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.^{[1]}^{[2]} The theory covers approaches to statisticaldecision 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 a best possible procedure within a given context for given statistical problems, or can provide guidance on the choice between alternative procedures.^{[2]}^{[3]}
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 [ edit ]
Statistical theory provides an underlying rationale and provides a consistent basis for the choice of methodology used in applied statistics.
Modelling [ edit ]
Statistical models 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
Statistical models, once specified, can be tested to see whether they provide useful inferences for new data sets.^{[4]} Testing a hypothesis using the data that was used to specify the model is a fallacy, according to the natural science of Bacon and the scientific method of Peirce.^{[citation needed]}
Data collection [ edit ]
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.^{[5]}^{[6]}^{[7]} Optimization of data collection reduces the cost of data while satisfying statistical goals,^{[8]}^{[9]} 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.^{[8]}^{[10]}^{[11]}
 Survey sampling to describe populations^{[12]}^{[13]}^{[14]}
Summarising data [ edit ]
The task of summarising statistical data in conventional forms (also known as descriptive statistics) is considered in theoretical statistics as a problem of defining what aspects of statistical samples need to be described and how well they can be described from a typically limited sample of data. Thus the problems theoretical statistics considers include:
 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 [ edit ]
Besides the philosophy underlying statistical inference, statistical theory has the task of considering the types of questions that data analysts might want to ask about the problems they are studying and of providing data analytic techniques for answering them. Some of these tasks are:
 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 (the task of Dimension reduction)
When a statistical procedure has been specified in the study protocol, then statistical theory provides welldefined probability statements for the method when applied to all populations that could have arisen from the randomization used to generate the data. This provides an objective way of estimating parameters, estimating confidence intervals, testing hypotheses, and selecting the best. Even for observational data, statistical theory provides a way of calculating a value that can be used to interpret a sample of data from a population, it can provide a means of indicating how well that value is determined by the sample, and thus a means of saying corresponding values derived for different populations are as different as they might seem; however, the reliability of inferences from posthoc observational data is often worse than for planned randomized generation of data.
Applied statistical inference [ edit ]
Statistical theory provides the basis for a number of dataanalytic 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
Many of the standard methods for those approaches rely on certain statistical assumptions (made in the derivation of the methodology) actually holding in practice. Statistical theory studies the consequences of departures from these assumptions. In addition it provides a range of robust statistical techniques that are less dependent on assumptions, and it provides methods checking whether particular assumptions are reasonable for a given data set.
See also [ edit ]
References [ edit ]
Citations [ edit ]
 ^ Cox & Hinkley (1974, p.1)
 ^ ^{a} ^{b} Rao, C. R. (1981). "Foreword". In Arthanari, T. S.; Dodge, Yadolah (eds.). Mathematical Programming in Statistics. New York: John Wiley & Sons. pp. vii–viii. ISBN 047108073X. MR 0607328. CS1 maint: ref=harv (link)
 ^ Lehmann & Romano (2005)
 ^ Freedman (2009)
 ^ Charles Sanders Peirce and Joseph Jastrow (1885). "On Small Differences in Sensation". Memoirs of the National Academy of Sciences. 3: 73–83. http://psychclassics.yorku.ca/Peirce/smalldiffs.htm
 ^ Hacking, Ian (September 1988). "Telepathy: Origins of Randomization in Experimental Design". Isis. 79 (3): 427–451. doi:10.1086/354775. JSTOR 234674. MR 1013489.
 ^ Stephen M. Stigler (November 1992). "A Historical View of Statistical Concepts in Psychology and Educational Research". American Journal of Education. 101 (1): 60–70. doi:10.1086/444032.
 ^ ^{a} ^{b} Atkinson et al. (2007)
 ^ Kiefer, Jack Carl (1985). Brown, Lawrence D.; Olkin, Ingram; Sacks, Jerome; et al. (eds.). Jack Carl Kiefer: Collected papers III—Design of experiments. SpringerVerlag and the Institute of Mathematical Statistics. pp. 718+xxv. ISBN 038796004X. CS1 maint: ref=harv (link)
 ^ Hinkelmann & Kempthorne (2008)
 ^ Bailey (2008).
 ^ Kish (1965)
 ^ Cochran (1977)
 ^ Särndal et al. (1992)
Sources [ edit ]
 Atkinson, A. C.; Donev, A. N.; Tobias, R. D. (2007). Optimum Experimental Designs, with SAS. Oxford University Press. pp. 511+xvi. ISBN 9780199296606.
 Bailey, R. A (2008). Design of Comparative Experiments. Cambridge University Press. ISBN 9780521683579. Prepublication chapters are available online.
 Cochran, William G. (1977). Sampling Techniques (Third ed.). John Wiley & Sons. ISBN 047116240X.
 Cox, D.R., Hinkley, D.V. (1974) Theoretical Statistics, Chapman & Hall. ISBN 0412124203
 Freedman, David A. (2009). Statistical Models: Theory and Practice (Second ed.). Cambridge University Press. ISBN 9780521671057.
 Hinkelmann, Klaus and Kempthorne, Oscar (2008). Design and Analysis of Experiments. I, II (Second ed.). John Wiley & Sons. ISBN 9780470385517. CS1 maint: multiple names: authors list (link)
 Kish, L. (1965), Survey Sampling, John Wiley & Sons. ISBN 047148900X
 Lehmann, E. L.; Romano, J. P. (2005), Testing Statistical Hypotheses (third ed.), Springer.
 Särndal, CarlErik, Swensson, Bengt, and Wretman, Jan (1992). Model Assisted Survey Sampling. SpringerVerlag. ISBN 0387406204. CS1 maint: multiple names: authors list (link)
Further reading [ edit ]

Peirce, C. S.
 (1876), "Note on the Theory of the Economy of Research" in Coast Survey Report, pp. 197–201 (Appendix No. 14), NOAA PDF Eprint. Reprinted 1958 in Collected Papers of Charles Sanders Peirce 7, paragraphs 139–157 and in 1967 in Operations Research 15 (4): pp. 643–648, Abstract from JSTOR.
 (1967) Peirce, C. S. (1967). "Note on the Theory of the Economy of Research". Operations Research. 15 (4): 643. doi:10.1287/opre.15.4.643.
 (1877–1878), "Illustrations of the Logic of Science"
 (1883), "A Theory of Probable Inference"
 and Jastrow, Joseph (1885), "On Small Differences in Sensation" in Memoirs of the National Academy of Sciences 3: pp. 73–83. Eprint.
 Bickel, Peter J. & Doksum, Kjell A. (2001). Mathematical Statistics: Basic and Selected Topics. I (Second (updated printing 2007) ed.). Pearson PrenticeHall. ISBN 013850363X.
 Davison, A.C. (2003) Statistical Models. Cambridge University Press. ISBN 0521773393
 Lehmann, Erich (1983). Theory of Point Estimation.
 Liese, Friedrich & Miescke, KlausJ. (2008). Statistical Decision Theory: Estimation, Testing, and Selection. Springer. ISBN 0387731938.
External links [ edit ]
 Media related to Statistical theory at Wikimedia Commons