** High Priority **
ROOM CHANGE!!!!!!!!!!!!!!!!:
Because of the ongoing Summer University, we expect more persons coming
to Professor Waldmann`s talk than we can accommodate in room G15,
Frankel.
Therefore the talk is going to be in Room 303, 3rd Floor, in the same
building from 17:00.
The journal club remains in G15 from 15:30 till 16:30.
Kind regards,
Reka
>> Gyorgyne Finta 6/25/2012 12:28 PM >>>
The CEU Department of Cognitive Science cordially invites you to a talk
(as part of its Departmental Colloquium series)
by
Michael R. Waldmann
Department of Psychology, University of Göttingen
Date: Wednesday, June 27, 2012 - 17:00 - 18:30
Location: Department of Cognitive Science, CEU, Frankel Leó út 30-34.,
Room G15
Agents and Causes:
Reconciling Competing Theories of Causal Reasoning
Michael R. Waldmann and Ralf Mayrhofer
Currently in both psychology and philosophy two important frameworks of
causal reasoning compete. Whereas dependency theories (e.g., causal
Bayes nets) focus on causally motivated statistical or counterfactual
dependencies between events, dispositional theories model causation as
arising from the interaction between causal participants endowed with
intrinsic dispositions or forces (e.g., force dynamics). The main goal
of the present project is to reconcile these two competing frameworks.
In a series of experiments we have focused on one of the most
fundamental assumptions underlying causal Bayes nets, the Markov
constraint. According to this constraint, an inference between a cause
and an effect should be invariant across conditions in which other
effects of this cause are present or absent. Previous research has
demonstrated that reasoners tend to violate this assumption
systematically over a wide range of domains. We hypothesize that people
are guided by abstract assumptions about the mechanisms underlying
otherwise identical causal relations. In particular, we suspect that the
distinction between agents and patients, which can be disentangled from
the distinction between causes and effects, influences which causal
variable people blame when an error occurs. We have developed and tested
a causal Bayes net model which captures different error attributions
using a hidden common preventive noise source that provides a rational
explanation of the presence or absence of Markov violations. We're
looking forward to see you there (Frankel Leo u. 30-34) !
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