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A Sketch of a theory of Quantity

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Title: A Sketch of a theory of Quantity


1
A Sketch of a theory of Quantity
  • Praveen Paritosh
  • Qualitative Reasoning Group,
  • Department of Computer Science,
  • Northwestern University, Evanston IL 60201 USA

2
Outline
  • Goals and Questions
  • Background and Motivation
  • Desiderata and Arguments
  • Building Cognitively Plausible Representations
  • Conclusions

3
Outline
  • Goals and Questions
  • Background and Motivation
  • Desiderata and Arguments
  • Building Cognitively Plausible Representations
  • Conclusions

4
Overarching Goal
  • How do people understand quantities?
  • Ubiquity of quantities Price, Height,
    Temperature, Intelligence, etc.
  • For instance, we know that
  • Zero degree Celsius is an important temperature
    for water
  • Life below poverty line is hard
  • Brazil is a large country
  • Basketball players are tall
  • Just how much pepper might make the meal too hot

5
Why important?
  • Why important?
  • Qualitative Reasoning Qualitative
    representations of quantity.
  • Knowledge representation a disconnect between
    symbolic and numeric representations, e.g., CYC.
  • Psychology Dimensions, Similarity.
  • Cognitive Science Computational models of
    retrieval, similarity and generalization.
  • Linguistics Dimensional adjectives.

6
Specific Questions
  • Q1. How is our knowledge of quantities
    represented?
  • Cognitively plausible representational machinery.
  • Q2. What is the content of these representations?
  • How do we carve up the continuous?
  • Mechanisms to automatically make the
    distinctions.
  • Mapping the distinctions (e.g., symbols in
    quantity space) to numeric values.
  • To answer, combine evidence and constraints from
  • Psychology
  • Natural Language, Linguistics
  • Ecological constraints
  • Reasoning/Task constraints

7
Outline
  • Goals and Questions
  • Background and Motivation
  • Desiderata and Arguments
  • Building Cognitively Plausible Representations
  • Conclusions

8
Qualitative Representations of Quantity
  • Many frameworks
  • Status Algebra
  • Normal/Abnormal
  • Sign Algebra
  • -, 0,
  • Quantity Spaces
  • Tfreeze, Tboil
  • (Fuzzy) Intervals
  • Order of Magnitude
  • Finite Algebras, etc.
  • Quantizations of the continuous (Reals)
  • Weaker than quantitative
  • Symbolic
  • Behaviorally meaningful
  • Little work on
  • Cognitive plausibility
  • What distinctions to make?

9
Models of Similarity
  • Models of similarity do not take numbers into
    account appropriately
  • Feature vector, or metric space
  • CBR Leake, 1996
  • Minkowski distance metric
  • Structured
  • SME Falkenhainer, Forbus and Gentner, 1989
  • Ignore
  • Numeric aspects of representation do not
    contribute to similarity.
  • How to compute similarity along a dimension?
  • How to combine similarity along different
    dimensions?

10
Outline
  • Goals and Questions
  • Background and Motivation
  • Desiderata and Arguments
  • Building Cognitively Plausible Representations
  • Conclusions

11
Three pillars of support
  • Reasoning/task constraints
  • What kind of reasoning tasks we do with that
    quantity?
  • Ecological constraints
  • How does the quantity vary in the real world?
  • Psychological constraints
  • How do we perceive/understand the quantity?

Representations dont arise in vacuum.
12
Reasoning Constraints
What do we do with quantities?
  • Comparison
  • Is A taller than B?
  • Semantic congruity effect Flora and Banks, 1977
  • Classification
  • Is A tall?
  • Is the water boiling?
  • Estimation
  • How tall is A?
  • Anchoring and adjustment Tversky and Kahneman,
    1974.
  • Labels like large set-up implicit ordinal
    relations, ease comparison.
  • Must keep track of interesting points on the
    space of values, to classify and estimate.

13
Ecological Constraints
What constrains the value a quantity can take?
  • Quantities vary
  • But in causally connected ways
  • Structural Bundles
  • e.g., as the engine mass increases, BHP, Bore,
    Displacement increases RPM decreases.
  • Our representations must have
  • Distributional information
  • Role and relationship of a quantity in underlying
    structure/mechanism

14
Psychological Constraints 1
What do we know about how we process/understand
quantities?
  • Evidence regarding landmarks.
  • Across landmark Harnad, 1987

a
a
b

b
Sim(a, b) gt Sim(a, b)
  • Asymmetry in comparing to/from landmark Rosch,
    1975 Holyoak and Mah, 1984

Sim(a, ) gt Sim(, a)
15
Psychological Constraints 2
  • Evidence regarding distributional assimilation
  • Malmi and Samson, 1983
  • Social Psychology on stereotypes.
  • Evidence regarding acquisition of dimensional
    adjectives
  • Ryalls and Smith, 2000
  • also analyses in Linguistics thereof Bierwish,
    1967 Kennedy, 2003).

16
Summary What do we know about quantities?
  • Their range, likelihood of values, variability
  • Distributional information.
  • A carving-up of the space of values
  • Dimensionally dimensional adjectives like large,
    small, etc.
  • Structurally special points like freezing point,
    poverty line, etc.

17
Outline
  • Goals and Questions
  • Background and Motivation
  • Desiderata and Arguments
  • Building Cognitively Plausible Representations
  • Conclusions

18
Structural Limit Points (SLP)
  • Builds upon, and generalizes the following ideas
  • Limit points (Forbus 1984)
  • Phase transitions (see Sethna 1992)
  • Attribute co-variation, or, Feature correlation
    (Malt and Smith, 1984)

19
Structural Limit Points
Structurally un-predictive quantity.
structural clustering
C3
C2
C1
Structurally predictive quantity, e.g., GDP
20
Structural Limit Points Examples
Temperature of water (degree Celsius)
Freezing Point
Boiling Point
Income of people ()
Poverty Line
Middle Class
Upper Class
Lower Class
Size of dictionaries (Number of Pages, Weight)
Library Editions
Pocket Editions
Desktop Editions
21
Structural Limit Points
  • Change in underlying causal story, mechanism,
    essentially, relational structure.
  • Processes (QP Theory) a special case of
    structural bundles.
  • Phase transition analogy
  • structure of relationships equations of phase
  • Crisp/soft SLPs first-/second- order phase
    transitions.

Discontinuities in the underlying reality as
captured by the structure in the representation.
22
Distributional Partitions
  • Many (most?) references to quantities in NL are
    dimensional adjectives (e.g., large, small,
    expensive).
  • QR, and Fuzzy Logic have indeed used linguistic
    symbols, but very little emphasis on their having
    similar meaning to that in NL.
  • Goal Algorithm that answers the following
    questions as people would
  • How big is a large flamingo?
  • How big is a large animal?
  • Possible criticism Ill-founded Are people
    consistent?

23
Distributional Partitions
  • A large ltxgt acquires its meaning by identifying
    the large tail-end of the distribution of values
    of size of ltxgt.
  • Most common distributions uniform, normal, zipf,
    skewed.
  • Open question How do we carve up the
    distributions?

24
Why Distributional Partitions?
  • Bootstrapping the first-cut partitions, based
    purely on variance of quantity values.
  • Parameters that are not structurally central
    (height of professors, in contrast with height of
    basketball players).
  • No structural variance in the class of examples
    (size of adult male penguins).

25
The Sketch
  • Compiled by SEQL, and used to build
    distributional partitions and structural limit
    points.

Distributions
  • First-cut symbolic representations, e.g., large.
  • Makes retrieval (MAC/FAC) more quantity-aware.

Distributional Partitions
  • Relational representations, e.g., someones
    income is below poverty line.
  • Makes structural similarity more quantity-aware.
  • Helps make analogical inferences about
    quantities.

Structural Limit Points
26
Proposed Evaluation
  • Build an Analogical Estimator, which will
    estimate a quantitative value by retrieving most
    similar example for which we know the value.
  • A key part of Back of the Envelope reasoner
    Paritosh and Forbus, 2003.
  • Compare representations to experts
    representations.
  • Test if improved retrieval and similarity with
    these representations.

27
Outline
  • Goals and Questions
  • Background and Motivation
  • Desiderata and Arguments
  • Building Cognitively Plausible Representations
  • Conclusions

28
Conclusions
  • Cognitively plausible symbolic representations of
    quantity a key part of answer to
  • How do we understand quantities?
  • How are quantities implicated in retrieval,
    similarity and generalization?
  • The key aspects of such representations
  • Distributions
  • Distributional partitions
  • Structural Limit Points

29
Specific Questions Redux
  • Q1. How is our knowledge of quantities
    represented?
  • Quantity space augmented.
  • Q2. What is the content of these representations?
  • How do we carve up the continuous?
  • Distributional Partitions
  • Heuristics of how people make these
  • Structural Limit Points
  • Starting from SEQL, implement these ideas into an
    incremental learning algorithm

30
Acknowledgements
  • Ken Forbus
  • Dedre Gentner
  • Lance Rips
  • Chris Kennedy
  • Sven Kuehne
  • Office of Naval Research

31
Extra Slides
32
Open Questions
33
SEQQL
34
Scratch slides
35
  • Key concern is reasoning, little work that
    establishes cognitive plausibility.
  • Little work on the content of our
    representations, or, What distinctions to make?
  • Necessary and Relevant, as chosen by the modeler,
    for the task (but see Sachenbacher and Struss,
    2000).

36
Retrieval, Similarity and Generalization
  • Analogical matching
  • SME Falkenhainer, Forbus and Gentner, 1989
  • Similarity-based retrieval
  • MAC/FAC Forbus, Gentner and Law, 1995
  • Generalization from examples
  • SEQL Kuehne, Forbus, Gentner and Quinn, 2000
  • Numeric aspects of representation do not
    contribute to similarity.
  • How to compute similarity along a dimension?
  • How to combine similarity along different
    dimensions?
  • Red versus Large
  • Learning the sense of the quantity, e.g., a trip
    to the zoo.
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