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  1. The normative representation of quantified beliefs by belief functions.Philippe Smets - 1997 - Artificial Intelligence 92 (1--2):229--242.
  • A logic for default reasoning.Ray Reiter - 1980 - Artificial Intelligence 13 (1-2):81-137.
  • Diverse confidence levels in a probabilistic semantics for conditional logics.Paul Snow - 1999 - Artificial Intelligence 113 (1-2):269-279.
  • The transferable belief model.Philippe Smets & Robert Kennes - 1994 - Artificial Intelligence 66 (2):191-234.
  • Probabilistic semantics for Delgrande's conditional logic and a counterexample to his default logic.Gerhard Schurz - 1998 - Artificial Intelligence 102 (1):81-95.
  • What does a conditional knowledge base entail?Daniel Lehmann & Menachem Magidor - 1992 - Artificial Intelligence 55 (1):1-60.
  • Nonmonotonic reasoning, preferential models and cumulative logics.Sarit Kraus, Daniel Lehmann & Menachem Magidor - 1990 - Artificial Intelligence 44 (1-2):167-207.
  • Nonmonotonic inference based on expectations.Peter Gärdenfors & David Makinson - 1994 - Artificial Intelligence 65 (2):197-245.
  • Qualitative probabilities for default reasoning, belief revision, and causal modeling.Moisés Goldszmidt & Judea Pearl - 1996 - Artificial Intelligence 84 (1-2):57-112.
    This paper presents a formalism that combines useful properties of both logic and probabilities. Like logic, the formalism admits qualitative sentences and provides symbolic machinery for deriving deductively closed beliefs and, like probability, it permits us to express if-then rules with different levels of firmness and to retract beliefs in response to changing observations. Rules are interpreted as order-of-magnitude approximations of conditional probabilities which impose constraints over the rankings of worlds. Inferences are supported by a unique priority ordering on rules (...)
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  • Using crude probability estimates to guide diagnosis.Johan de Kleer - 1990 - Artificial Intelligence 45 (3):381-391.
  • Fuzzy Sets as a Basis for a Theory of Probability.Lofti A. Zadeh - 1978 - Fuzzy Sets and Systems 1:3-28.