1. Random variables
We do not care about the specific results or the order of occurrence of random trials, and the relationship is the number associated with them.
Random variables are a function of linking the result of a random experiment with a number, and its value has a certain probability.
The random variables are in uppercase letters, and the real numbers are in lowercase letters.
Such as: Throw three times coins appear 2 times the probability of positive.
The result of random test A is ={positive and negative, just anyway, just}
Random variable x=2
Probability =3/8
Then P (x=2) =p (A) is P (positive and negative, just anyway, anyway positive) =3/8
2. Discrete random variables and their distribution laws
Some random variables, all of which may take different values are finite or can be listed infinitely, this random variable is called a discrete random variable.
Distribution law of discrete random variable x:
Set X as a discrete random variable, all of which may be valued as XK (k=1,2,....), X takes the probability of each possible value,
p{x=xk}=pk,k=1,2 ...
The distribution law of the X is called the formula.
2 conditions are met:
pk≥0;
∑pk=1.
Important Distribution:
Two items distributed:
The test e has only two possible results: A and a, then E is the Bernoulli test. P (a) =p,p (a) =1-p
N Heavy Bernoulli test: The test E is repeated n times independently.
Independence: The results of each test do not affect each other; repetition: the probability that event a occurs does not change.
X indicates the number of occurrences of event A in the N-Bernoulli test.
When N=1, that is, only 1 Bernoulli test, random variable x can only take 0,1 value.
It is called a two-item distribution because the upper formula is an item of the two-item (P+Q) n.
Poisson distribution:
3. Distribution function of random variables
For continuous random variables, it doesn't make sense to see the probability value at a certain point (in fact, the probability at any point is =0). So we should study the probability that the value of continuous random variable falls into an interval.
Distribution functions:
Basic properties:
F (x) is a non-decreasing function;
The value is between 0 and 1;
F (x+0) =f (x), i.e. f (x) is right continuous.
F (x) is the cumulative probability value of the x≤x.
The distribution function of the discrete random variable x:
4. Continuous type random variable and its probability density
The probability of a continuous type of random variable being evaluated at any point is 0. As a corollary, the probability of a continuous random variable taking value on the interval is independent of whether the interval is open or closed interval. Note that the probability is p{x=a}=0, but {x=A} is not an impossible event.
Important Distribution:
Evenly distributed
Exponential distribution:
Or
An important feature of exponential functions is the memory-free nature. This means that if a random variable is exponentially distributed, there is P (t>s+t| when s,t≥0) t>t) =p (t>s) Normal distribution:
Properties:
Normal curve about X=µ symmetry;
When the X=µ is taken to the maximum value, the normal curve begins at the place where the mean value is, and gradually drops evenly to the left and right sides respectively.
At the Μ±σ Place has the inflection point;
Its probability density and distribution function are recorded as: φ (x), φ (x)
Lemma:
Standardized transformations
Normal distribution, as soon as possible the range of normal variables is (-∞,∞), but the probability of falling into (µ-δ,µ+δ) is 68.26% (that is: f (x) in the area of this interval), the probability of falling into (µ-3δ,µ+3δ) is 99.74%, almost affirmative, this is the 3δ law.
Upper ª: For a standard normal distribution , if zª satisfies the condition P (x>zª) =ª, then zª is the upper ª sub-site of the standard overall distribution.
5. Distribution of functions of random variables
Discusses how to derive the probability distribution of its function y=g (x) from the probability distribution of a known random variable x.
Probability theory and mathematical statistics-ch2-random variables and their distributions