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Chapter 3 A Review of Statistical Principles Useful in Finance. Statistical thinking will one day be as necessary for effective citizenship as the ability to read and write. - H.G. Wells. Outline. Introduction The concept of return Some statistical facts of life. Introduction.
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Chapter 3A Review of Statistical Principles Useful in Finance
Statistical thinking will one day be as necessary for effective citizenship as the ability to read and write. - H.G. Wells
Outline • Introduction • The concept of return • Some statistical facts of life
Introduction • Statistical principles are useful in: • The theory of finance • Understanding how portfolios work • Why diversifying portfolios is a good idea
The Concept of Return • Measurable return • Expected return • Return on investment
Measurable Return • Definition • Holding period return • Arithmetic mean return • Geometric mean return • Comparison of arithmetic and geometric mean returns
Definition • A general definition of return is the benefit associated with an investment • In most cases, return is measurable • E.g., a $100 investment at 8%, compounded continuously is worth $108.33 after one year • The return is $8.33, or 8.33%
Holding Period Return • The calculation of a holding period return is independent of the passage of time • E.g., you buy a bond for $950, receive $80 in interest, and later sell the bond for $980 • The return is ($80 + $30)/$950 = 11.58% • The 11.58% could have been earned over one year or one week
Arithmetic Mean Return • The arithmetic mean return is the arithmetic average of several holding period returns measured over the same holding period:
Arithmetic Mean Return (cont’d) • Arithmetic means are a useful proxy for expected returns • Arithmetic means are not especially useful for describing historical returns • It is unclear what the number means once it is determined
Geometric Mean Return • The geometric mean return is the nth root of the product of n values:
Arithmetic and Geometric Mean Returns Example Assume the following sample of weekly stock returns:
Arithmetic and Geometric Mean Returns (cont’d) Example (cont’d) What is the arithmetic mean return? Solution:
Arithmetic and Geometric Mean Returns (cont’d) Example (cont’d) What is the geometric mean return? Solution:
Comparison of Arithmetic &Geometric Mean Returns • The geometric mean reduces the likelihood of nonsense answers • Assume a $100 investment falls by 50% in period 1 and rises by 50% in period 2 • The investor has $75 at the end of period 2 • Arithmetic mean = (-50% + 50%)/2 = 0% • Geometric mean = (0.50 x 1.50)1/2 –1 = -13.40%
Comparison of Arithmetic &Geometric Mean Returns • The geometric mean must be used to determine the rate of return that equates a present value with a series of future values • The greater the dispersion in a series of numbers, the wider the gap between the arithmetic and geometric mean
Expected Return • Expected return refers to the future • In finance, what happened in the past is not as important as what happens in the future • We can use past information to make estimates about the future
Return on Investment (ROI) • Definition • Measuring total risk
Definition • Return on investment (ROI) is a term that must be clearly defined • Return on assets (ROA) • Return on equity (ROE) • ROE is a leveraged version of ROA
Measuring Total Risk • Standard deviation and variance • Semi-variance
Standard Deviation and Variance • Standard deviation and variance are the most common measures of total risk • They measure the dispersion of a set of observations around the mean observation
Standard Deviation and Variance (cont’d) • General equation for variance: • If all outcomes are equally likely:
Standard Deviation and Variance (cont’d) • Equation for standard deviation:
Semi-Variance • Semi-variance considers the dispersion only on the adverse side • Ignores all observations greater than the mean • Calculates variance using only “bad” returns that are less than average • Since risk means “chance of loss” positive dispersion can distort the variance or standard deviation statistic as a measure of risk
Some Statistical Facts of Life • Definitions • Properties of random variables • Linear regression • R squared and standard errors
Definitions • Constants • Variables • Populations • Samples • Sample statistics
Constants • A constant is a value that does not change • E.g., the number of sides of a cube • E.g., the sum of the interior angles of a triangle • A constant can be represented by a numeral or by a symbol
Variables • A variable has no fixed value • It is useful only when it is considered in the context of other possible values it might assume • In finance, variables are called random variables • Designated by a tilde • E.g.,
Variables (cont’d) • Discrete random variables are countable • E.g., the number of trout you catch • Continuous random variables are measurable • E.g., the length of a trout
Variables (cont’d) • Quantitative variables are measured by real numbers • E.g., numerical measurement • Qualitative variables are categorical • E.g., hair color
Variables (cont’d) • Independent variables are measured directly • E.g., the height of a box • Dependent variables can only be measured once other independent variables are measured • E.g., the volume of a box (requires length, width, and height)
Populations • A population is the entire collection of a particular set of random variables • The nature of a population is described by its distribution • The median of a distribution is the point where half the observations lie on either side • The mode is the value in a distribution that occurs most frequently
Populations (cont’d) • A distribution can have skewness • There is more dispersion on one side of the distribution • Positive skewness means the mean is greater than the median • Stock returns are positively skewed • Negative skewness means the mean is less than the median
Populations (cont’d) Positive Skewness Negative Skewness
Populations (cont’d) • A binomial distribution contains only two random variables • E.g., the toss of a die • A finite population is one in which each possible outcome is known • E.g., a card drawn from a deck of cards
Populations (cont’d) • An infinite population is one where not all observations can be counted • E.g., the microorganisms in a cubic mile of ocean water • A univariate population has one variable of interest
Populations (cont’d) • A bivariate population has two variables of interest • E.g., weight and size • A multivariate population has more than two variables of interest • E.g., weight, size, and color
Samples • A sample is any subset of a population • E.g., a sample of past monthly stock returns of a particular stock
Sample Statistics • Sample statistics are characteristics of samples • A true population statistic is usually unobservable and must be estimated with a sample statistic • Expensive • Statistically unnecessary
Properties of Random Variables • Example • Central tendency • Dispersion • Logarithms • Expectations • Correlation and covariance
Example Assume the following monthly stock returns for Stocks A and B:
Central Tendency • Central tendency is what a random variable looks like, on average • The usual measure of central tendency is the population’s expected value (the mean) • The average value of all elements of the population
Example (cont’d) The expected returns for Stocks A and B are:
Dispersion • Investors are interest in the best and the worst in addition to the average • A common measure of dispersion is the variance or standard deviation
Example (cont’d) The variance ad standard deviationfor Stock A are:
Example (cont’d) The variance ad standard deviationfor Stock B are:
Logarithms • Logarithms reduce the impact of extreme values • E.g., takeover rumors may cause huge price swings • A logreturn is the logarithm of a return • Logarithms make other statistical tools more appropriate • E.g., linear regression
Logarithms (cont’d) • Using logreturns on stock return distributions: • Take the raw returns • Convert the raw returns to return relatives • Take the natural logarithm of the return relatives
Expectations • The expected value of a constant is a constant: • The expected value of a constant times a random variable is the constant times the expected value of the random variable:
Expectations (cont’d) • The expected value of a combination of random variables is equal to the sum of the expected value of each element of the combination: