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Use R and the RANDBETWEEN(1,300) function to generate: a) 100 random numbers, b) 100 samples of...

Use R and the RANDBETWEEN(1,300) function to generate: a) 100 random numbers, b) 100 samples of size 5, and c) 100 samples of size 20. For each sample in parts (b) and (c), find the sample means. Create histograms for parts (a), (b) and (c). For part (a) use the random numbers (i.e. sample size 1), for parts (b) and (c) use the sample means to create the histograms. Copy and Paste just the histograms into your homework paper. Explain the differences in the histograms.

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