Quantum machine learning: from physics to software engineering

A Melnikov, M Kordzanganeh, A Alodjants… - Advances in Physics …, 2023 - Taylor & Francis
Quantum machine learning is a rapidly growing field at the intersection of quantum
technology and artificial intelligence. This review provides a two-fold overview of several key …

A survey of quantum computing for finance

D Herman, C Googin, X Liu, A Galda, I Safro… - arXiv preprint arXiv …, 2022 - arxiv.org
Quantum computers are expected to surpass the computational capabilities of classical
computers during this decade and have transformative impact on numerous industry sectors …

Compositionality decomposed: How do neural networks generalise?

D Hupkes, V Dankers, M Mul, E Bruni - Journal of Artificial Intelligence …, 2020 - jair.org
Despite a multitude of empirical studies, little consensus exists on whether neural networks
are able to generalise compositionally, a controversy that, in part, stems from a lack of …

[PDF][PDF] Deep unordered composition rivals syntactic methods for text classification

M Iyyer, V Manjunatha, J Boyd-Graber… - Proceedings of the …, 2015 - aclanthology.org
Many existing deep learning models for natural language processing tasks focus on
learning the compositionality of their inputs, which requires many expensive computations …

A convolutional neural network for modelling sentences

N Kalchbrenner, E Grefenstette, P Blunsom - arXiv preprint arXiv …, 2014 - arxiv.org
The ability to accurately represent sentences is central to language understanding. We
describe a convolutional architecture dubbed the Dynamic Convolutional Neural Network …

Distributional semantics and linguistic theory

G Boleda - Annual Review of Linguistics, 2020 - annualreviews.org
Distributional semantics provides multidimensional, graded, empirically induced word
representations that successfully capture many aspects of meaning in natural languages, as …

[引用][C] Quantum Models of Cognition and Decision

J Busemeyer - 2012 - books.google.com
Much of our understanding of human thinking is based on probabilistic models. This
innovative book by Jerome R. Busemeyer and Peter D. Bruza argues that, actually, the …

QNLP in practice: Running compositional models of meaning on a quantum computer

R Lorenz, A Pearson, K Meichanetzidis… - Journal of Artificial …, 2023 - jair.org
Abstract Quantum Natural Language Processing (QNLP) deals with the design and
implementation of NLP models intended to be run on quantum hardware. In this paper, we …

Distributional models of word meaning

A Lenci - Annual review of Linguistics, 2018 - annualreviews.org
Distributional semantics is a usage-based model of meaning, based on the assumption that
the statistical distribution of linguistic items in context plays a key role in characterizing their …

Neurocomputational models of language processing

JT Hale, L Campanelli, J Li, S Bhattasali… - Annual Review of …, 2022 - annualreviews.org
Efforts to understand the brain bases of language face the Mapping Problem: At what level
do linguistic computations and representations connect to human neurobiology? We review …