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Transcript
Topics for Test 2
Math 115A
**you will want a scientific calculator for this test
A list of formulas that will be provided is on the last page.
COMPOUND INTEREST
 FUTURE VALUE when interest is:
1. Compounded discretely (n times per year) or 2. Compounded continuously
Also be able to find Present Value needed for a given future value, find rate or time needed, etc.
 EFFECTIVE ANNUAL YIELD—the simple interest rate that yields the same future value as a given
compound rate after one year.
 NATURAL LOGARITHMS:
Using natural logs to solve interest/yield problems
Properties of logs: (know/be able to use them as needed)
ln( xy)  ln( x)  ln( y )

ln
   ln( x)  ln( y)
RATIO of future to present value:
x
y
ln( x n )  n ln( x)
F
 e rt . What does this represent?
P
HISTOGRAMS
Know how histograms are created in Excel; be able to read information from them, and know how to
use a histogram to approximate a p.d.f.
RANDOM VARIABLES/DISTRIBUTIONS
 FINITE, DISCRETE random variables: all values can be listed! (Important : You should be able to
1. IF p.m.f is given you should be able to find c.d.f (recall -first plot the c.d.f and then write the
piecewise c.d.f function)
2. IF c.d.f is given you should be able to find p.m.f ( recall-decide on the possible values for the
discrete r.v and then find the difference between the c.d.f function values)
For All FINITE, DISCRETE random variables:
f X ( x)  P( X  x) is the probability mass function (p.m.f.) for X.
These are given in table or bar graph form.
FX ( x)  P( X  x) is the cumulative distribution function (c.d.f.) for X.
These can be given in table form or step graph form. FX(3) would represent
P(X = 3) plus the probabilities of all possible values of X that are less than 3.
Expected
Value
 x  P( X  x)
all x
A specific type of FINITE, DISCRETE random variable:
1. BINOMIAL DISTRIBUTION—when does it apply? How do you calculate probabilities?
Shortcut for finding expected value: E(X) = np.
Topics for Test 2
Math 115A
**you will want a scientific calculator for this test

CONTINUOUS random variables: could not possibly list every value; values are instead
represented as ranges/intervals.
For CONTINUOUS random variables:
The value of P( X  x)  0
f X (x) is the probability density function (p.d.f.) for X. It is defined so that the area under f above the xaxis and between a and b is equal to P(a  X  b) . Here, a formula or a graph may be used.
Recall that the graph must be close to (or on) the x-axis for x close to . Also remember that,
since you don’t yet know how to find the area under a curved graph, you won’t be able to get an
exact value for P(a  X  b) from a p.d.f. unless it’s uniform.
FX ( x)  P( X  x) is the cumulative distribution function (c.d.f.) for X. Again, formulas and
graphs may be used. Here, the graph must be close to (or on) the x-axis for x close to - and will
approach (or hit) 1 as x approaches +.
Two specific types of CONTINUOUS random variables:
1. UNIFORM DISTRIBUTION: You need to identify u to do a problem
all values of X (random variable) are equally likely
For a Uniform distribution (uniform on [0, u]), E(X) = u/2
the p.d.f. & c.d.f. are (know these):
0 for x  0
0 for x  0
1

f X ( x)   u for 0  x  u
FX ( x)   u1 x for 0  x  u


0 for x  0
1 for x  u
FX ( x)  P( X  x)
P(a  X  b)  FX (b)  FX (a)
2. EXPONENTIAL DISTRIBUTION: You need to identify  to do a problem
The p.d.f. & c.d.f. for exponential distributions will be provided (see below).
0 if x  0
f X ( x)   1  x / 
if 0  x
 e

E(X) = 
FX ( x)  P( X  x)
P(a  X  b)  FX (b)  FX (a)
0 if x  0
FX ( x)  
 x /
if 0  x
1  e
Topics for Test 2
Math 115A
**you will want a scientific calculator for this test
RANDOM SAMPLES

EXPECTED VALUE of X: E(X) =  X 
n
 xi  P( X  xi )
i 1
Often, the best we can do is estimate E(X). In these cases, we find the sample mean or average,
x for a sample of size n:
x
n
1
n
 xi 
i 1
x1  x 2    x n
 E( X )
n
SIMULATION
 Know basic ideas regarding simulation
 Be sure you understand how the Excel functions Rand, Randbetween, Vlookup, and If work.
PROJECT 2

Know the main ideas of project 2
FOR PROJECT 2 QUIZ:
 Know the main ideas of project 2
 Be able to answer questions about Options
 Know why and how your simulation was built
 Know what your ratios represent
 Know what rrf , R, Rm and Rrf represent
 Know how to find: (also know what they represent!)
1. Cnorm
2. FV
3. PV
4. E(PV)
*note: all four of these are “normalized”—they are based on our normalized ratios.
Formulas (will be provided- check class website to see a sample)