Month: October 2024

Talk of interest on 10/25: Paul Portner

The Linguistics Colloquium on October 25 will feature Paul Portner (Georgetown University). Details as follows:

Friday Oct. 25 (4-6 pm), in person at SHH112.

Title: The Semantics of Profane Quasi-Verbs: Social Relations in a Dynamic Framework

Abstract

Though profane imprecations like F*** you! have received no attention in formal semantics, we might expect our theory of linguistic meaning to have something to say about such common expressions. In this talk, I discuss the nature of the meanings of profane quasi-verbs (Quang 1971) that function syntactically like f*** in the example above, and I provide a formal model that can account for some important aspects of their meaning and conversational use. This analysis throws light on the role of social relations in semantics and pragmatics.

 

Talk of interest on 10/25: Nicole Cruz

This week’s Logic Colloquium:
Nicole Cruz (University of Potsdam)
Friday, October 25, 2:00-3:30pm
SHH 110 & Zoom
Disentangling conditional dependencies
(joint work with Michael Lee)
Abstract: People draw on event co-occurrences as a foundation for causal and scientific inference, but in which ways can events co-occur? Statistically, one can express a dependency between events A and C as P(C|A) != P(C), but this relation can be further specified in a variety of ways, particularly when A and/or C are themselves conditional events. In the psychology of reasoning, the conditional P(C|A) is often thought to become biconditional when people add the converse, P(A|C), or inverse, P(not-C|not-A), or both, with the effects of these additions largely treated as equivalent. In contrast, from a coherence based logical perspective it makes a difference whether the converse or the inverse is added, and in what way. In particular, the addition can occur by forming the conjunction of two conditionals, or by merely constraining their probabilities to be equal. Here we outline four distinct ways of defining biconditional relationships, illustrating their differences by how they constrain the conclusion probabilities of a set of inference forms. We present a Bayesian latent-mixture model with which the biconditionals can be dissociated from one another, and discuss implications for the interpretation of empirical findings in the field.
Join Zoom Meeting:
Meeting ID: 997 3571 5427
Passcode: 18481108