Statistical theory
The theory of statistics provides a basis for the whole range of techniques, in both study design and data analysis, that are used within applications of statistics. The theory covers approaches to statistical-decision problems and to statistical inference, and the actions and deductions that satisfy the basic principles stated for these different approaches. Within a given approach, statistical theory gives ways of comparing statistical procedures; it can find the best possible procedure within a given context for given statistical problems, or can provide guidance on the choice between alternative procedures.
Apart from philosophical considerations about how to make statistical inferences and decisions, much of statistical theory consists of mathematical statistics, and is closely linked to probability theory, to utility theory, and to optimization.
Scope
Statistical theory provides an underlying rationale and provides a consistent basis for the choice of methodology used in applied statistics.Modelling
s describe the sources of data and can have different types of formulation corresponding to these sources and to the problem being studied. Such problems can be of various kinds:- Sampling from a finite population
- Measuring observational error and refining procedures
- Studying statistical relations
Data collection
Statistical theory provides a guide to comparing methods of data collection, where the problem is to generate informative data using optimization and randomization while measuring and controlling for observational error. Optimization of data collection reduces the cost of data while satisfying statistical goals, while randomization allows reliable inferences. Statistical theory provides a basis for good data collection and the structuring of investigations in the topics of:- Design of experiments to estimate treatment effects, to test hypotheses, and to optimize responses.
- Survey sampling to describe populations
Summarising data
- Choosing summary statistics to describe a sample
- Summarising probability distributions of sample data while making limited assumptions about the form of distribution that may be met
- Summarising the relationships between different quantities measured on the same items with a sample
Interpreting data
- Summarising populations in the form of a fitted distribution or probability density function
- Summarising the relationship between variables using some type of regression analysis
- Providing ways of predicting the outcome of a random quantity given other related variables
- Examining the possibility of reducing the number of variables being considered within a problem
Applied statistical inference
Statistical theory provides the basis for a number of data-analytic approaches that are common across scientific and social research. Interpreting data is done with one of the following approaches:- Estimating parameters
- Providing a range of values instead of a point estimate
- Testing statistical hypotheses