MeanAbsoluteDeviation {JFE} | R Documentation |
Mean absolute deviation of the return distribution
Description
To calculate Mean absolute deviation we take the sum of the absolute value of the difference between the returns and the mean of the returns and we divide it by the number of returns.
Usage
MeanAbsoluteDeviation(R)
Arguments
R |
an xts, vector, matrix, data frame, timeSeries or zoo object of asset returns |
Details
MeanAbsoluteDeviation = \frac{\sum^{n}_{i=1}\mid r_i - \overline{r}\mid}{n}
where n
is the number of observations of the entire series, r_i
is the
return in month i and \overline{r}
is the mean return
Author(s)
Ho Tsung-wu <tsungwu@ntnu.edu.tw>, College of Management, National Taiwan Normal University.
References
Carl Bacon, Practical portfolio performance measurement
and attribution, second edition 2008 p.62.
See also package PerformanceAnalytics
.
Examples
data(assetReturns)
assetReturns=assetReturns["2011::2018"] #short sample for fast example
R=assetReturns[, -29]
MeanAbsoluteDeviation(R)
[Package JFE version 2.5.7 Index]