Final answer:
The sample proportion of heads from a coin-toss experiment can be calculated by dividing the number of heads by the total tosses, and it reflects the experimental probability. The Law of Large Numbers indicates that this proportion should approach 50% for a fair coin as the number of trials increases.
Step-by-step explanation:
The sample proportion of heads in your experiment using a spreadsheet can be found by dividing the number of times heads appeared by the total number of tosses. For instance, if you obtained heads 150 out of 300 times, your sample proportion would be 150/300 = 0.5. This means that in your simulation, the observed frequency of heads is exactly the theoretical probability of a fair coin, which is 50%.
The Law of Large Numbers tells us that as the number of trials increases, the experimental probability (relative frequency) approaches the theoretical probability. Even though individual experiments may deviate from the expected 50% ratio of heads to tails, over many trials, the relative frequency should get closer to the theoretical value of 0.5 for a fair coin. Therefore, a sample proportion close to 0.5 in a large experiment like 300 tosses would support the fairness of the coin, while a substantial deviation might suggest a biased coin.