Open System Categorical Quantum Semantics in Natural Language Processing
Robin Piedeleu, Dimitri Kartsaklis, Bob Coecke, Mehrnoosh Sadrzadeh

TL;DR
This paper extends categorical quantum semantics to natural language processing by incorporating density matrices for ambiguity and polysemy, and encoding grammatical structures with advanced quantum-inspired models.
Contribution
It introduces the use of Selinger's CPM-construction and non-commutative structures to improve semantic modeling of ambiguity, entailment, and grammatical composition in NLP.
Findings
Preliminary evidence supports the validity of the density matrix model for word meaning.
The model effectively distinguishes homonymy and polysemy.
Encoding grammatical structures with quantum-inspired models enhances semantic analysis.
Abstract
Originally inspired by categorical quantum mechanics (Abramsky and Coecke, LiCS'04), the categorical compositional distributional model of natural language meaning of Coecke, Sadrzadeh and Clark provides a conceptually motivated procedure to compute the meaning of a sentence, given its grammatical structure within a Lambek pregroup and a vectorial representation of the meaning of its parts. The predictions of this first model have outperformed that of other models in mainstream empirical language processing tasks on large scale data. Moreover, just like CQM allows for varying the model in which we interpret quantum axioms, one can also vary the model in which we interpret word meaning. In this paper we show that further developments in categorical quantum mechanics are relevant to natural language processing too. Firstly, Selinger's CPM-construction allows for explicitly taking into…
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