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Ratio estimation with stratified samples Consider the agriculture stratified sample. In addition to the data of 1992, we also have data of 1987. Suppose that the population data of 1987 are available. How can we combine the two techniques? 1
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Method 1: combined ratio estimator Step 1: combine strata to estimate t x and t y Step 2: use ratio estimation 2
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Method 2: separate ratio estimators Step 1: use ratio estimation in each stratum Step 2: combine strata 3
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Method 1 vs Method 2 If the ratios vary from stratum to stratum, use method 2 If sample sizes are small, use method 1 Poststratificatio is a special case of method 2 4
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Cluster Sampling 5
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A new sampling method Motivating example Want to study the average amount water used by per person How would you design a survey? 6
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A new sampling method Consider the two strategies – Sample person by person – Sample household by household Which one do you prefer and why? 7
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A new sampling method In the water usage example, I would sample households, in other words, I would use household as the sampling unit. I do this for convenience. I am interested in average monthly usage per person, but I sample household 8
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A new sampling method The example of water usage is an example of cluster sampling – Households are the primary sampling units (PSUs) or clusters – Persons are the secondary sampling units (SSUs). They are the elements in the population 9
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Definition of Cluster Sampling Take an SRS on clusters Individual elements of the population are allowed in the sample only if they belong to a cluster (primary sampling unit) that is included in the sample The sampling unit (psu) is not the same as the observation unit (ssu), and the two sizes of experimental units must be considered when calculating standard errors from cluster samples 10
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Stratified sampling vs Cluster sampling The two sampling methods look similar – A cluster is also a grouping of elements of the population But the sampling schemes are different – Stratified: SRS from each stratum – Cluster: SRS of the clusters. For each selected cluster, we select all its elements – See the following two slides 11
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Stratified sampling 12
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Cluster sampling 13
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Stratified sampling vs Cluster sampling Stratified sampling – Variance of the estimate of depends on the variability of values within strata – For greater precision, individual elements within each stratum should be similar values, but stratum means should differ from each other as much as possible – Stratified sampling usually improves the precision of SRS 14
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Stratified sampling vs Cluster sampling Cluster sampling – The cluster is the sampling unit – The more clusters we sample, the smaller the variance – The variance of the estimate of depends primarily on the variability between cluster means – For greater precision, individual elements with each cluster should be heterogeneous and cluster means should be similar to one another – Cluster sampling usually ??? the precision of SRS 15
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Why does cluster sampling tend to reduce precision? Elements of the same cluster tend to be more similar than elements selected at random from the whole population. E.g, – Elements of the same household tend to have similar political views – Fish in the same lake tend to have similar concentrations of mercury – Residents of the same nursing home tend to have similar opinions of the quality of care The similarities arise because of some underlying factors that may or may not be measurable – Residents of the same nursing home may have similar opinions because the care is poor – The concentration of mercury in the fish will reflect the concentration of mercury in the lake 16
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Why does cluster sampling tend to reduce precision? Because of the similarities of elements within clusters, we do not obtain as much information By sampling everyone in the cluster, we partially repeat the same information instead of obtaining new information As a result, cluster sampling leads to less precision for estimates of population quantities 17
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Motivation of using cluster sampling A sampling frame list of observation units may be difficult, expensive, or unavailable – Cannot list all honeybees in a region The population may be widely distributed geographically or may occur in nature clusters – Nursing home residents cluster in nursing homes Cluster sampling leads to convenience and reduced cost Cluster sampling may result in more information per dollar spent 18
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Versions of cluster sampling: one-stage vs two-stage cluster sampling We will consider one-stage and two-stage sampling – One-stage sampling: every element within a sampled cluster is included in the sample – Two-stage sampling: we subsample only some of the elements of selected clusters 19
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One-stage cluster sampling (1) (2)(3) 20
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Two-stage cluster sampling (1) (2)(3) 21
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Notation for cluster sampling 22
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Notation for cluster sampling 23
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Notation for cluster sampling 24
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Notation for cluster sampling 25
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One-stage cluster sampling (1) (2)(3) 26
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One-stage cluster sampling Every element within a cluster (PSU) is included in the sample Either “all” or “none” of the elements that compose a cluster (PSU) are in the sample 27
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Clusters of equal sizes – Most naturally occurring clusters do not fit into this framework – Can occur in agricultural and industrial sampling – Estimating population means or totals is simple We treat the cluster means or totals as the observations and simply ignore the individual elements We have an SRS of n observations, where t i is the total for all the elements in PSU i. 28
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Clusters of equal sizes 29
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Clusters of equal sizes Nothing is new here 30
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Clusters of equal sizes: an example 31
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Clusters of equal sizes: an example 32
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Clusters of equal sizes: sampling weights 33
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Theory of Cluster sampling with equal sizes 34
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Theory of Cluster sampling with equal sizes In one-stage cluster sampling, the variability of the unbiased estimator of t depends entirely on the between-cluster part of the variability For cluster sampling 35
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Theory of Cluster sampling with equal sizes When MSB/MSW is large – MSB is relatively large: elements in different clusters vary more than elements in the same cluster – cluster sampling is less precise than SRS If MSB>S^2, cluster sampling is less precise 36
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Measurements of correlation ICC (or ρ): Intraclass (or intracluster) Correaltion Coefficient – Describes how similar elements in the same cluster are – Provides a measure of homogeneity within the clusters Definition: It can be shown that 38
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Measurements of correlation 39 If SSB=0, then
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One-stage cluster sampling with equal sizes vs SRS 40 If N is large 1+(M-1)ICC SSU’s, taken in a one-stage cluster sample, give The same amount of information as one SSU from an SRS e.g, ICC=1/2, M=5, then 1+(M-1)ICC=3 → 300 SSUs in the cluster sample = 100 SSUs in an SRS If ICC<0, cluster sampling is more efficient than SRS ICC is rarely negative in naturally occurring clusters
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The GPA example 41 The population ANOVA table (estimated)
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The GPA example 42 The population ANOVA table (estimated) The sample mean square total should not be used to estimate when n is small The data were collected as a cluster sample. They do not reflect enough of the cluster-to-cluster variability. Multiply the unbiased estimates of MSB and MSW by the df from the population ANOVA table to estimate the population sums of squares
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The GPA example 43 The population ANOVA table (estimated)
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The GPA example 44
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Clusters of unequal sizes 45 The adjusted R2 measures the relative amount of variability in the population explained by the cluster means, adjusted fro the number of degrees of freedom If the clusters are homogeneous, then the cluster means are highly variable relative to the variation within cluster, and R2 will be high.
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An example 46
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An example 47
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The GPA example 48
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The GPA example 49 The population ANOVA table (estimated)
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Clusters of unequal sizes In social surveys, clusters are usually of equal sizes In a one-stage sample, we will introduce two methods to estimate the population total/mean – Unbiased estimation – Ratio estimation 50
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Unbiased estimation for cluster sampling with unequal sizes 51
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Unbiased estimation for cluster sampling with unequal sizes Nothing is different from cluster sampling with equal sizes The problem is that the between cluster variance is large when the sizes of clusters are quite different from each other, as we expect large total from clusters of large sizes Therefore, we consider another estimator 52
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Ratio estimation for cluster sampling with unequal sizes 53
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Ratio estimation for cluster sampling with unequal sizes 54 where
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Ratio estimation for cluster sampling with unequal sizes 55 Note, it is not difficult to find that The variance of the ratio estimator depends on the variability of the means per element in the clusters It can be much smaller than that of the unbiased estimator The ratio estimator requires the total number of elements in the population, K. The unbiased estimator does not require K.
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Two-stage cluster sampling In one-stage cluster sampling, we – Examine all the SSU’s within the selected PSU’s – Obtain redundant information because SSU’s in a PSU tend to be similar – Expensive An alternative: taking a subsample within each selected PSU – two stage cluster sampling 56
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Two-stage cluster sampling with equal probability 57
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Two-stage cluster sampling with equal probability Compared with the one-stage cluster sampling, the two-stage uses one extra stage. The extra stage complicates the notation and estimators, as one needs to consider variability arising from both stages of data collection The points estimates are similar to those in one-stage, but variances are much more complicated 58
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Two-stage cluster sampling with equal probability: an unbiased estimator Since we do not observe every SSU in the sampled PSU’s, we need to estimate the totals for the sampled PSU’s An unbiased estimator of the population total is 59
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Two-stage cluster sampling with equal probability: an unbiased estimator The estimator is unbiased 60
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Two-stage cluster sampling with equal probability: an unbiased estimator Because are random variables, the variance of has two components – The variability between PSU’s – The variability within PSU’s 61 Recall that Var[Y]=Var[E[Y|X]] + E[Var[Y|X]] Here
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Two-stage cluster sampling with equal probability: an unbiased estimator 62
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Two-stage cluster sampling with equal probability 63
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Two-stage cluster sampling with equal probability: an unbiased estimator It can be shown that an unbiased estimator of the variance is For the population mean 64
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Two-stage cluster sampling with equal probability: a ratio estimator 65 As in one-stage cluster sampling with unequal sizes, the between-PSU variance can be very large since it is affected both by variations in the cluster sizes and by variation in y.
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66 where
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The egg volume example A study (Arnold 1991) on egg volume of American coot eggs in Minnesota. We looked at volumes of a subsample of eggs in clutches (nests of eggs) with at least two eggs. For each sampled clutch, two eggs were measured 67
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The egg volume example 68
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The egg volume example 69
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The egg volume example 70
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The egg volume example 71 N is unknown but presumably to be large.
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Using weights in cluster samples For estimating overall means and totals in cluster samples, most survey statisticians use sampling weights. Weights can be used to find a point estimate of almost any quantity of interest For cluster sampling: 72
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Using weights in cluster samples 73
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SRS : one-stage cluster: two-stage cluster For simplicity, we only consider One estimator from each of the three sampling methods 74
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SRS : one-stage cluster: two-stage cluster Assume (nm) SSUs are sampled 75
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SRS : one-stage cluster: two-stage cluster Recall that Therefore, 76
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SRS : one-stage cluster: two-stage cluster We have defined ICC (ρ) 77
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SRS : one-stage cluster: two-stage cluster 78
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SRS : one-stage cluster: two-stage cluster If we use nm SSU’s in a one-stage cluster sampling, #PSU’s=n’=nm/M 79
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SRS : one-stage cluster: two-stage cluster If we use nm SSU’s in an SRS 80
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SRS : one-stage cluster: two-stage cluster 81
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Design a cluster survey It is worth spending a great deal of effort on designing the survey for an expensive and large- scale survey It can take several years to design and pre-test For designing a cluster sample – What overall precision is needed? – What size should the PSU’s be? – How many SSU’s should be sampled in each sampled PSU? – How many PSU’s should be sampled? 82
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Choosing the PSU size In many situations, the PSU size exists naturally. E.g, a clutch of eggs, a household In some situations, one needs to choose PSU sizes. E.g., area of a region, 1km 2, 2km 2,… Many ways to “try out” different PSU sizes Pilot study, perform an experiment The goal is get the most information for the least cost and inconvenience 83
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Two-stage cluster design with equal cluster size and equal variance 84
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Two-stage cluster design with equal cluster size and equal variance 85
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Two-stage cluster design with equal cluster size and equal variance Graphing variance of varying m and n gives more information It is useful to examine – What if the costs or the cost function are slightly different? – What if changes slightly? 86
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The GPA example 87
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The GPA example 88
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Summary of two-stage cluster Cluster sampling is widely used in large surveys Variances from cluster samples are usually greater than SRSs with the same SSUs Less expensive – the per-dollar information from cluster sampling might be greater than that of SRS 89
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Summary of two-stage cluster 90
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