To find the mean and variance of X, we need to analyze the random variable X in terms of the random variable K.
First, let's consider the random variable K. Since each coin flip is independent and has a probability of 1/2 of landing heads, K follows a geometric distribution with parameter p = 1/2. The possible values of K are 1, 2, 3, and so on.
1. Mean of K:
The mean of a geometric random variable with parameter p is given by 1/p. In this case, p = 1/2, so the mean of K is E[K] = 1/(1/2) = 2.
Now, let's consider the random variable X in terms of K.
2. X in terms of K:
For each value of K, we have a continuous random variable Xk that is uniformly distributed on the interval [0, 5]. And we have K such Xk variables since K represents the number of tosses until the first Heads is observed plus 1.
So, to find X, we need to sum up the K Xk variables. Mathematically, X can be represented as X = X1 + X2 + X3 + ... + XK.
3. Mean of X:
To find the mean of X, we'll use the linearity of expectations. Since the Xk variables are independent, we can calculate the mean of X by summing up the means of the Xk variables.
Since each Xk variable is uniformly distributed on [0, 5], the mean of each Xk is (0 + 5) / 2 = 2.5.
Therefore, the mean of X is E[X] = E[X1 + X2 + X3 + ... + XK] = E[X1] + E[X2] + E[X3] + ... + E[XK] = 2.5 + 2.5 + 2.5 + ... + 2.5 (sum of K terms) = 2.5K.
But we know that E[K] = 2, so substituting that in, we get E[X] = 2.5 * 2 = 5.
Therefore, E[X] = 5.
4. Variance of X:
To find the variance of X, we'll use the fact that the variance of a sum of independent random variables is the sum of their variances.
Since each Xk variable is uniformly distributed on [0, 5], the variance of each Xk is ((5 - 0)^2) / 12 = 25 / 12.
Therefore, the variance of X is Var[X] = Var[X1 + X2 + X3 + ... + XK] = Var[X1] + Var[X2] + Var[X3] + ... + Var[XK] = (25 / 12) + (25 / 12) + (25 / 12) + ... + (25 / 12) (sum of K terms) = (25 / 12)K.
Using E[K] = 2, we can substitute K as 2 to get Var[X] = (25 / 12) * 2 = 25 / 6.
Therefore, Var[X] = 25 / 6.
In summary:
E[X] = 5
Var[X] = 25 / 6