Models vs. Inductive Inference for Dealing With Probabilistic Knowledge
Norman C. Dalkey

TL;DR
This paper compares two approaches to probabilistic knowledge: models that assume known probabilities and focus on manageability, and inductive inference that extends partial knowledge through induction, highlighting their structural similarities.
Contribution
It clarifies the conceptual and structural connections between modeling and inductive inference approaches to probabilistic reasoning.
Findings
Both approaches use similar structural frameworks involving variable clusters.
Product extension in both approaches is justified by different principles.
The paper highlights the commonalities despite different foundational assumptions.
Abstract
Two different approaches to dealing with probabilistic knowledge are examined -models and inductive inference. Examples of the first are: influence diagrams [1], Bayesian networks [2], log-linear models [3, 4]. Examples of the second are: games-against nature [5, 6] varieties of maximum-entropy methods [7, 8, 9], and the author's min-score induction [10]. In the modeling approach, the basic issue is manageability, with respect to data elicitation and computation. Thus, it is assumed that the pertinent set of users in some sense knows the relevant probabilities, and the problem is to format that knowledge in a way that is convenient to input and store and that allows computation of the answers to current questions in an expeditious fashion. The basic issue for the inductive approach appears at first sight to be very different. In this approach it is presumed that the relevant…
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Taxonomy
TopicsStatistical Mechanics and Entropy · Bayesian Modeling and Causal Inference · Forecasting Techniques and Applications
