We created this library to include functionality that has been appearing in the academic literature on performance analysis and risk over the past several years, but had no functional equivalent in R. In doing so, we also found it valuable to have wrapper functions for functionality easily replicated in R, so that we could access that functionality using a function with defaults and naming consistent with common usage in the finance literature. The following sections cover Performance Analysis, Risk Analysis (with a separate treatment of VaR), Summary Tables of related statistics, Charts and Graphs, a variety of Wrappers and Utility functions, and some thoughts on work yet to be done.
With the the increasing availability of complicated alternative investment strategies to both retail and institutional investors, and the broad availability of financial data, an engaging debate about performance analysis and evaluation is as important as ever. There won't be one right answer delivered in these metrics and charts. What there will be is an accretion of evidence, organized to assist a decision maker in answering a specific question that is pertinent to the decision at hand. Using such tools to uncover information and ask better questions will, in turn, create a more informed investor.
Performance measurement starts with returns. Proprietary traders will object, complaining that PerformanceAnalytics
library focuses on returns. See CalculateReturns
for converting net asset values or prices into returns, either discrete or continuous. Many papers and theories refer to Return.excess
.
See pfolioReturn
in package fPortfolio
for calculating returns from a portfolio of instruments with a combination of historical returns and a weighting vector. See package portfolio
for a more sophisticated class-based collection of positions into a historical portfolio, allowing you to track changes in the composition of a portfolio over time.
Returns and risk may be annualized as a way to simplify comparison over longer time periods. Although it requires a bit of estimating, such aggregation is popular because it offers a reference point for easy comparison. Examples are in Return.annualized
, sd.annualized
, and SharpeRatio.annualized
.
Basic measures of performance tend to treat returns as independent observations. In this case, the entirety of R's base is applicable to such analysis.
Some basic statistics we have collected in table.MonthlyReturns
include:
mean
arithmetic mean
mean.geometric
geometric mean
mean.stderr
standard error of the mean (S.E. mean)
mean.LCL
lower confidence level (LCL) of the mean
mean.UCL
upper confidence level (UCL) of the mean
quantile
for calculating various quantiles of the distribution
min
minimum return
max
maximum return
range
range of returns
length(R)
number of observations
sum(is.na(R))
number of NA's
}
Modern Portfolio Theory (MPT) Modern Portfolio Theory is the collection of tools and techniques by which a risk-averse investor may construct an optimal portfolio. It was pioneered by Markowitz's ground breaking 1952 paper Portfolio Selection. It also encompasses CAPM, below, the efficient market hypothesis, and all forms of quantitative portfolio construction and optimization.
The Capital Asset Pricing Model (CAPM), initially developed by William Sharpe in 1964, provides a justification for passive or index investing by positing that assets that are not on the efficient frontier will either rise or lower in price until they are on the efficient frontier of the market portfolio. The CAPM.RiskPremium
on an investment is the measure of how much the asset's performance differs from the risk free rate. Negative Risk Premium generally indicates that the investment is a bad investment, and the money should be allocated to the risk free asset or to a different asset with a higher risk premium. CAPM.alpha
is the degree to which the assets returns are not due to the return that could be captured from the market. Conversely, CAPM.beta
describes the portions of the returns of the asset that could be directly attributed to the returns of a passive investment in the benchmark asset. The Capital Market Line CAPM.CML
relates the excess expected return on an efficient market portfolio to its risk (represented in CAPM by sd
). The slope of the CML, CAPM.CML.slope
, is the Sharpe Ratio for the market portfolio. The Security Market Line is constructed by calculating the line of CAPM.RiskPremium
over CAPM.beta
. For the benchmark asset this will be 1 over the risk premium of the benchmark asset. The slope of the SML, primarily for plotting purposes, is given by CAPM.SML.slope
. CAPM is a market equilibrium model or a general equilibrium theory of the relation of prices to risk, but it is usually applied to partial equilibrium portfolios, which can create (sometimes serious) problems in valuation.
The performance premium provided by an investment over a passive strategy (the benchmark) is provided by ActivePremium
, which is the investment's annualized return minus the benchmark's annualized return. A closely related measure is the TrackingError
, which measures the unexplained portion of the investment's performance relative to a benchmark. The InformationRatio
of an Investment in a MPT or CAPM framework is the Active Premium divided by the Tracking Error. Information Ratio may be used to rank investments in a relative fashion.
We have also included a function to compute the KellyRatio
. The Kelly criterion, properly applied, will maximize log-utility of returns and avoid risk of ruin. Utilizing the Kelly Criterion to determine leverage or investment size on a strategy is guaranteed to avoid risk of ruin and eventually (over a long enough time horizon) create wealth, but it may be incredibly volatile, with a N% chance of being down N% at some point in time. Even when an investor or analyst does not intend to utilize the Kelly criterion as part of the investment sizing strategy, it can be used as a stack-ranking method like InformationRatio
to describe the
InformationRatio
, KellyRatio
, SharpeRatio
, SortinoRatio
, UpsidePotentialRatio
, Spearman Rank Correlation provided by rcorr
and other methods discussed here are all methods of rank-ordering relative performance. Alexander and Dimitriu(2004) in
It is often valuable when evaluating an investment to know whether the instrument that you are examining follows a normal distribution. One of the first methods to determine how close the asset is to a normal or log-normal distribution is to visually look at your data. Both chart.QQPlot
and chart.Histogram
will quickly give you a feel for whether or not you are looking at a normally distributed return history. Differences between var
and SemiVariance
will help you identify skewness
in the returns. Skewness measures the degree of asymmetry in the return distribution. Positive Skewness indicates that more of the returns are positive, negative skewness indicates that more of the returns are negative. An investor should in most cases prefer a positively skewed asset to a similar (style, industry, region) asset that has a negative skewness. Kurtosis measures the concentration of the returns in any given part of the distribution (as you should see visually in a histogram). The kurtosis
function will by default return what is referred to as method="excess"
will set the normal distribution at a value of 3. In general a rational investor should prefer an asset with a low to negative excess kurtosis, as this will indicate more predictable returns (the major exception is generally a combination of high positive skewness and high excess kurtosis). If you find yourself needing to analyze the distribution of complex or non-smooth asset distributions, the nortest
package has several advanced statistical tests for analyzing the normality of a distribution.
One question that an investor or researcher is often required to answer revolves around how to diversify a portfolio. In a mean-variance world, an asset is a diversifier if it lowers the variance (and hopefully also raises the mean return) of the portfolio. In a world with more nuanced risk metrics, you may also test the target portfolio to see if it has lower measures of risk than the current portfolio. If you want to do more analysis, we have provided functions to calculate the higher moments and co-moments of the distribution. We have already discussed skewness
and kurtosis
provided by package fBasics
. Increasing skewness and decreasing kurtosis of the target portfolio probably marks a good diversifier. You can also work on minimizing the co-moments and systematic co-moments of the distribution to improve the resilience of the portfolio to multiple different market conditions in much the way that minimizing covariance and systematic beta will mark a well diversified portfolio in a mean-variance framework. See CoMoments
for the co-moments and BetaCoMoments
for the systematic standardized co-moments. Other diversification potential in a portfolio is not strictly econometric, and follow the classic asset delineations of asset type, size, industry, growth/value, currency, or geographic region, all of which are well-covered elsewhere.
We have covered multiple methods of performance analysis in this summary section, but it is also important to note that we have not covered performance attribution. We have not examined tools for determining the sources and causes for the returns, or the underlying causes for the risks of an instrument (more on Risk Measurement and prediction below). There is a significant amount of academic literature on identifying these sources of risk or returns. Much of it falls into the field of factanal
for basic factor analysis and princomp
for Principal Component Analysis. The authors feel that financial engineers and analysts would benefit from some wrapping of this functionality focused on finance, but the capabilities already available from the base functions are quite powerful.
PerformanceAnalytics
which begin to address the need for doing style analysis of fund managers or other fund-like products or indexes: chart.RollingStyle
display style weightings over rolling periods calculated by style.fit
chart.Style
display style weightings calculated by style.fit
style.fit
calculate and display effective style weights
style.QPfit
calculate and display effective style weights using quadratic programming
}
These functions calculate style weights using an asset class style model as described in detail in Sharpe (1992). The use of quadratic programming to determine a fund's exposures to the changes in returns of major asset classes is usually refered to as "style analysis".
The following functions calculate effective style weights and display the results in a bar chart. 'chart.Style' calculates and displays style weights calculated over a single period. 'chart.RollingStyle' calculates and displays those weights in rolling windows through time. 'style.fit' manages the calculation of the weights by method. 'style.QPfit' calculates the specific constraint case that requires quadratic programming.
Return.clean
and clean.boudt
implement statistically robust data cleaning methods tuned to portfolio construction and risk analysis and prediction in financial time series while trying to avoid some of the pitfalls of standard robust statistical methods.The primary value of data cleaning lies in creating a more robust and stable estimation of the distribution generating the large majority of the return data. The increased robustness and stability of the estimated moments using cleaned data should be used for portfolio construction. If an investor wishes to have a more conservative risk estimate, cleaning may not be indicated for risk monitoring.
In actual practice, it is probably best to back-test the out-of-sample results of both cleaned and uncleaned series to see what works best when forecasting risk with the particular combination of assets under consideration.
table.CalendarReturns
. Adding benchmarks or peers alongside the annualized data is helpful for comparing returns in calendar years.When we started this project, we debated whether such tables would be broadly useful or not. No reader is likely to think that we captured the precise statistics to help their decision. We merely offer these as a starting point for creating your own. Add, subtract, do whatever seems useful to you. If you think that your work may be useful to others, please consider sharing it so that we may include it in a future version of this package.
Other tables for comparison of related groupings of statistics discussed elsewhere:
table.AnnualizedReturns
Annualized Returns Summary: Statistics and Stylized Facts
table.Arbitrary
wrapper function for combining arbitrary function list into a table
table.Autocorrelation
table for calculating the first six autocorrelation coefficients and significance
table.CalendarReturns
Monthly and Calendar year Return table
table.CAPM
Asset-Pricing Model Summary: Statistics and Stylized Facts
table.Correlation
calculate correlalations of multicolumn data
table.DownsideRisk
Downside Risk Summary: Statistics and Stylized Facts
table.Drawdowns
Worst Drawdowns Summary: Statistics and Stylized Facts
table.HigherMoments
Higher Moments Summary: Statistics and Stylized Facts
table.MonthlyReturns
Monthly Returns Summary: Statistics and Stylized Facts
table.Returns
Monthly and Calendar year Return table
table.RollingPeriods
Rolling Periods Summary: Statistics and Stylized Facts
}
plot
does not always compare well against graphics delivered with commercial asset or portfolio analysis from places such as MorningStar or PerTrac.The cumulative returns or wealth index is usually the first thing displayed, even though neither conveys much information. See chart.CumReturns
. Individual period returns may be helpful for identifying problematic periods, such as in chart.Bar
. Risk measures can be helpful when overlaid on the period returns, to display the bounds at which losses may be expected. See chart.BarVaR
and the following section on Risk Analysis. More information can be conveyed when such charts are displayed together, as in charts.PerformanceSummary
, which combines the performance data with detail on downside risk (see chart.Drawdown
).
Two-dimensional charts can also be useful while remaining easy to understand. chart.Scatter
is a utility scatter chart with some additional attributes that are used in chart.RiskReturnScatter
. Overlaying Sharpe ratio lines or boxplots helps to add information about relative performance along those dimensions. The relative performance through time of two assets can be plotted with chart.RelativePerformance
. This plot displays the ratio of the cumulative performance at each point in time and makes periods of under- or out-performance easy to see. The value of the chart is less important than the slope of the line. If the slope is positive, the first asset is outperforming the second, and vice verse. Affectionately known as the Canto chart, it was used effectively in Canto (2006).
For distributional analysis, a few graphics may be useful. chart.Boxplot
is an example of a graphic that is difficult to create in Excel and is under-utilized as a result. A boxplot of returns is, however, a very useful way to instantly observe the shape of large collections of asset returns in a manner that makes them easy to compare to one another. chart.Histogram
and chart.QQPlot
are two charts originally ported from Rmetrics and now substantially expanded in PerformanceAnalytics.
Rolling performance is typically used as a way to assess stability of a return stream. Although perhaps it doesn't get much credence in the financial literature as it derives from work in digital signal processing, many practitioners find it a useful way to examine and segment performance and risk periods. See chart.RollingPerformance
, which is a way to display different metrics over rolling time periods. chart.RollingMean
is a specific example of a rolling mean and one standard deviation bands. A group of related metrics is offered in charts.RollingPerformance
. These charts use utility functions such as rollapply
and rollingStat
. chart.SnailTrail
is a scatter chart that shows how rolling calculations of annualized return and annualized standard deviation have proceeded through time where the color of lines and dots on the chart diminishes with respect to time. chart.RollingCorrelation
shows how correlations change over rolling periods. chart.RollingRegression
displays the coefficients of a linear model fitted over rolling periods. A group of charts in charts.RollingRegression
displays alpha, beta, and R-squared estimates in three aligned charts in a single device.
chart.StackedBar
creates a stacked column chart with time on the horizontal axis and values in categories. This kind of chart is commonly used for showing portfolio 'weights' through time, although the function will plot any values by category. This is a primitive function and is expected to improve.
A number of charts or groups of charts that remain unfinished or were experimental and may be modified or removed in the future. chart.Correlation
, and chart.Correlation.color
are examples. The latter two are slight modifications of code from the package MASS
and the Rbase
. See their documentation for more information.
We have been greatly inspired by other peoples' work, some of which is on display at quantmod
package.
The simplest risk measure in common use is volatility, usually modeled quantitatively with a univariate standard deviation on a portfolio. See sd
. Volatility or Standard Deviation is an appropriate risk measure when the distribution of returns is normal or resembles a random walk, and may be annualized using sd.annualized
, or the equivalent function sd.multiperiod
for scaling to an arbitrary number of periods. Many assets, including hedge funds, commodities, options, and even most common stocks over a sufficiently long period, do not follow a normal distribution. For such common but non-normally distributed assets, a more sophisticated approach than standard deviation/volatility is required to adequately model the risk.
Markowitz, in his Nobel acceptance speech and in several papers, proposed that SemiVariance
would be a better measure of risk than variance. See Zin, Markowitz, Zhao(2006) SemiDeviation
. The more general case of downside deviation is implemented in the function DownsideDeviation
, as proposed by Sortino and Price(1994), where the minimum acceptable return (MAR) is a parameter to the function. It is interesting to note that variance and mean return can produce a smoothly elliptical efficient frontier for portfolio optimization utilizing solve.QP
or portfolio.optim
or MarkowitzPortfolio
. Use of semivariance or many other risk measures will not necessarily create a smooth ellipse, causing significant additional difficulties for the portfolio manager trying to build an optimal portfolio. We'll leave a more complete treatment and implementation of portfolio optimization techniques for another time.
Another very widely used downside risk measures is analysis of drawdowns, or loss from peak value achieved. The simplest method is to check the maxDrawdown
, as this will tell you the worst cumulative loss ever sustained by the asset. If you want to look at all the drawdowns, you can findDrawdowns
and sortDrawdowns
in order from worst/major to smallest/minor. The UpDownRatios
function will give you some insight into the impacts of the skewness and kurtosis of the returns, and letting you know how length and magnitude of up or down moves compare to each other. You can also plot drawdowns with chart.Drawdown
.
One of the most commonly used and cited measures of the risk/reward tradeoff of an investment or portfolio is the SharpeRatio
, which measures return over standard deviation. If you are comparing multiple assets using Sharpe, you should use SharpeRatio.annualized
. It is important to note that William Sharpe now recommends InformationRatio
preferentially to the original Sharpe Ratio. The SortinoRatio
utilizes mean return over DownsideDeviation
below the MAR as the risk measure to produce a similar ratio that is more sensitive to downside risk. Sortino later enhanced his ideas to utilize upside returns for the numerator and DownsideDeviation
as the denominator in UpsidePotentialRatio
. Favre and Galeano(2002) propose utilizing the ratio of expected excess return over the Cornish-Fisher modifiedVaR
to produce SharpeRatio.modified
. TreynorRatio
is also similar to the Sharpe Ratio, except it uses CAPM.beta
in place of the volatility measure to produce the ratio of the investment's excess return over the beta.
One of the newest statistical methods developed for analyzing the risk of financial instruments is Omega
. Omega analytically constructs a cumulative distribution function, in a manner similar to chart.QQPlot
, but then extracts additional information from the location and slope of the derived function at the point indicated by the risk quantile that the researcher is interested in. Omega seeks to combine a large amount of data about the shape, magnitude, and slope of the distribution into one method. Omega is still a very new method, and the academic literature is still exploring the best manner to utilize Omega in a risk measurement and control process, or in portfolio construction.
Any risk measure should be viewed with suspicion if there are not a large number of historical observations of returns for the asset in question available. Depending on the measure, how many observations are required will vary greatly from a statistical standpoint. As a heuristic rule, ideally you will have data available on how the instrument performed through several economic cycles and shocks. When such a long history is not available, the investor or researcher has several options. A full discussion of the various approaches is beyond the scope of this introduction, so we will merely touch on several areas that an interested party may wish to explore in additional detail. Examining the returns of assets with a similar style, industry, or asset class to which the asset in question is highly correlated and shares other characteristics can be quite informative. Factor analysis may be utilized to uncover specific risk factors where transparency is not available. Various resampling (see tsbootstrap
) and simulation methods are available in Rto construct an artificially long distribution for testing. If you use a method such as Monte Carlo simulation or the bootstrap, it is often valuable to use chart.Boxplot
to visualize the different estimates of the risk measure produced by the simulation, to see how small (or wide) a range the estimates cover, and thus gain a level of confidence with the results. Proceed with extreme caution when your historical data is lacking. Problems with lack of historical data are a major reason why many institutional investors will not invest in an alternative asset without several years of historical return data available.
qnorm
. The negative return at the correct quantile (usually 95% or 99%), is the non-parametric VaR estimate. J.P. Morgan's RiskMetrics parametric mean-VaR was published in 1994 and this methodology for estimating parametric mean-VaR has become what people are generally referring to as VaR.traditional
. See Return to RiskMetrics: Evolution of a StandardfPortfolio
has also implemented traditional mean-VaR as the VaR
function. Parametric traditional VaR does a better job of accounting for the tails of the distribution by more precisely estimating the tails below the risk quantile. It is still insufficient if the assets have a distribution that varies widely from normality.The Rpackage VaR
contains methods for simulating and estimating lognormal VaR.norm
and generalized Pareto VaR.gpd
distributions to overcome some of the problems with nonparametric or parametric mean-VaR calculations on a limited sample size. There is also a VaR.backtest
function to apply simulation methods to create a more robust estimate of the potential distribution of losses. The VaR package also provides plots for its functions.
Conditional VaR and Expected Shortfall:
The fPortfolio
package has implemented Conditional Value at Risk, also called Expected Shortfall (not to be confused with shortfall probability, which is much less useful), in functions CVaR
and CVaRplus
. Expected Shortfall attempts to measure the magnitude of the average loss exceeding the traditional mean-VaR. Expected Shortfall has proven to be a reasonable risk predictor for many asset classes. We have provided traditional Gaussian and modified Cornish-Fisher measures of Expected Shortfall in GES.MM
and mES.MM
. See Uryasev(2000) and Sherer and Martin(2005) for more information on Conditional Value at Risk and Expected Shortfall. Please note that your milage will vary; expect that values obtained from the normal distribution may differ radically from the real situation, depending on the assets under analysis. There is still work to do in wrapping all VaR and ES functiuons into a coherent set that are easily called with a "method" argument, as some of the more mature functions in PerformanceAnalytics utilize.
Modified Cornish-Fisher VaR:
The limitations of traditional mean-VaR are all related to the use of a symmetrical distribution function. Use of simulations, resampling, or Pareto distributions all help in making a more accurate prediction, but they are still flawed for assets with significantly non-normal (skewed and/or kurtotic) distributions. Huisman(1999) and Favre and Galleano(2002) propose to overcome this extensively documented failing of traditional VaR by directly incorporating the higher moments of the return distribution into the VaR calculation. This new VaR measure incorporates skewness and kurtosis via an analytical estimation using a Cornish-Fisher (special case of a Taylor) expansion. The resulting measure is referred to variously as VaR.CornishFisher
with equivalent alias modifiedVaR
, Modified VaR produces the same results as traditional mean-VaR when the return distribution is normal, so it may be used as a direct replacement. Many papers in the finance literature have reached the conclusion that Modified VaR is a superior measure, and may be substituted in any case where mean-VaR would previously have been utilized.
Multivariate extensions to risk measures:
We have extened all moments calculations to woork in a multivariate portfolio context. In a portfolio context the multivariate moments are generally to be preferred to their univariate counterparts, so that all information is available to subsequent calculations. See MultivariateMoments
and MultivariateRisk
Marginal, Incremental, and Component VaR:
Marginal VaR is the difference between the VaR of the portfolio without the asset in question and the entire portfolio. The VaR.Marginal
function calculates Marginal VaR for all instruments in the portfolio. Marginal VaR as provided here may use traditional mean-VaR or Modified VaR for the calculation. Per Artzner,et.al.(1997) properties of a coherent risk measure include subadditivity (risks of the portfolio should not exceed the sum of the risks of individual components) as a significantly desirable trait. VaR measures, including Marginal VaR, on individual components of a portfolio are not subadditive. Clearly, a general subbadditive risk measure for downside risk is required. Incremental or Component VaR attempt to provide just such a measure. In Incremental or Component VaR, the Component VaR value for each element of the portfolio will sum to the total VaR of the portfolio. Several EDHEC papers suggest utilizing Modified VaR instead of mean-VaR in the Incremental and Component VaR calculation. We have succeeded in implementing Component VaR and ES calculations that utilize Modified Cornish-Fisher VaR. We will add it to a future version of this library, and would be happy to provide the unpolished code upon request.
chart.VaRSensitivity
Creates a chart of Value-at-Risk estimates by confidence interval for multiple methods. Useful for comparing a calculated VaR method to the historical VaR, it may also be used to visually examine whether the VaR method
Which VaR measure to use will depend greatly on the portfolio and instruments being analyzed. If there is any generalization to be made on VaR measures, this author will agree with Bali and Gokcan(2004) who conclude that
var
and cov
for variance has always been available, and fBasics
in Rmetrics provided functions for skewness and kurtosis, a larger suite of multivariate moments calculations was not available in R. We have now implemented multivariiate moments and co-moments and their beta or systematic comoments in PerformanceAnalytics
.checkData
. This function will attempt to coerce data in and out of R's multitude of mostly fungible data classes into the class required for a particular analysis. In general, the use of the data-coercion function has been hidden inside the business functions provided. checkData
may also save you time and trouble in your own code and functions outside of the functionality provided by the PerformanceAnalytics
library.When you are analyzing relative or absolute performance of investments, you need to analyze returns, but much data is available only as prices. We have provided the simple wrapper function CalculateReturns
to address this by taking a stream of prices and calculating simple or compounded returns from the price vector. The excellent tseries
library includes the function get.hist.quote
for retrieving market data from online sources. Many of the functions in PerformanceAnalytics require either a benchmark or a risk free rate, and many practitioners will not have access to a formal database of historical returns. To facilitate the examples and provide an example of how to retrieve and coerce the data, we have provided functions for S&P 500 returns in the download.SP500PriceReturns
and the 13-day US Treasury Bill in download.RiskFree
.
We also provide wrappers for cumulative maxima of the returns in a multicolumn series in cummax.column
and for the cumulative product (compound return) in cumprod.column
. R's built-in apply
function in enormously powerful, but is can be tricky to use with timeseries data, so we have provided wrapper functions to apply.fromstart
and apply.rolling
to make handling of
Performance Attribution
Factor Analysis
Hedge Selection and Analysis
Shock/Scenario Analysis
We have attempted to standardize function parameters and variable names, but more work exists to be done here.
There are functions included in this package that would benefit from more complex examples.
Any comments, suggestions, or code patches are invited.
If you've implemented anything in the list above, please consider donating it for inclusion in a later version of this package.
edhec
used in PerformanceAnalytics
and related publications with the kind permission of the EDHEC Risk and Asset Management Research Center.
Kris Boudt was instrumental in our research on component risk for portfolios with non-normal distributions, and is responsible for much of the code for multivariate moments and comoments.
Prototypes of the drawdowns functionality were provided by Sankalp Upadhyay, and modified with permission.
Thanks to Joe Wayne Byers and Dirk Eddelbuettel for comments on early versions of these functions, and to Khanh Nguyen and Ryan Sheftel for careful testing and detailed problem reports.
Thanks to the R-SIG-Finance community without whom this package would not be possible. We are indebted to the R-SIG-Finance community for many helpful suggestions, bugfixes, and requests.
In general, this library is most tested on return (rather than price) data on a monthly scale. Many functions will work with daily or irregular return data as well. See function CalculateReturns
for calculating returns from prices, and be aware that the aggregate
function has methods for tseries
and zoo
timeseries data classes to rationally coerce irregular data into regular data of the correct periodicity.
In this summary, we attempt to provide an overview of the capabilities provided by PerformanceAnalytics
and pointers to other literature and resources in Rneeded for performance and risk analysis. We hope that this summary and the accompanying package and documentation partially fill a hole in the tools available to a financial engineer or analyst.
Grant Farnsworth's Econometrics in R
Collection of R charts and graphs