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Issues in Applying Probability Theory to AGI

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Title: Issues in Applying Probability Theory to AGI


1
Issues in Applying Probability Theory to AGI
  • Pei Wang
  • Temple University
  • Philadelphia, USA

2
What Is Probability?
  • As a mathematical theory, probability theory is
    defined by its axioms on a probability function
    P(x)
  • When the theory is applied to a concrete problem,
    P(x) needs to be interpreted to measure something
    in the domain. Common choices
  • Frequentist the limit of occurrence frequency
  • Subjective the degree of belief of a subject
  • Logical the degree of evidential support

3
Probability is Relative
  • P(A) is not an intrinsic property of A under
    every interpretation, but related to a reference
  • Frequentist relative to an event sequence
  • Subjective relative to a given subject
  • Logical relative to a body of evidence
  • A probability function PR(x) cannot be legally
    used without a clear interpretation and a fixed
    reference R, though they are often implicit in
    the description

4
Frequentist Interpretation in AGI
  • Given the general-purpose demand of AGI,
    probability under the frequentist interpretation
    has issues
  • The reference sequence is hard to decide
  • Some events' occurrence frequency has no limit
  • Some events are unique and unrepeatable
  • Some statements are not even events
  • Frequentist interpretation is too restrict for
    AGI

5
Subjective Interpretation in AGI
  • The subjective interpretation only demands the
    consistency among degrees of belief (don't
    confuse it with the logical interpretation)
  • Issues when it is used in AGI
  • Too weak ? the system can believe anything, as
    far as the beliefs are consistent
  • Too strong ? though the consistency among beliefs
    are highly desired, it may not be achievable in
    AGI in realistic situations

6
Logical Interpretation in AGI
  • Intuitively, this is the most suitable
    interpretation for AGI, since the system's degree
    of belief should measure evidential support.
  • Issues
  • How to define evidence? (Confirmation Paradox,
    evidential support vs. conditional probability)
  • Can simplicity be used as evidence? (Occam's
    razor)
  • Can all the beliefs in a system be evaluated by
    the same evidence? (Bayesian conditioning)

7
Degree of Belief in NARS
  • NARS assumes insufficient knowledge and
    resources, and consequently,
  • Evidence is defined on all statements in a term
    logic
  • Truth-value, degree of belief, and
    evidential support are the same thing
  • Each belief has its own evidential base, so the
    degrees of belief are not necessarily consistent
  • Simplicity is preferred, but not factored in
    truth-value

8
Conclusion
  • Probability theory cannot be used as the
    foundation of AGI, because (even under a proper
    interpretation) it demands knowledge (such as a
    prior distribution that is immune to future
    revision) and resources (for global belief
    update) that AGI systems cannot afford
  • When the axioms of probability theory are
    violated, the resulting models are not legal
    approximations of the theory, unless
    approximation ratio is accurately proved
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