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A player throws a fair die and simultaneously flips a fair coin, If the coin lands heads, then she wins twice, and if tails, then she wins one-half of the value that appears on the die. Determine her expected winnings.
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To Find :The expected winnings after throwing the fair dice and flips a fair coin.
Answer to Problem 7.1P
The expected winnings is 4.375.
Explanation of Solution
Given information:
A player throws a fair die and simultaneously flips a fair coin.
If the coin lands heads, then she wins twice, and it tails, then she wins one-half of the value that appears on the die.
Consider X is the random variable that represents the result on the toss a fair coin.
Consider Y is the random variable that represents the number on the die.
Let's roll heads, then win twice the digits on the die roll, and if die roll a tail then we win 1/2 the digit on the die.
The probability that we get Heads/ Tails is,
Firstly, Find The expected winnings if the coin lands heads.
Now, to find the expected winnings of the coin lands tails,
Therefore, the expected winnings is,
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Chapter 7 Solutions
EBK FIRST COURSE IN PROBABILITY, A
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