Title: Dr. Matthew Ikl
1 Probabilistic Quantifier Logic for General
Intelligence An Indefinite Probabilities
Approach
Dr. Matthew Iklé Department of Mathematics and
Computer Science Adams State College
2Probabilistic Logic Networks
- A Probabilistic Logic Inference System
- unifies probability and logic
- key component of the Novamente Cognition
Engine, an integrative AGI system - BUT independent of Novamente -- designed
with ability to be incorporated into other
systems
3Probabilistic Logic Networks
- supports the full scope of inferences required
within an intelligent system, including e.g.
first and higher order logic, intensional and
extensional reasoning, and so forth - lends itself naturally to methods of
inference control that are computationally
tractable, and able to make use of the inputs
provided by - non-logical cognitive mechanisms
4Weight of Evidence
- What is it?
- Why is it important?
- E.g. belief revision
- One approach weight of ev. interval
width - .2,.8 means less evidence than .4,.6
- Pei Wangs NARS system
- Walleys Imprecise Probabilities
- Heuristic approaches
5Indefinite Probabilities
- primary measure of uncertainty utilized within
PLN - hybrid of Walleys Imprecise Probabilities
and Bayesian credible intervals - provides a natural mechanism for
determining weight of evidence - PLNs logical inference rules are associated
with indefinite truth value formulas or
procedures - Prior papers have given indefinite truth
value formulas for a number of PLN inference
rules, but have not dealt with quantifiers
6Indefinite Probabilities Review
- truth-value takes the form of a quadruple
(L, U, b, k) - There is a probability b that, after k more
observations, the truth value assigned to the
statement S will lie in the interval L, U - Given intervals, Li,Ui , of mean premise
probabilities, we first find a distribution
from the second-order distribution family
supported on - L1i,U1i so that these means have L i,Ui as
(100bi) credible intervals - For each premise, we use Monte-Carlo
methods to generate samples for each of
the first-order distributions with means given
by samples of the second- order distributions.
We then apply the inference rules to the set of
premises for each sample point, and calculate
the mean of each of these distributions.
7Quantifiers Via Indefinite Probabilities
- Goals
- logical and conceptual consistency
- agreement with standard quantifier logic for
the crisp case (for all expressions to which
standard quantifier logic assigns truth values) - gives intuitively reasonable answers in
practical cases - compatibility with probability theory in
general and PLN in particular - handles fuzzy quantifiers as well as
standard universal and existential quantifiers - comprehensive, conceptually coherent,
probabilistically grounded and computationally
tractable approach
8Quantifiers in Indefinite Probabilities
- utilize third-order probabilities
- non-standard semantic approach
- we assign truth values to expressions
with unbound variables, yet without in doing so
binding the variables - unusual but not contradictory
- expression with unbound variables,
as a mathematical entity, may be mapped into
a truth value without introducing any
mathematical or conceptual inconsistency - approach reduces to the standard
crisp approach in terms of truth value
assignation for all expressions for which the
standard crisp approach assigns a truth value.
- our approach also assigns truth
values to some expressions (formulas standard
crisp approach assigns no truth value
9Quantifiers in Indefinite Probabilities ForAll
- Suppose we have an indefinite probability
for an expression F(t) with unbound variable t,
summarizing an envelope E of probability
distributions corresponding to F(t) - How do derive from this an indefinite
probability for the expression ForAll x, F(x)? - we consider the envelope E to be part of a
higher-level envelope E1, which is an envelope
of envelopes - given that we have observed E, what is the
chance (according to E1) that the true envelope
describing the world actually is almost entirely
supported within 1-e, 1, where the latter
interval is interpreted to constitute
essentially 1
10Quantifiers in Indefinite Probabilities ThereExis
ts
- For ThereExists x, F(x), what is the chance
(according to E1) that the true envelope
describing the world actually is not entirely
supported within 0, e, where the latter
interval is interpreted to constitute
essentially zero
11Quantifiers in Indefinite Probabilities The
proxy_confidence_level parameter
- By almost entirely (in ForAll case) we mean that
the fraction contained is at least
proxy_confidence_level (PCL) - the interval PCL, 1 represents the fraction of
bottom-level distributions completely contained
in the interval 1-e, 1
12Quantifiers in Indefinite Probabilities Fuzzy
Quantifiers
- indefinite probabilities provide a natural
- method for fuzzy quantifiers such as AlmostAll
and Afew - In analogy with the interval PCL, 1 we
- introduce the parameters lower_proxy_confiden
ce (LPC) and - upper_proxy_confidence (UPC)
- Letting LPC, UPC 0.9, 0.99, the
- interval could now naturally represent AlmostAll
- the same interval could represent AFew by
setting LPC to a value such - as 0.05 and UPC to, say, 0.1.
13Summary
- incorporating a third level of
distributions, as perturbations, into the
indefinite probabilities framework allows for
extension of indefinite probabilities to handle
a sliding scale of fuzzy and crisp quantifiers - computationally tractable
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