Quantum walk and its application domains: A systematic review
K Kadian, S Garhwal, A Kumar - Computer Science Review, 2021 - Elsevier
Quantum random walk is the quantum counterpart of a classical random walk. The classical
random walk concept has long been used as a computational framework for designing …
random walk concept has long been used as a computational framework for designing …
Quantum computing in bioinformatics: a systematic review map**
K Nałęcz-Charkiewicz, K Charkiewicz… - Briefings in …, 2024 - academic.oup.com
The field of quantum computing (QC) is expanding, with efforts being made to apply it to
areas previously covered by classical algorithms and methods. Bioinformatics is one such …
areas previously covered by classical algorithms and methods. Bioinformatics is one such …
Learning metrics for persistence-based summaries and applications for graph classification
Q Zhao, Y Wang - Advances in neural information …, 2019 - proceedings.neurips.cc
Recently a new feature representation and data analysis methodology based on a
topological tool called persistent homology (and its persistence diagram summary) has …
topological tool called persistent homology (and its persistence diagram summary) has …
Network comparison and the within-ensemble graph distance
Quantifying the differences between networks is a challenging and ever-present problem in
network science. In recent years, a multitude of diverse, ad hoc solutions to this problem …
network science. In recent years, a multitude of diverse, ad hoc solutions to this problem …
Quantum-based subgraph convolutional neural networks
This paper proposes a new graph convolutional neural network architecture based on a
depth-based representation of graph structure deriving from quantum walks, which we refer …
depth-based representation of graph structure deriving from quantum walks, which we refer …
Graphqntk: quantum neural tangent kernel for graph data
Abstract Graph Neural Networks (GNNs) and Graph Kernels (GKs) are two fundamental
tools used to analyze graph-structured data. Efforts have been recently made in develo** …
tools used to analyze graph-structured data. Efforts have been recently made in develo** …
Weighted graph regularized sparse brain network construction for MCI identification
Brain functional networks (BFNs) constructed from resting-state functional magnetic
resonance imaging (rs-fMRI) have been widely applied to the analysis and diagnosis of …
resonance imaging (rs-fMRI) have been widely applied to the analysis and diagnosis of …
Graph kernel neural networks
The convolution operator at the core of many modern neural architectures can effectively be
seen as performing a dot product between an input matrix and a filter. While this is readily …
seen as performing a dot product between an input matrix and a filter. While this is readily …
Deep rényi entropy graph kernel
Graph kernels are applied heavily for the classification of structured data. In this paper, we
propose a deep Rényi entropy graph kernel for this purpose. We gauge the deep …
propose a deep Rényi entropy graph kernel for this purpose. We gauge the deep …
QBER: Quantum-based Entropic Representations for un-attributed graphs
In this paper, we propose a novel framework of computing the Quantum-based Entropic
Representations (QBER) for un-attributed graphs, through the Continuous-time Quantum …
Representations (QBER) for un-attributed graphs, through the Continuous-time Quantum …