The Mathematics of Text Structure
April 06, 2019 ยท Declared Dead ยท ๐ Joachim Lambek: The Interplay of Mathematics, Logic, and Linguistics
"No code URL or promise found in abstract"
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Authors
Bob Coecke
arXiv ID
1904.03478
Category
cs.CL: Computation & Language
Cross-listed
math.CT,
quant-ph
Citations
55
Venue
Joachim Lambek: The Interplay of Mathematics, Logic, and Linguistics
Last Checked
3 months ago
Abstract
In previous work we gave a mathematical foundation, referred to as DisCoCat, for how words interact in a sentence in order to produce the meaning of that sentence. To do so, we exploited the perfect structural match of grammar and categories of meaning spaces. Here, we give a mathematical foundation, referred to as DisCoCirc, for how sentences interact in texts in order to produce the meaning of that text. First we revisit DisCoCat. While in DisCoCat all meanings are fixed as states (i.e. have no input), in DisCoCirc word meanings correspond to a type, or system, and the states of this system can evolve. Sentences are gates within a circuit which update the variable meanings of those words. Like in DisCoCat, word meanings can live in a variety of spaces e.g. propositional, vectorial, or cognitive. The compositional structure are string diagrams representing information flows, and an entire text yields a single string diagram in which word meanings lift to the meaning of an entire text. While the developments in this paper are independent of a physical embodiment (cf. classical vs. quantum computing), both the compositional formalism and suggested meaning model are highly quantum-inspired, and implementation on a quantum computer would come with a range of benefits. We also praise Jim Lambek for his role in mathematical linguistics in general, and the development of the DisCo program more specifically.
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