Ebook: Composite Sampling: A Novel Method to Accomplish Observational Economy in Environmental Studies
- Tags: Statistics for Life Sciences Medicine Health Sciences, Environmental Management, Ecotoxicology, Statistics and Computing/Statistics Programs, Earth Sciences general
- Series: Environmental and Ecological Statistics 4
- Year: 2011
- Publisher: Springer US
- Edition: 1
- Language: English
- pdf
This monograph provides, for the first time, a most comprehensive statistical account of composite sampling as an ingenious environmental sampling method to help accomplish observational economy in a variety of environmental and ecological studies. Sampling consists of selection, acquisition, and quantification of a part of the population. But often what is desirable is not affordable, and what is affordable is not adequate. How do we deal with this dilemma? Operationally, composite sampling recognizes the distinction between selection, acquisition, and quantification. In certain applications, it is a common experience that the costs of selection and acquisition are not very high, but the cost of quantification, or measurement, is substantially high. In such situations, one may select a sample sufficiently large to satisfy the requirement of representativeness and precision and then, by combining several sampling units into composites, reduce the cost of measurement to an affordable level. Thus composite sampling offers an approach to deal with the classical dilemma of desirable versus affordable sample sizes, when conventional statistical methods fail to resolve the problem. Composite sampling, at least under idealized conditions, incurs no loss of information for estimating the population means. But an important limitation to the method has been the loss of information on individual sample values, such as the extremely large value. In many of the situations where individual sample values are of interest or concern, composite sampling methods can be suitably modified to retrieve the information on individual sample values that may be lost due to compositing. In this monograph, we present statistical solutions to these and other issues that arise in the context of applications of composite sampling.
This monograph provides, for the first time, a most comprehensive statistical account of composite sampling as an ingenious environmental sampling method to help accomplish observational economy in a variety of environmental and ecological studies. Sampling consists of selection, acquisition, and quantification of a part of the population. But often what is desirable is not affordable, and what is affordable is not adequate. How do we deal with this dilemma? Operationally, composite sampling recognizes the distinction between selection, acquisition, and quantification. In certain applications, it is a common experience that the costs of selection and acquisition are not very high, but the cost of quantification, or measurement, is substantially high. In such situations, one may select a sample sufficiently large to satisfy the requirement of representativeness and precision and then, by combining several sampling units into composites, reduce the cost of measurement to an affordable level. Thus composite sampling offers an approach to deal with the classical dilemma of desirable versus affordable sample sizes, when conventional statistical methods fail to resolve the problem. Composite sampling, at least under idealized conditions, incurs no loss of information for estimating the population means. But an important limitation to the method has been the loss of information on individual sample values, such as the extremely large value. In many of the situations where individual sample values are of interest or concern, composite sampling methods can be suitably modified to retrieve the information on individual sample values that may be lost due to compositing. In this monograph, we present statistical solutions to these and other issues that arise in the context of applications of composite sampling.
This monograph provides, for the first time, a most comprehensive statistical account of composite sampling as an ingenious environmental sampling method to help accomplish observational economy in a variety of environmental and ecological studies. Sampling consists of selection, acquisition, and quantification of a part of the population. But often what is desirable is not affordable, and what is affordable is not adequate. How do we deal with this dilemma? Operationally, composite sampling recognizes the distinction between selection, acquisition, and quantification. In certain applications, it is a common experience that the costs of selection and acquisition are not very high, but the cost of quantification, or measurement, is substantially high. In such situations, one may select a sample sufficiently large to satisfy the requirement of representativeness and precision and then, by combining several sampling units into composites, reduce the cost of measurement to an affordable level. Thus composite sampling offers an approach to deal with the classical dilemma of desirable versus affordable sample sizes, when conventional statistical methods fail to resolve the problem. Composite sampling, at least under idealized conditions, incurs no loss of information for estimating the population means. But an important limitation to the method has been the loss of information on individual sample values, such as the extremely large value. In many of the situations where individual sample values are of interest or concern, composite sampling methods can be suitably modified to retrieve the information on individual sample values that may be lost due to compositing. In this monograph, we present statistical solutions to these and other issues that arise in the context of applications of composite sampling.
Content:
Front Matter....Pages i-xiii
Introduction....Pages 1-7
Classifying Individual Samples into One of Two Categories....Pages 9-53
Identifying Extremely Large Observations....Pages 55-79
Estimating Prevalence of a Trait....Pages 81-86
A Bayesian Approach to the Classification Problem....Pages 87-96
Inference on Mean and Variance....Pages 97-114
Composite Sampling with Random Weights....Pages 115-134
A Linear Model for Estimation with Composite Sample Data....Pages 135-173
Composite Sampling for Site Characterization and Cleanup Evaluation....Pages 175-182
Spatial Structures of Site Characteristics and Composite Sampling....Pages 183-207
Composite Sampling of Soils and Sediments....Pages 209-225
Composite Sampling of Liquids and Fluids....Pages 227-234
Composite Sampling and Indoor Air Pollution....Pages 235-237
Composite Sampling and Bioaccumulation....Pages 239-242
Back Matter....Pages 243-275
This monograph provides, for the first time, a most comprehensive statistical account of composite sampling as an ingenious environmental sampling method to help accomplish observational economy in a variety of environmental and ecological studies. Sampling consists of selection, acquisition, and quantification of a part of the population. But often what is desirable is not affordable, and what is affordable is not adequate. How do we deal with this dilemma? Operationally, composite sampling recognizes the distinction between selection, acquisition, and quantification. In certain applications, it is a common experience that the costs of selection and acquisition are not very high, but the cost of quantification, or measurement, is substantially high. In such situations, one may select a sample sufficiently large to satisfy the requirement of representativeness and precision and then, by combining several sampling units into composites, reduce the cost of measurement to an affordable level. Thus composite sampling offers an approach to deal with the classical dilemma of desirable versus affordable sample sizes, when conventional statistical methods fail to resolve the problem. Composite sampling, at least under idealized conditions, incurs no loss of information for estimating the population means. But an important limitation to the method has been the loss of information on individual sample values, such as the extremely large value. In many of the situations where individual sample values are of interest or concern, composite sampling methods can be suitably modified to retrieve the information on individual sample values that may be lost due to compositing. In this monograph, we present statistical solutions to these and other issues that arise in the context of applications of composite sampling.
Content:
Front Matter....Pages i-xiii
Introduction....Pages 1-7
Classifying Individual Samples into One of Two Categories....Pages 9-53
Identifying Extremely Large Observations....Pages 55-79
Estimating Prevalence of a Trait....Pages 81-86
A Bayesian Approach to the Classification Problem....Pages 87-96
Inference on Mean and Variance....Pages 97-114
Composite Sampling with Random Weights....Pages 115-134
A Linear Model for Estimation with Composite Sample Data....Pages 135-173
Composite Sampling for Site Characterization and Cleanup Evaluation....Pages 175-182
Spatial Structures of Site Characteristics and Composite Sampling....Pages 183-207
Composite Sampling of Soils and Sediments....Pages 209-225
Composite Sampling of Liquids and Fluids....Pages 227-234
Composite Sampling and Indoor Air Pollution....Pages 235-237
Composite Sampling and Bioaccumulation....Pages 239-242
Back Matter....Pages 243-275
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