Imprecise Probability
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Imprecise probability generalizes
probability theory Probability theory or probability calculus is the branch of mathematics concerned with probability. Although there are several different probability interpretations, probability theory treats the concept in a rigorous mathematical manner by expre ...
to allow for partial probability specifications, and is applicable when information is scarce, vague, or conflicting, in which case a unique
probability distribution In probability theory and statistics, a probability distribution is a Function (mathematics), function that gives the probabilities of occurrence of possible events for an Experiment (probability theory), experiment. It is a mathematical descri ...
may be hard to identify. Thereby, the theory aims to represent the available knowledge more accurately. Imprecision is useful for dealing with
expert elicitation In science, engineering, and research, expert elicitation is the synthesis of opinions of authorities of a subject where there is uncertainty due to insufficient data or when such data is unattainable because of physical constraints or lack of res ...
, because: * People have a limited ability to determine their own subjective probabilities and might find that they can only provide an interval. * As an interval is compatible with a range of opinions, the analysis ought to be more convincing to a range of different people.


Introduction

Uncertainty is traditionally modelled by a
probability Probability is a branch of mathematics and statistics concerning events and numerical descriptions of how likely they are to occur. The probability of an event is a number between 0 and 1; the larger the probability, the more likely an e ...
distribution, as developed by
Kolmogorov Andrey Nikolaevich Kolmogorov ( rus, Андре́й Никола́евич Колмого́ров, p=ɐnˈdrʲej nʲɪkɐˈlajɪvʲɪtɕ kəlmɐˈɡorəf, a=Ru-Andrey Nikolaevich Kolmogorov.ogg, 25 April 1903 – 20 October 1987) was a Soviet ...
,
Laplace Pierre-Simon, Marquis de Laplace (; ; 23 March 1749 – 5 March 1827) was a French polymath, a scholar whose work has been instrumental in the fields of physics, astronomy, mathematics, engineering, statistics, and philosophy. He summariz ...
, de Finetti,
Ramsey Ramsey may refer to: Companies *Ramsey (retailer), Turkish clothing retailer People * Ramsey (given name), including a list of people with the given name * Ramsey (surname), including a list of people with the surname * Baron de Ramsey, a title i ...
,
Cox Cox or COX may refer to: Companies * Cox Enterprises, a media and communications company ** Cox Communications, cable provider ** Cox Media Group, a company that owns television and radio stations ** Cox Automotive, an Atlanta-based busines ...
, Lindley, and many others. However, this has not been unanimously accepted by scientists, statisticians, and probabilists: it has been argued that some modification or broadening of probability theory is required, because one may not always be able to provide a probability for every event, particularly when only little information or data is available—an early example of such criticism is
Boole George Boole ( ; 2 November 1815 – 8 December 1864) was a largely self-taught English mathematician, philosopher and logician, most of whose short career was spent as the first professor of mathematics at Queen's College, Cork in Ireland. ...
's critique of
Laplace Pierre-Simon, Marquis de Laplace (; ; 23 March 1749 – 5 March 1827) was a French polymath, a scholar whose work has been instrumental in the fields of physics, astronomy, mathematics, engineering, statistics, and philosophy. He summariz ...
's work—, or when we wish to model probabilities that a group agrees with, rather than those of a single individual. Perhaps the most common generalization is to replace a single probability specification with an interval specification. Lower and upper probabilities, denoted by \underline(A) and \overline(A), or more generally, lower and upper expectations (previsions), aim to fill this gap. A lower probability function is
superadditive In mathematics, a function f is superadditive if f(x+y) \geq f(x) + f(y) for all x and y in the domain of f. Similarly, a sequence a_1, a_2, \ldots is called superadditive if it satisfies the inequality a_ \geq a_n + a_m for all m and n. The ...
but not necessarily additive, whereas an upper probability is subadditive. To get a general understanding of the theory, consider: *the special case with \underline(A)=\overline(A) for all events A is equivalent to a precise probability *\underline(A)=0 and \overline(A)=1 for all non-trivial events represents no constraint at all on the specification of P(A) We then have a flexible continuum of more or less precise models in between. Some approaches, summarized under the name ''nonadditive probabilities'', directly use one of these
set function In mathematics, especially measure theory, a set function is a function whose domain is a family of subsets of some given set and that (usually) takes its values in the extended real number line \R \cup \, which consists of the real numbers \R ...
s, assuming the other one to be naturally defined such that \underline(A^c)= 1-\overline(A), with A^c the complement of A. Other related concepts understand the corresponding intervals underline(A), \overline(A)/math> for all events as the basic entity.


History

The idea to use imprecise probability has a long history. The first formal treatment dates back at least to the middle of the nineteenth century, by
George Boole George Boole ( ; 2 November 1815 – 8 December 1864) was a largely self-taught English mathematician, philosopher and logician, most of whose short career was spent as the first professor of mathematics at Queen's College, Cork in Ireland. H ...
, who aimed to reconcile the theories of
logic Logic is the study of correct reasoning. It includes both formal and informal logic. Formal logic is the study of deductively valid inferences or logical truths. It examines how conclusions follow from premises based on the structure o ...
and probability. In the 1920s, in ''
A Treatise on Probability ''A Treatise on Probability'', published by John Maynard Keynes in 1921, provides a much more general logic of uncertainty than the more familiar and straightforward 'classical' theories of probability. This has since become known as a "logical ...
'',
Keynes John Maynard Keynes, 1st Baron Keynes ( ; 5 June 1883 – 21 April 1946), was an English economist and philosopher whose ideas fundamentally changed the theory and practice of macroeconomics and the economic policies of governments. Originall ...
formulated and applied an explicit interval estimate approach to probability. Work on imprecise probability models proceeded fitfully throughout the 20th century, with important contributions by
Bernard Koopman Bernard Osgood Koopman (January 19, 1900 – August 18, 1981) was a French-born American mathematician, known for his work in ergodic theory, the foundations of probability, statistical theory and operations research. Education and work ...
, C.A.B. Smith, I.J. Good, Arthur Dempster,
Glenn Shafer Glenn Shafer (born November 21, 1946) is an American mathematician and statistician. He is the co-creator of Dempster–Shafer theory. He is a University Professor and Board of Governors Professor at Rutgers University. Early life and education S ...
, Peter M. Williams,
Henry Kyburg Henry E. Kyburg Jr. (1928–2007) was Gideon Burbank Professor of Moral Philosophy and Professor of Computer Science at the University of Rochester, New York, and Pace Eminent Scholar at the Institute for Human and Machine Cognition, Pensacola, F ...
,
Isaac Levi Isaac Levi (June 30, 1930 – December 25, 2018) was an American philosopher who served as the John Dewey Professor of Philosophy at Columbia University. He is noted for his work in epistemology and decision theory. Education and career Levi wa ...
, and
Teddy Seidenfeld Teddy Seidenfeld is an American statistician and philosopher currently the H. A. Simon University Professor at Carnegie Mellon University Carnegie Mellon University (CMU) is a private research university in Pittsburgh, Pennsylvania, United St ...
. At the start of the 1990s, the field started to gather some momentum, with the publication of
Peter Walley Peter may refer to: People * List of people named Peter, a list of people and fictional characters with the given name * Peter (given name) ** Saint Peter (died 60s), apostle of Jesus, leader of the early Christian Church * Peter (surname), a sur ...
's book ''Statistical Reasoning with Imprecise Probabilities'' (which is also where the term "imprecise probability" originates). The 1990s also saw important works by Kuznetsov, and by Weichselberger, who both use the term ''interval probability''. Walley's theory extends the traditional subjective probability theory via buying and selling prices for gambles, whereas Weichselberger's approach generalizes
Kolmogorov Andrey Nikolaevich Kolmogorov ( rus, Андре́й Никола́евич Колмого́ров, p=ɐnˈdrʲej nʲɪkɐˈlajɪvʲɪtɕ kəlmɐˈɡorəf, a=Ru-Andrey Nikolaevich Kolmogorov.ogg, 25 April 1903 – 20 October 1987) was a Soviet ...
's axioms without imposing an interpretation. Standard consistency conditions relate upper and lower probability assignments to non-empty closed convex sets of probability distributions. Therefore, as a welcome by-product, the theory also provides a formal framework for models used in
robust statistics Robust statistics are statistics that maintain their properties even if the underlying distributional assumptions are incorrect. Robust Statistics, statistical methods have been developed for many common problems, such as estimating location parame ...
and
non-parametric statistics Nonparametric statistics is a type of statistical analysis that makes minimal assumptions about the underlying distribution of the data being studied. Often these models are infinite-dimensional, rather than finite dimensional, as in parametric s ...
. Included are also concepts based on Choquet integration, and so-called two-monotone and totally monotone capacities, which have become very popular in
artificial intelligence Artificial intelligence (AI) is the capability of computer, computational systems to perform tasks typically associated with human intelligence, such as learning, reasoning, problem-solving, perception, and decision-making. It is a field of re ...
under the name (Dempster–Shafer) belief functions. Moreover, there is a strong connection to
Shafer Schaefer is an alternative spelling and cognate for the German word ''schäfer'', meaning 'shepherd', which itself descends from the Old High German '' scāphare''. Variants "Shaefer", "Schäfer" (a standardized spelling in many German-speaking ...
and Vovk's notion of game-theoretic probability.


Mathematical models

The term "imprecise probability" is somewhat misleading in that precision is often mistaken for accuracy, whereas an imprecise representation may be more accurate than a spuriously precise representation. In any case, the term appears to have become established in the 1990s, and covers a wide range of extensions of the theory of
probability Probability is a branch of mathematics and statistics concerning events and numerical descriptions of how likely they are to occur. The probability of an event is a number between 0 and 1; the larger the probability, the more likely an e ...
, including: *
credal set In mathematics, a credal set is a set of probability distributions or, more generally, a set of (possibly only finitely additive) probability measures. A credal set is often assumed or constructed to be a closed convex set. It is intended to e ...
s, or sets of probability distributions * previsions * Random set theory * Dempster–Shafer evidence theory * lower and upper probabilities, or interval probabilities *
belief functions A belief is a subjective attitude that something is true or a state of affairs is the case. A subjective attitude is a mental state of having some stance, take, or opinion about something. In epistemology, philosophers use the term "belief" to ...
* possibility and necessity measures * lower and upper previsions * comparative probability orderings * partial preference orderings * sets of desirable gambles * p-boxes * robust Bayes methods


Interpretation of imprecise probabilities

A unification of many of the above-mentioned imprecise probability theories was proposed by Walley, although this is in no way the first attempt to formalize imprecise probabilities. In terms of
probability interpretations The word "probability" has been used in a variety of ways since it was first applied to the mathematical study of games of chance. Does probability measure the real, physical, tendency of something to occur, or is it a measure of how strongly on ...
, Walley's formulation of imprecise probabilities is based on the subjective variant of the Bayesian interpretation of probability. Walley defines upper and lower probabilities as special cases of upper and lower previsions and the gambling framework advanced by
Bruno de Finetti Bruno de Finetti (13 June 1906 – 20 July 1985) was an Italian probabilist statistician and actuary, noted for the "operational subjective" conception of probability. The classic exposition of his distinctive theory is the 1937 , which discuss ...
. In simple terms, a decision maker's lower prevision is the highest price at which the decision maker is sure he or she would buy a gamble, and the upper prevision is the lowest price at which the decision maker is sure he or she would buy the opposite of the gamble (which is equivalent to selling the original gamble). If the upper and lower previsions are equal, then they jointly represent the decision maker's
fair price In accounting, fair value is a rational and unbiased estimate of the potential market price of a good, service, or asset. The derivation takes into account such objective factors as the costs associated with production or replacement, market co ...
for the gamble, the price at which the decision maker is willing to take either side of the gamble. The existence of a fair price leads to precise probabilities. The allowance for imprecision, or a gap between a decision maker's upper and lower previsions, is the primary difference between precise and imprecise probability theories. This gap is also given by
Henry Kyburg Henry E. Kyburg Jr. (1928–2007) was Gideon Burbank Professor of Moral Philosophy and Professor of Computer Science at the University of Rochester, New York, and Pace Eminent Scholar at the Institute for Human and Machine Cognition, Pensacola, F ...
repeatedly for his interval probabilities, though he and
Isaac Levi Isaac Levi (June 30, 1930 – December 25, 2018) was an American philosopher who served as the John Dewey Professor of Philosophy at Columbia University. He is noted for his work in epistemology and decision theory. Education and career Levi wa ...
also give other reasons for intervals, or sets of distributions, representing states of belief.


Issues with imprecise probabilities

One issue with imprecise probabilities is that there is often an independent degree of caution or boldness inherent in the use of one interval, rather than a wider or narrower one. This may be a degree of confidence, degree of
fuzzy membership In mathematics, the membership function of a fuzzy set is a generalization of the indicator function for classical Set (mathematics), sets. In fuzzy logic, it represents the degree of truth as an extension of Valuation (logic), valuation. Degrees ...
, or threshold of acceptance. This is not as much of a problem for intervals that are lower and upper bounds derived from a set of probability distributions, e.g., a set of priors followed by conditionalization on each member of the set. However, it can lead to the question why some distributions are included in the set of priors and some are not. Another issue is why one can be precise about two numbers, a lower bound and an upper bound, rather than a single number, a point probability. This issue may be merely rhetorical, as the robustness of a model with intervals is inherently greater than that of a model with point-valued probabilities. It does raise concerns about inappropriate claims of precision at endpoints, as well as for point values. A more practical issue is what kind of decision theory can make use of imprecise probabilities. For fuzzy measures, there is the work of Ronald R. Yager. For convex sets of distributions, Levi's works are instructive. Another approach asks whether the threshold controlling the boldness of the interval matters more to a decision than simply taking the average or using a
Hurwicz Hurwicz (), () is a surname. Notable people with the surname include: * Leonid "Leo" Hurwicz (1917–2008), Jewish Russian-American economist and mathematician * Angelika Hurwicz (1922–1999), German actress and theatre director See also * Hu ...
decision rule. Other approaches appear in the literature.


See also

*
Ambiguity aversion In decision theory and economics, ambiguity aversion (also known as uncertainty aversion) is a preference for known risks over unknown risks. An ambiguity-averse individual would rather choose an alternative where the probability distribution of t ...
*
Robust decision making Robustness is the property of being strong and healthy in constitution. When it is transposed into a system, it refers to the ability of tolerating perturbations that might affect the system's functional body. In the same line ''robustness'' can ...
* Imprecise Dirichlet process


References


External links


The Society for Imprecise Probability: Theories and Applications
* ttp://ipg.idsia.ch The imprecise probability group at IDSIAbr>Stanford Encyclopedia of Philosophy article on Imprecise Probabilities
{{DEFAULTSORT:Imprecise Probability Probability theory Statistical approximations