Lag.  Also loads zoo which is needed for na.locf, and
# TTR which is needed for ROC
x <- Data[, 1:3]
x\$pos <- NA
x\$pos[with(x, nSignal >= 0.7 & Trend < 0)] <- -1
x\$pos[with(x, nSignal >= 0.7 & Trend > 0)] <- 1
x\$pos <- na.locf(x\$pos)
x\$pos[is.na(x\$pos)] <- 0 # first few rows are NA; replace with 0 meaning "no position"
x\$ret <- ROC(x\$PriceTao) * Lag(x\$pos) # yesterdays position * return from yesterday to today
x
``````

Note that you are using a `data.frame` which is slower than a `matrix`. Also, you do not have any dates or times associated with your data. IMHO `xts` or `zoo` would be a better data structure if you actually have time series data.

-
In the original output nSignal and PriceTao are vectors, so not saved as data.frame. The original data is time series data, but I do not 'save' the dates and time when I am doing this bit of analysis so I guess a matrix approach here is what I'll be using. I'll test this out. Thanks for your inputs –  Morten Feb 16 '13 at 19:26
I am not getting the desired output from your suggested solution. When I apply the above the asnumeric and -asnumeric positions are not included. If i remove -as.numeric then I get the return from as.numeric to be equal to the total from both -as.numeric and as.numeric, which shouldn't be the case? –  Morten Feb 17 '13 at 13:34
Oops. It was overwriting the shorts with 0s. Edited. It now inserts -1 where you have a short signal and a +1 where you have a buy signal. All other rows are `NA`. Then it fills in the `NA`s with the position from the previous ro. –  GSee Feb 17 '13 at 14:43