Chapter 3k-Sample Repeated Measurements Design

3.1 INTRODUCTION

This chapter generalizes the ideas developed in Chapter 2. Let there be k populations and let k-independent random samples be taken from these k populations. Let Y be the p-dimensional response vector on the αth unit from the ith population, α = 1, 2, …, Ni; i = 1, 2, …, k.

Let Yiα ~ IMNp(μi, ∑ i). Let images. It is not necessary to have the observations taken from k populations. One may take N homogeneous units, randomly subdivide them into k sets of sizes N1, N2, …, Nk, assign the k treatments such that the ith treatment is assigned to each of the Ni experimental units of the ith set, and take p responses at the same time or at different time intervals. In either case, three kinds of null hypotheses are tested:

  1. Parallelism or interaction of the populations and responses
  2. Equality of population or group effects
  3. Equality of response or period effects

Let μi = (μi1, μi2, …, μip). The three kinds of null hypotheses can be represented as follows:

To test these three null hypotheses, we initially assume ...

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