PerformanceAnalytics-package: Econometric tools for performance and risk analysis.

PerformanceAnalytics-packageR Documentation

Econometric tools for performance and risk analysis.

Description

PerformanceAnalytics provides an package of econometric functions for performance and risk analysis of financial instruments or portfolios. This package aims to aid practitioners and researchers in using the latest research for analysis of both normally and non-normally distributed return streams.

Details

We created this package 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 . In doing so, we also found it valuable to have wrappers for some functionality with good defaults and naming consistent with common usage in the finance literature.

In general, this package requires return (rather than price) data. Almost all of the functions will work with any periodicity, from annual, monthly, daily, to even minutes and seconds, either regular or irregular.

The following sections cover Time Series Data, 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.

In this summary, we attempt to provide an overview of the capabilities provided by PerformanceAnalytics and pointers to other literature and resources in useful 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.

Time Series Data

Not all, but many of the measures in this package require time series data. PerformanceAnalytics uses the xts package for managing time series data for several reasons. Besides being fast and efficient, xts includes functions that test the data for periodicity and draw attractive and readable time-based axes on charts. Another benefit is that xts provides compatability with Rmetrics' timeSeries, zoo and other time series classes, such that PerformanceAnalytics functions that return a time series will return the results in the same format as the object that was passed in. Jeff Ryan and Joshua Ulrich, the authors of xts, have been extraordinarily helpful to the development of PerformanceAnalytics and we are very grateful for their contributions to the community. The xts package extends the excellent zoo package written by Achim Zeileis and Gabor Grothendieck. zoo provides more general time series support, whereas xts provides functionality that is specifically aimed at users in finance.

Users can easily load returns data as time series for analysis with PerformanceAnalytics by using the Return.read function. The Return.read function loads csv files of returns data where the data is organized as dates in the first column and the returns for the period in subsequent columns. See read.zoo and as.xts if more flexibility is needed.

The functions described below assume that input data is organized with asset returns in columns and dates represented in rows. All of the metrics in PerformanceAnalytics are calculated by column and return values for each column in the results. This is the default arrangement of time series data in xts.

Some sample data is available in the managers dataset. It is an xts object that contains columns of monthly returns for six hypothetical asset managers (HAM1 through HAM6), the EDHEC Long-Short Equity hedge fund index, the S&P 500 total returns, and total return series for the US Treasury 10-year bond and 3-month bill. Monthly returns for all series end in December 2006 and begin at different periods starting from January 1996. That data set is used extensively in our examples and should serve as a model for formatting your data.

For retrieving market data from online sources, see quantmod's getSymbols function for downloading prices and chartSeries for graphing price data. Also see the tseries package for the function get.hist.quote. Look at xts's to.period function to rationally coerce irregular price data into regular data of a specified periodicity. The aggregate function has methods for tseries and zoo timeseries data classes to rationally coerce irregular data into regular data of the correct periodicity.

Finally, see the function Return.calculate for calculating returns from prices.

Risk Analysis

Many methods have been proposed to measure, monitor, and control the risks of a diversified portfolio. Perhaps a few definitions are in order on how different risks are generally classified. Market Risk is the risk to the portfolio from a decline in the market price of instruments in the portfolio. Liquidity Risk is the risk that the holder of an instrument will find that a position is illiquid, and will incur extra costs in unwinding the position resulting in a less favorable price for the instrument. In extreme cases of liquidity risk, the seller may be unable to find a buyer for the instrument at all, making the value unknowable or zero. Credit Risk encompasses Default Risk, or the risk that promised payments on a loan or bond will not be made, or that a convertible instrument will not be converted in a timely manner or at all. There are also Counterparty Risks in over the counter markets, such as those for complex derivatives. Tools have evolved to measure all these different components of risk. Processes must be put into place inside a firm to monitor the changing risks in a portfolio, and to control the magnitude of risks. For an extensive treatment of these topics, see Litterman, Gumerlock, et. al.(1998). For our purposes, PerformanceAnalytics tends to focus on market and liquidity risk.

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). This measure is also called SemiDeviation. The more general case is 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 using solve.QP or portfolio.optim or fPortfolio. 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 newer 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. The academic literature is still exploring the best manner to use 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, the number of observations 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 used to uncover specific risk factors where transparency is not available. Various resampling (see tsbootstrap) and simulation methods are available in R to 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.

Value at Risk (VaR) and Expected Shortfall (ES, ETL, CVaR)

Traditional mean-VaR: In the early 90's, academic literature started referring to “value at risk”, typically written as VaR. Take care to capitalize VaR in the commonly accepted manner, to avoid confusion with var (variance) and VAR (vector auto-regression). With a sufficiently large data set, you may choose to use a non-parametric VaR estimation method using the historical distribution and the probability quantile of the distribution calculated using 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” and what we have implemented as VaR with method="historical". See Return to RiskMetrics: Evolution of a Standard at https://www.msci.com/documents/10199/dbb975aa-5dc2-4441-aa2d-ae34ab5f0945. 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. That is available in VaR with method="gaussian".

The R package VaR, now orphaned, 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. We will attempt to incorporate this orphaned functionality in PerformanceAnalytics in an upcoming release, and would welcome patches or pull requests in this direction.

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 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 “Cornish-Fisher VaR” or “Modified VaR”. We provide this measure in function VaR with method="modified". 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 used. Note that estimates for Cornish Fisher modified VaR and ES may be unstable with small sample sizes. See Martin and Arora (2017) for more details.

Conditional VaR and Expected Shortfall: We have implemented Conditional Value at Risk, also called Expected Tail Loss or Expected Shortfall (not to be confused with shortfall probability, which is much less useful), in function ES. 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 historical, Gaussian and modified Cornish-Fisher measures of Expected Shortfall by using method="historical", method="gaussian" or method="modified". See Uryasev(2000) and Sherer and Martin(2005) for more information on Conditional Value at Risk and Expected Shortfall. Please note that your mileage will vary; expect that values obtained from the normal distribution may differ radically from the real situation, depending on the assets under analysis.

Multivariate extensions to risk measures: We have extended all moments calculations to work 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. Both the VaR and ES functions allow calculation of metrics in a portfolio context when weights and a portfolio_method are passed into the function call.

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 function calculates Marginal VaR for all instruments in the portfolio if you set method="marginal". 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 subadditive risk measure for downside risk is required. 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 using Modified VaR instead of mean-VaR in the Incremental and Component VaR calculation. We have succeeded in implementing Component VaR and ES calculations that use Modified Cornish-Fisher VaR, historical decomposition, and kernel estimators. You may access these with VaR or ES by setting the appropriate portfolio_method and method arguments.

The chart.VaRSensitivity function creates a chart of Value-at-Risk or Expected Shortfall estimates by confidence interval for multiple methods. Useful for comparing a calculated VaR or ES method to the historical VaR or ES, it may also be used to visually examine whether the VaR method “breaks down” or gives nonsense results at a certain threshold.

Which VaR or ES measure to use will depend greatly on the portfolio and instruments being analyzed. If there is any generalization to be made on VaR measures, we agree with Bali and Gokcan(2004) who conclude that “the VaR estimations based on the generalized Pareto distribution and the Cornish-Fisher approximation perform best”.

Most risk professionals are moving from using VaR to using Expected Shortfall preferentially. This preference has been endorsed by the Bank of International Settlements (BIS) and the Basel accord risk committee. In most cases, an ES measure with an appropriate probability target for your asset horizin will be more appropriate than a VaR measure.

Performance Analysis

The literature around the subject of performance analysis seems to have exploded with the popularity of alternative assets such as hedge funds, managed futures, commodities, and structured products. Simpler tools that may have seemed appropriate in a relative investment world seem inappropriate for an absolute return world. Risk measurement, which is nearly inseparable from performance assessment, has become multi-dimensional and multi-moment while trying to answer a simple question: “How much could I lose?” Portfolio construction and risk budgeting are two sides of the same coin: “How do I maximize my expected gain and avoid going broke?” But before we can approach those questions we first have to ask: “Is this something I might want in my portfolio?”

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. Traders may object, complaining that “You can't eat returns,” and will prefer to look for numbers with currency signs. To some extent, they have a point - the normalization inherent in calculating returns can be deceiving. Most of the recent work in performance analysis, however, is focused on returns rather than prices and sometimes called "returns-based analysis" or RBA. This “price per unit of investment” standardization is important for two reasons - first, it helps the decision maker to compare opportunities, and second, it has some useful statistical qualities. As a result, the PerformanceAnalytics package focuses on returns. See Return.calculate for converting net asset values or prices into returns, either discrete or continuous. Many papers and theories refer to “excess returns”: we implement a simple function for aligning time series and calculating excess returns in Return.excess.

Return.portfolio can be used to calculate weighted returns for a portfolio of assets. The function was recently changed to support several use-cases: a single weighting vector, an equal weighted portfolio, periodic rebalancing, or irregular rebalancing. That replaces functionality that had been split between that function and Return.rebalancing. The function will subset the return series to only include returns for assets for which weights are provided.

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.Stats 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

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 “excess kurtosis”, where 0 is a normal distribution, other methods of calculating kurtosis than 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.

Modern Portfolio Theory (MPT) 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 fall in price until they are. The CAPM.RiskPremium 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.

One extension to the CAPM contemplates evaluating an active manager's ability to time the market. Two other functions apply the same notion of best fit to positive and negative market returns, separately. The CAPM.beta.bull is a regression for only positive market returns, which can be used to understand the behavior of the asset or portfolio in positive or 'bull' markets. Alternatively, CAPM.beta.bear provides the calculation on negative market returns. The TimingRatio uses the ratio of those to help assess whether the manager has shown evidence that of timing skill.

Performance/Risk Ratios:

In many cases, an analyst will be looking to find a measure or performance relative to the risk of the asset under study. PerformanceAnalytics has many functions of this type.

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 uses 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 use upside returns for the numerator and DownsideDeviation as the denominator in UpsidePotentialRatio. Favre and Galeano(2002) propose using the ratio of expected excess return over the Cornish-Fisher VaR 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. Use of the downside semivariance as the denominator creates the . Use of the upside expected tail return over the ETL creates the RachevRatio. Utilizing the downside semivariance as the denominator produces the Downside Sharpe Ratio.

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 applied to position sizing will maximize log-utility of returns and avoid risk of ruin. For our purposes, it can also be used as a stack-ranking method like InformationRatio to describe the “edge” an investment would have over a random strategy or distribution.

These metrics and others such as SharpeRatio, SortinoRatio, UpsidePotentialRatio, Spearman rank correlation (see rcorr), etc., are all methods of rank-ordering relative performance. Alexander and Dimitriu (2004) in “The Art of Investing in Hedge Funds” show that relative rankings across multiple pricing methodologies may be positively correlated with each other and with expected returns. This is quite an important finding because it shows that multiple methods of predicting returns and risk which have underlying measures and factors that are not directly correlated to another measure or factor will still produce widely similar quantile rankings, so that the “buckets” of target instruments will have significant overlap. This observation specifically supports the point made early in this document regarding “accretion of the evidence” for a positive or negative investment decision.

Standard Errors for Risk and Performance Estimators

While PerformanceAnalytics contains many functions for computing returns based risk and performance estimators, until now there has been no convenient way to accurately compute standard errors of the estimates for independent and identically distributed (i.i.d.) returns, and no way at all to do so for returns that are serially correlated. This is no longer the case due to the existence of a new frequency domain method of accurately computing standard errors when returns are serially dependent as well as when returns are independent and identically distributed. Details are provided in Xin and Martin (2019) at https://ssrn.com/abstract=3085672, and to appear in December 2020 issue of Journal of Risk. The new method makes novel use of statistical influence functions borrowed from robust statistics, combined with periodogram based regularized generalized linear polynomial model (GLM) fitting for exponential distributions. Influence function for risk and performance estimators are described in Zhang, Martin and Christidis (2020) available at SSRN https://ssrn.com/abstract=3415903. The new method has been implemented in the RPESE package available at CRAN. The RPESE package has been integrated into PerformanceAnalytics.

Standard errors can be easily computed using the PerformanceAnalytics risk estimator functions

StdDev Sample standard deviation
SemiSD Semi-standard deviation
lpm with argument n=1 or n=2 Lower partial moment of order 1 or 2
ES Expected shortfall with tail probability \alpha
VaR Value-at-risk with tail probability \alpha

and performance estimator functions

mean.arithmetic Sample mean
SharpeRatio with argument FUN="StdDev" Sharpe ratio
DownsideSharpeRatio or SharpeRatio with argument FUN="SemiSD" Downside Sharpe ratio
SortinoRatio Sortino ratio with threshold MAR
SharpeRatio with argument FUN="ES" Mean excess return to ES ratio with tail probability \alpha
SharpeRatio with argument FUN="VaR" Mean excess return to VaR ratio with tail probability \alpha
RachevRatio Rachev ratio with lower upper tail probabilities \alpha and \beta
Omega Omega ratio with threshold c

where the first columns gives the names of the functions in the PerformanceAnalytics package to compute the estimate and its standard error.

Each of the PerformanceAnalytics functions listed above have an optional argument with default SE = FALSE. By changing this default to SE = TRUE, the user obtains not only risk or performance estimate, but also a standard error for the esimate. Further details concerning the computation of standard errors for the risk and performance estimators in PerformanceAnalytics can be found in the Vignette "Standard Errors for Risk and Performance Estimators in PerformanceAnalytics" available at CRAN, where a reference to the underlying theory due to Chen and Martin (2020) may be found.

Moments and Co-moments

Analysis of financial time series often involves evaluating their mathematical moments. While var and cov for variance has always been available, as well as skewness and kurtosis (which we have extended to make multivariate and multi-column aware), a larger suite of multivariate moments calculations was not available in R. We have now implemented multivariate moments and co-moments and their beta or systematic co-moments in PerformanceAnalytics.

Ranaldo and Favre (2005) define coskewness and cokurtosis as the skewness and kurtosis of a given asset analysed with the skewness and kurtosis of the reference asset or portfolio. The co-moments are useful for measuring the marginal contribution of each asset to the portfolio's resulting risk. As such, co-moments of an asset return distribution should be useful as inputs for portfolio optimization in addition to the covariance matrix. Functions include CoVariance, CoSkewness, CoKurtosis.

Measuring the co-moments should be useful for evaluating whether or not an asset is likely to provide diversification potential to a portfolio. But the co-moments do not allow the marginal impact of an asset on a portfolio to be directly measured. Instead, Martellini and Zieman (2007) develop a framework that assesses the potential diversification of an asset relative to a portfolio. They use higher moment betas to estimate how much portfolio risk will be impacted by adding an asset.

Higher moment betas are defined as proportional to the derivative of the covariance, coskewness and cokurtosis of the second, third and fourth portfolio moment with respect to the portfolio weights. A beta that is less than 1 indicates that adding the new asset should reduce the resulting portfolio's volatility and kurtosis, and to an increase in skewness. More specifically, the lower the beta the higher the diversification effect, not only in terms of normal risk (i.e. volatility) but also the risk of assymetry (skewness) and extreme events (kurtosis). See the functions for BetaCoVariance, BetaCoSkewness, and BetaCoKurtosis.

Robust Data Cleaning

The functions 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.

Summary Tabular Data

Summary statistics are then the necessary aggregation and reduction of (potentially thousands) of periodic return numbers. Usually these statistics are most palatable when organized into a table of related statistics, assembled for a particular purpose. A common offering of past returns organized by month and cumulated by calendar year is usually presented as a table, such as in 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.Stats Basic statistics and stylized facts
table.TrailingPeriods Statistics and stylized facts compared over different trailing periods
table.AnnualizedReturns Annualized return, standard deviation, and Sharpe ratio
table.CalendarReturns Monthly and calendar year return table
table.CAPM CAPM-related measures
table.Correlation Comparison of correlalations and significance statistics
table.DownsideRisk Downside risk metrics and statistics
table.Drawdowns Ordered list of drawdowns and when they occurred
table.Autocorrelation The first six autocorrelation coefficients and significance
table.HigherMoments Higher co-moments and beta co-moments
table.Arbitrary Combines a function list into a table

Charts and Graphs

Graphs and charts can also help to organize the information visually. Our goal in creating these charts was to simplify the process of creating well-formatted charts that are used often in performance analysis, and to create high-quality graphics that may be used in documents for consumption by non-analysts or researchers. R's graphics capabilities are substantial, but the simplicity of the output of R default graphics functions such as plot does not always compare well against graphics delivered with commercial asset or performance 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 prior 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).

chart.RelativePerformance can plot the relative performance through time of two assets. 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).

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.

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 found elsewhere 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 standard error bands. A group of related metrics is offered in charts.RollingPerformance. These charts use utility functions such as rollapply.

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.

We have been greatly inspired by other peoples' work, some of which is on display at addictedtor.free.fr. Particular inspiration came from Dirk Eddelbuettel and John Bollinger for their work at http://addictedtor.free.fr/graphiques/RGraphGallery.php?graph=65. Those interested in price charting in R should also look at the quantmod package.

Wrapper and Utility Functions

R is a very powerful environment for manipulating data. It can also be quite confusing to a user more accustomed to Excel or even MatLAB. As such, we have written some wrapper functions that may aid you in coercing data into the correct forms or finding data that you need to use regularly. To simplify the management of multiple-source data stored in R in multiple data formats, we have provided 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. The data-coercion function has been hidden inside the functions here, but it may also save you time and trouble in your own code and functions as well.

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 “from inception” and “rolling window” calculations easier.

Further Work

We have attempted to standardize function parameters and variable names, but more work exists to be done here.

Any comments, suggestions, or code patches are invited.

If you've implemented anything that you think would be generally useful to include, please consider donating it for inclusion in a later version of this package.

Acknowledgments

Data series edhec used in PerformanceAnalytics and related publications with the kind permission of the EDHEC Risk and Asset Management Research Center.
http://www.edhec-risk.com/indexes/pure_style

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 co-moments. This works was later extended and made faster and more robust by Dries Cornilly

Jeff Ryan and Joshua Ulrich are active participants in the R finance community and created xts, upon which much of PerformanceAnalytics depends.

Prototypes of the drawdowns functionality were provided by Sankalp Upadhyay, and modified with permission. Stephan Albrecht provided detailed feedback on the Getmansky/Lo Smoothing Index. The late Diethelm Wuertz provided prototypes of modified VaR and skewness and kurtosis functions (and was of course the maintainer of the RMetrics suite of pricing and optimization functions). Diethelm also contributed prototypes for many other functions from Bacon's book that were incorporated into PerformanceAnalytics by Matthieu Lestel.

Thanks to Joe Wayne Byers and Dirk Eddelbuettel for comments on early versions of these functions, and to Khanh Nguyen, Tobias Verbeke, H. Felix Wittmann, and Ryan Sheftel for careful testing and detailed problem reports.

Thanks also to our Google Summer of Code students through the years for their contributions. Significant contributions from GSOC students to this package have come from Dries Cornilly, Anthony-Alexander Cristidis, Zenith "Ziheng" Zhou, Matthieu Lestel and Andrii Babii so far. We expect to eventually incorporate contributions from Pulkit Mehrotra and Shubhankit Mohan, who worked with us during the summer of 2013.

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.

Any errors are, of course, our own.

References

Amenc, N. and Le Sourd, V. Portfolio Theory and Performance Analysis. Wiley. 2003.

Pfaff, B. Financial Risk Modeling and Portfolio Optimization with R, Second Edition. Wiley. 2016.

Bacon, C. Practical Portfolio Performance Measurement and Attribution. Wiley. 2004.

Canto, V. Understanding Asset Allocation. FT Prentice Hall. 2006.

Chen, X. and Martin, R. D. Standard Errors of Risk and Performance Measure Estimators for Serially Correlated Returns. SSRN eLibrary. 2019.

Lhabitant, F. Hedge Funds: Quantitative Insights. Wiley. 2004.

Litterman, R., Gumerlock R., et. al. The Practice of Risk Management: Implementing Processes for Managing Firm-Wide Market Risk. Euromoney. 1998.

Martellini, L., and Volker, Z. Improved Forecasts of Higher-Order Comoments and Implications for Portfolio Selection. EDHEC Risk and Asset Management Research Centre working paper. 2007.

Martin, R. Douglas, and Arora, Rohit. Inefficiency and bias of modified value-at-risk and expected shortfall. 2017. Journal of Risk 19(6), 59–84

Ranaldo, A., and Laurent Favre Sr. How to Price Hedge Funds: From Two- to Four-Moment CAPM. SSRN eLibrary. 2005.

Murrel, P. R Graphics. Chapman and Hall. 2006.

Ruppert, D., and Matteson, D Statistics and Data Analysis for Financial Engineering, with R Examples. Second Edition. Springer. 2015.

Scherer, B. and Martin, D. Modern Portfolio Optimization. Springer. 2005.

Shumway, R. and Stoffer, D. Time Series Analysis and it's Applications, with R examples, Springer, 2006.

Tsay, R. Analysis of Financial Time Series. Wiley. 2001.

Chen, X. and Martin, R. D. Standard Errors of Risk and Performance Measure Estimators for Serially Correlated Returns. SSRN eLibrary. 2019.

Zhang, S., Martin, R. Douglas., and Christidis, A. Influence Functions for Risk and Performance Estimators. SSRN eLibrary. 2020.

Zin, M., Zhao. A Note on Semivariance. Mathematical Finance, Vol. 16, No. 1, pp. 53-61, January 2006

Zivot, E. and Wang, Z. Modeling Financial Time Series with S-Plus: second edition. Springer. 2006.

See Also

CRAN task view on Empirical Finance
https://CRAN.R-project.org/view=Econometrics

Grant Farnsworth's Econometrics in R
https://cran.r-project.org/doc/contrib/Farnsworth-EconometricsInR.pdf


braverock/PerformanceAnalytics documentation built on Feb. 16, 2024, 5:37 a.m.