Poster Sessions

Preparing your poster

    • All posters should be based on the submitted abstract that has been accepted by the Programme Committee.
    • Poster displays are limited to one side of a poster panel, 100cm (width) x 225cm tall from the floor.
    • The recommended poster size is A0 (portrait layout): 84.1cm (width) x 118.9 cm (height).
    • Be sure to include the title of the abstract, the names of the author and co-authors, and the affiliations.
    • Please note that all posters must be displayed in English.
    • It is recommended that you hand-carry your poster to the conference in a tube or portfolio case. Costs associated with the creation and shipping of the poster display are the responsibility of the authors. Poster printing will NOT be available on site.
    • For first-time presenters, guides on preparing impactful poster are abundant online, and you can find some inspiration here. The most important feature of effective posters is that they do not contain a lot of text; good posters usually have 100-1000 words.

Displaying your poster

  • The poster session is located next to the conference room.
  • Posters are randomly assigned to session I or II. Please check the lists below to find out which session you are presenting in.
  • Posters can be set up from 12:30 on the day of your session. Poster sessions are 16:30-18:00. Please be at your poster during this period. Posters should be removed after 18:00.
  • There is no allocated space for each poster. Please put up your printed poster on any available poster boards, first come first served.
  • Velcro will be provided on site. No glue, double-sided tape, tacks or staples are permitted on the poster boards.
  • Please note that the Organising Committee is not responsible for any damage or loss of posters. Any posters remaining after the removal time will be removed and discarded after the event.

Poster Session I: Monday

EasyChairID Authors Title
181 Marco Sciorilli, Lucas Borges, Giancarlo Camilo, Thiago O. Maciel, Askery Canabarro and Leandro Aolita A competitive NISQ and qubit-efficient solver for the LABS problem
111 Tim Forrer, Matthew Wilson, Philip Taranto, Jisho Miyazaki and Mio Murao A compositional framework for leveraging quantum learning to circumvent no-go theorems
261 Ian Joel David, Ilya Sinayskiy and Francesco Petruccione A faster converging qDRIFT algorithm with application to Hamiltonian data encoding
321 Kieran McDowall, Theodoros Kapourniotis, Christopher Oliver, Phalgun Lolur and Konstantinos Georgopoulos A Practical Cross-Platform, Multi-Algorithm Study of Quantum Optimisation for Configurational Analysis of Materials
88 Tara Kit, Leanghok Hour, Muyleang Ing and Youngsun Han A Resource-Efficient Quantum-Classical Model for Protein–Ligand Binding Affinity Prediction
291 Vincenzo Lipardi, Domenica Dibenedetto, Georgios Stamoulis and Mark H.M. Winands A Study on Stabilizer R\'enyi Entropy Estimation using Machine Learning
108 Rundi Lu, Ruiqi Zhang, Weikang Li, Dong-Ling Deng and Zhengwei Liu A Unified Frequency Principle for Quantum and Classical Machine Learning
33 Mafalda Ramôa ADAPT-VQE with Operator Removal
11 Mandadi Sindhu, M.Mohan Sai Reddy and Devireddy Sai Santhosh Reddy Advanced Ensemble Smart Classifications for Nifty Smart Market Trends
298 Xinbiao Wang, Yuxuan Du, Zihan Lou, Yang Qian, Kaining Zhang, Yong Luo, Bo Du and Dacheng Tao AiDE-Q: Synthetic Labeled Datasets Can Enhance Learning Models for Quantum Property Estimation
4 Matthew Ho, Jun Yong Khoo, Adrian Mak and Stefano Carrazza AI-Powered Noisy Quantum Emulation: Generalized Gate-Based Protocols for Hardware-Agnostic Simulation
148 Li Xin and Zhang-Qi Yin An Attention-Based Quantum Phase Transition Detection on NISQ Devices
42 Yuqi Huang, Vincent Y. F. Tan and Sharu Jose Balancing Expressivity and Learnability in Quantum Kernel Bandit Optimization
331 Laura Henderson, Kerstin Beer, Salini Karuvade, Riddhi Gupta and Angela White Barren plateau-free and noise-robust quantum advantage for learning data with group symmetries
126 Alexandra Ramôa, Raffaele Santagati and Nathan Wiebe Bayesian Learning of Quantum Hardware Dynamics
192 Dominic Lowe, Myungshik Kim and Roberto Bondesan Benchmarking Quantum Algorithms for Gaussian Process Regression
334 Charitha Pathipati, Tirupati Bolisetti, Girish Sankar, Sri Harsha Thota and Ram Balachandar Bridging Remote Sensing and Quantum Computing: Snow Depth Estimation with LSTM and QLSTM
150 Dean Brand, Domenica Dibenedetto and Francesco Petruccione Canonical Quantization of a Memristive Leaky Integrate-and-Fire Neuron Circuit
86 Ji Guan Certifying Adversarial Robustness in Quantum Machine Learning: From Theory to Physical Validation
271 Georgios Korpas, Wayne Lin, Iosif Sakos and Antonios Varvitsiotis Certifying Optimality of VQA Solutions via Sparse SOS Hierarchies
43 Jan Schnabel, Roberto Flórez-Ablan and Marco Roth Challenges and limitations of quantum kernel methods
200 Paolo Braccia, Pablo Bermejo, Antonio Anna Mele, Nahuel Diaz, Andrew Deneris, Martin Larocca and Marco Cerezo Characterizing quantum resourcefulness via group-Fourier decompositions
66 Changjae Im, Hyeondo Oh and Daniel K. Park Classical-quantum hybrid support vector data description for one-class classification
125 Giuseppe Sergioli, Roberto Giuntini, Andres Camillo Granda Arango, Carlo Cuccu and Carla Sophie Rieger Classification of Quantum Correlations via Quantum-inspired Machine Learning
78 Kristian Sotirov, Annie E. Paine, Savvas Varsamopoulos, Antonio A. Gentile and Osvaldo Simeone Conservative Quantum Offline Model-Based Optimization
Manual Submission Xiaoting Gao, Mingsheng Tian, Yu Xiang, Mattia Walschaers, and Qiongyi He Continuous Variable Entanglement Detection and Classification through Neural Networks
37 Prof. Dr. Gerhard Hellstern Data Clustering as a Quantum Computing Use-Cas
220 Arthur Strauss, Lukas Voss, Aniket Chatterjee and Hui Khoon Ng Deep Reinforcement Learning for real-time context-aware gate calibration
77 Hugo Thomas, Hela Mhiri, Leo Monbroussou, Zoë Holmes and Elham Kashefi Dequantization and expressivity in photonic quantum Fourier models
38 Zhong-Xia Shang, Naixu Guo, Dong An and Qi Zhao Design nearly optimal quantum algorithm for linear differential equations via Lindbladians
324 Nouhaila Innan and Muhammad Shafique Designing Privacy-Preserving Architectures in Quantum Federated Learning
13 Jonathan Lu, Lucy Jiao, Kristina Wolinski, Milan Kornjača, Hong-Ye Hu, Sergio Cantu, Fangli Liu, Susanne Yelin and Sheng-Tao Wang Digital–analog quantum learning on Rydberg atom arrays
94 Yuxuan Yan, Sitian Qian, Qi Zhao and Xingjian Zhang Distilling the knowledge with quantum neural networks
104 Marie Kempkes, Aroosa Ijaz, Elies Gil-Fuster, Carlos Bravo-Prieto, Jakob Spiegelberg, Evert van Nieuwenburg and Vedran Dunjko Double Descent in Quantum Kernel Methods
187 Yudai Suzuki, Bi Hong Tiang, Jeongrak Son, René Zander, Raphael Seidel, Nelly H. Y. Ng, Zoë Holmes and Marek Gluza Double-bracket quantum algorithms for ground-state preparation via cooling
197 Bharathi Kannan Jeevanandam, Nisarg Vyas, Sreeram Pg and Santhanam M.S Dynamical Regimes and Memory Performance in Quantum Reservoirs: Insights from Random Matrix Theory
82 Jan Balewski, Chris Pestano, Mercy G. Amankwah, E. Wes Bethel and Talita Perciano EHands: Quantum Protocol for Polynomial Computation on Real-Valued Encoded States
266 Daniel Uzcátegui, Katherine Muñoz, Aldo Delgado and Dardo Goyeneche Entanglement detection via machine learning techniques
243 Vladyslav Bohun, Illia Lukin, Mykola Lukhanko, Georgios Korpas, Philippe J.S. De Brouwer, Mykola Maksymenko and Maciej Koch-Janusz Entanglement scaling in matrix product state representation of smooth functions and their shallow quantum circuit approximations
15 Haimeng Zhao and Dong-Ling Deng Entanglement-induced provable and robust quantum learning advantages
71 Iris Agresti, Mirela Selimovic, Michal Siemaszko, Joshua Morris, Borivoje Dakic, Riccardo Albiero, Andrea Crespi, Francesco Ceccarelli, Roberto Osellame, Magdalena Stobinska and Philip Walther Experimental quantum memristor-based reservoir computing
260 Felix Paul, Björn Minneker and Peter Jung Exploring Trainability of Quantum Fourier Models for Different Data Re-uploading Schemes
72 Maria Demidik, Cenk Tüysüz, Nico Piatkowski, Michele Grossi and Karl Jansen Expressive equivalence of classical and quantum restricted Boltzmann machines
50 Nils-Erik Schütte, Niclas Götting, Hauke Müntinga, Meike List, Daniel Brunner and Christopher Gies Expressivity Limits of Quantum Reservoir Computing
335 Mitali Nanda and Tirupati Bolisetti Fake News Detection using Hybrid Classical-Quantum Transfer Learning Approach
62 Adam Wesolowski, Ronin Wu and Karim Essafi Fast, Accurate and Interpretable Graph Classification with Topological Kernels: An Even More Scalable Alternative to Weisfeiler-Lehman Kernels
209 Javier González Otero, Adrián Pérez Salinas and Miguel Ángel González Ballester Flexible quantum Kolmogorov-Arnold networks via generalized fractional-order Chebyshev functions and trainable QSVT basis
139 Jiabin You, Jian Feng Kong and Jun Ye Forecasting the Lorenz System Using a Hierarchical Tensor Network Model
248 Mansoor Ali Khan, Muhammad Naveed Aman and Biplab Sikdar From Bits to Qubits: Comparative Insights into Embedding Strategies for Machine Learning
154 Naqueeb Ahmad Warsi, Ayanava Dasgupta and Masahito Hayashi Generalization Bounds for Quantum Learning via Rényi Divergences
175 Tongyan Wu, Amine Bentellis, Alona Sakhnenko and Jeanette Lorenz Generalization Bounds in Hybrid-Quantum Machine Learning Models
52 Sabri Meyer, Francesco Scala, Franceso Tacchino and Aurelien Lucchi Gradient Scalability on Super-polynomially Complex Quantum Landscapes
229 Eunok Bae, Nari Choi, Jeonghyun Shin and Minjin Choi Grover's algorithm with W state-based initialization for solving the exact-cover problem
196 Ignacio Acedo Hardware Adapted Quantum Machine Learning with Pulse-Level optimization
2 Giacomo Franceschetto, Marcin Płodzień, Maciej Lewenstein, Antonio Acín and Pere Mujal Harnessing quantum back-action for time-series processing
41 Daniil Rabinovich, Luis Ernesto Campos Espinoza, Georgii Paradezhenko and Kirill Lakhmanskiy Heuristic ansatz design for trainable ion-native digital-analog quantum circuits
142 Chen-Yu Liu Hybrid Parameterized Quantum States for Variational Quantum Learning
314 Siddhant Dutta and Sadok Ben Yahia Hybrid Quantum Kolmogorov-Arnold Networks for High Energy Physics Analysis at the LHC
303 Parvathy Gopakumar, Rubell Marion Lincy G, Salvatore Sinno and Shruthi Thuravakkath Hybrid Quantum Transfer Learning Models for Credit Risk Assessment
172 Ankith Mohan, Tobias Haug, Kishor Bharti and Jamie Sikora Hybrid quantum-classical heuristics for optimizing large separable operators
16 Hongsuk Yi Hybrid Quantum-Classical Traffic Flow Classification with Deep Feature Extraction
293 Zhan Yu, Naixu Guo, Gabriel Matos, Nikhil Khatri, Pranav Kalidindi, Yizhan Han, Lirandë Pira, Soumik Adhikary, Steve Clark and Patrick Rebentrost Implementing Quantum Transformers on Trapped Ion Devices
262 Nathan Haboury, Mo Kordzanganeh, Alexey Melnikov and Pavel Sekatski Information plane and compression-gnostic feedback in quantum machine learning
274 Yule Mayevsky, Akram Youssry, Ritik Sareen, Gerardo Paz-Silva and Alberto Peruzzo Interpretable Machine Learning for Quantum Control
134 Alona Sakhnenko, Christian Mendl and Jeanette Miriam Lorenz Is data-efficient learning feasible with quantum models?
340 Abdullah Kazi and Jayesh Hire Learning Boolean Functions with Non-Local Dependencies via Hybrid Quantum-Classical Neural Networks
20 Haimeng Zhao, Yuzhen Zhang and John Preskill Learning to erase quantum states: thermodynamic implications of quantum learning theory
70 Cenk Tüysüz, Maria Demidik, Luuk Coopmans, Enrico Rinaldi, Vincent Croft, Yacine Haddad, Matthias Rosenkranz and Karl Jansen Learning to generate high-dimensional distributions with low-dimensional quantum Boltzmann machines
270 Armando Angrisani Learning Unitaries with Quantum Statistical Queries
273 Alexandra Ramôa, Luis Santos and Akihito Soeda Low Cost Experimental Design for Frequency Estimation
152 Vincent Han Leong Lau, Wenyu Guo, Ratnajit Sarkar, Aaron Tranter, Qian Ling Kee, Rigui Zhou, Ping Koy Lam, Mile Gu and Tao Wang Machine Learning-Assisted Parametric Modulation in Atomic Magnetometry
35 Si Min Chan, Apimuk Sornsaeng and Dario Poletti MANTIS: Multiple Anomaly-Detection Networks for Tensor Inspired Solutions
59 Letian Tang More-efficient Quantum Multivariate Mean Value Estimator from Generalized Grover Operator
49 Yong Wang, Zhenghao Yin, Tobias Haug, Ciro Pentangelo, Simone Piacentini, Andrea Crespi, Francesco Ceccarelli, Roberto Osellame and Philip Walther Multiple photons enhance data efficiency in quantum machine learning
18 V Vijendran, Dax Enshan Koh, Eunok Bae, Hyukjoon Kwon, Ping Koy Lam and Syed M Assad Near-Optimal Parameter Tuning of Level-1 QAOA for Ising Models
306 Dohyoung Lee, Daniel K. Park and Taeyoung Park Neural Quantum Embedded Self-supervised Learning
198 Junseo Lee and Nhat A. Nghiem New aspects of quantum topological data analysis: Betti number estimation, and testing and tracking of homology and cohomology classes
149 Datong Chen and Huangjun Zhu Nonstabilizerness Enhances Thrifty Shadow Estimation
208 Petros Georgiou, Aaron Mark Thomas, Sharu Theresa Jose and Osvaldo Simeone On the Generalization of Adversarially Trained Quantum Classifiers
80 Maxime Meyer, Soumik Adhikary, Naixu Guo and Patrick Rebentrost Online Learning of Pure States is as Hard as Mixed States
242 Jan Li, Tim Coopmans, Patrick Emonts, Kenneth Goodenough, Jordi Tura and Evert van Nieuwenburg Optimising entanglement distribution policies under classical communication constraints assisted by reinforcement learning
102 Seokhoon Jeong and Daniel Kyungdeock Park Optimization Framework for Data-Adaptive and Hardware-Efficient Quantum Data Embedding
130 Marc Drudis, Alberto Baiardi, Mattia Chiurco, Francesco Tacchino, Stefan Woerner and Christa Zoufal Optimizing Quantum Time Dynamics with Classical Support
48 Daniel Pranjic and Semih Celiksümer Optimizing Shadow Tomography for Many-Body Observables
302 Andrii Kurkin, Kevin Shen, Susanne Pielawa, Hao Wang and Vedran Dunjko Parameterized IQP-QCBM generative model: universality with hidden units and kernel-adaptive efficient training on classical hardware
121 Thais Lima Silva, Lucas Borges and Leandro Aolita Partition function estimation with a quantum coin toss
251 Shivani Pillay, Ilya Sinayskiy and Francesco Petruccione Physics-Informed Neural Networks for Simulating Open Quantum Systems
205 Reyhaneh Aghaei Saem, Behrang Tafreshi, Zoe Holmes and Supanut Thanasilp Pitfalls in the hunt for scalable parameterized quantum models
263 Nayoung Lee, Minsoo Shin, Asel Sagingalieva, Ayush Joshi Tripathi, Karan Pinto and Alexey Melnikov Predictive Control with Hybrid Depth-Infused Quantum Neural Networks
211 Jonathan Teo, Xin Wei Lee and Hoong Chuin Lau Probabilistic Greedy Behaviour of the Equivariant Quantum Circuit
230 Bence Bakó, Dániel Nagy, Péter Hága, Zsófia Kallus and Zoltán Zimborás Problem-informed Graphical Quantum Generative Learning
165 Carlos Bravo-Prieto, Elies Gil-Fuster, Sergi Masot-Llima and Tommaso Guaita Prospects for quantum advantage in ML from the representability of quantum functions
328 Lucas Tecot, Di Luo and Cho-Jui Hsieh Provably Robust Training of Quantum Circuit Classifiers Against Parameter Noise
61 Alvaro Romero Mato, Boyang Chen, Nathan Eskue and Vahid Nasrabadi QAOA based Neural Architecture Search
167 Daphne Wang, Anthony Walsh, Hugo Fruchet, Ariane Soret and Pierre-Emmanuel Emeriau QCirCNN: a photonic-native quantum circular convolution network based on circulant matrices
31 Hsin-Yu Wu, Annie E. Paine, Evan Philip, Antonio A. Gentile and Oleksandr Kyriienko Quantum Algorithm for Solving Nonlinear Differential Equations Based on Physics-Informed Effective Hamiltonians
170 Martin Larocca and Vojtech Havlicek Quantum algorithms for representation-theoretic multiplicities
9 Jorge Martínez de Lejarza, Hsin-Yu Wu, Oleksandr Kyriienko, German Rodrigo and Michele Grossi Quantum Chebyshev Probabilistic Models for Fragmentation Functions
252 Andrey Kardashin, Vladimir Palyulin and Konstantin Antipin Quantum convolutional neural networks produce higher variance in regression tasks
279 Chaemoon Im and Joongheon Kim Quantum Differential Privacy in Quantum Federated Learning
91 Shaukat Ali Quantum Extreme Learning Machines: Insights from Industrial and Real-World Applications
185 Francesco Aldo Venturelli, Marco Parigi, Stefano Martina, Natalia Muñoz Moruno, Filippo Caruso, Alba Cervera Lierta and Miguel Ángel González Ballester Quantum generative diffusion models for medical imaging
169 Snehal Raj, Brian Coyle, Léo Monbroussou and Elham Kashefi Quantum Graph Neural Networks for the Travelling Salesman Problem
336 Leonardo Lavagna, Francesca De Falco and Massimo Panella Quantum Hyperdimensional Computing for Pattern Completion
67 Taehee Ko, Hyeong Won Yu, Inho Lee, Sangkook Choi and Hyowon Park Quantum medical image encoding and compression using Fourier-based methods
288 Minh Triet Chau, Hyeokjea Kwon, Sung Won Yun, Kevin Ferreira, Thi Ha Kyaw and Jack Baker Quantum Neural Density Functionals in Density Functional Theory
155 Diksha Sharma, Vivek Balasaheb Sabale, Atul Kumar and Thirumalai M Quantum Neural Networks Facilitating Quantum State Classification
135 Tianqi Chen and Jian Feng Kong Quantum Optimization Towards Large-Scale Molecular Docking on a Quantum Computer
300 Gabriel Mejia Ruiz, Eileen Kuhn and Achim Streit Quantum Principal Basis Learning (qPBL) for image classification
227 Santhanam Madabushi Srinivasan and Nisarg Vyas Quantum reservoir computing with a single quantum chaotic node
319 Takahiro Kajisa Quantum Scalar Field Theoretic Extension of Boltzmann Machines to Solve a Class of Moment Matching Problems
301 Shao Hen Chiew, Armando Angrisani, Zoë Holmes and Giuseppe Carleo Quantum simulation in the Heisenberg picture via Vectorization
151 Donovan Slabbert, Dean Brand and Francesco Petruccione Quantum Spectral Clustering: Comparing Parameterized and Neuromorphic Quantum Kernels
189 Myeonghwan Seong, Yujin Kim, Chanyoung Kim, Daniel K. Park and Youngjoon Hong Quantum spectral operator learning for solving partial differential equations
131 Tobias Fellner, David Kreplin, Samuel Tovey and Holm Christian Quantum vs. classical: A comprehensive benchmark study for predicting time series with variational quantum machine learning
203 Nikita Kuznetsov and Ernesto Campos Quantum-Inspired Self-Attention in a Large Language Model
136 Elizabeth Sarell, Ashwin Girish, Hector Spencer-Wood, Michael Puerrer, Christopher Messenger, Fiona Speirits and Sarah Croke Reducing Circuit Depth of Amplitude Encoding for Gravitational Waves
194 Junghoon Justin Park, Jungwoo Seo, Sangyoon Bae, Samuel Yen-Chi Chen, Huan-Hsin Tseng, Jiook Cha and Shinjae Yoo Resting-state fMRI Analysis using Quantum Time-series Transformer
318 Mingxuan Liu, Valerio Scarani, Alexia Auffeves and Kiarn Laverick Retrodictive Approach to Quantum State Smoothing
190 Zihao Li, Huangjun Zhu and Masahito Hayashi Robust and efficient verification of measurement-based quantum computation
277 Sixuan Wu, Zanqiu Shen, Chenghong Zhu, Guangxi Li and Xin Wang Scalable Non-Stabilizerness Recognition with Machine Learning
228 Xiyao Feng, Chenghong Zhu, Xian Wu, Jingbo Wang, Guangxi Li and Xin Wang ShuttleFormer: A Machine Learning Approach to Shuttle Scheduling in Trapped-Ion
176 Yi-Hsin Lin, Scott Smart and Prineha Narang Signed Designs for Learning Quantum State Properties with Applications
249 Anastasiia Nikolaeva, Evgeniy Kiktenko, Ilia Zalivako, Alexander Gircha, Alexander Borisenko, Ilya Semerikov, Aleksey Fedorov and Nikolay Kolachevsky Supervised binary classification of small-scale digit images and weighted graphs with a trapped-ion quantum processor
308 Aldo Lamarre and Dominik Safranek Tailor Made Embeddings For Quantum Machine Learning
290 Kaining Zhang, Junyu Liu, Liu Liu, Liang Jiang, Min-Hsiu Hsieh and Dacheng Tao The curse of random quantum data and a cure from Pauli distribution
337 Leonardo Lavagna, Francesca De Falco and Massimo Panella The Effectiveness of Classical and Hybrid Models for MaxCut problem
186 Steven Kordonowy and Hannes Leipold The Lie Algebra of XY-mixer Topologies and Warm Starting QAOA for Constrained Optimization
171 Mina Abbaszadeh, Mariam Zomorodi, Mehrnoosh Sadrzadeh, Vahid Salari and Philip Kurian Toward Quantum Machine Translation via Quantum Natural Language Processing
46 Mafalda Ramôa, Luis Santos, Nicholas Mayhall, Edwin Barnes and Sophia Economou Towards Optimization-Free Adaptive Ansatze
109 Timothee Dao, Ege Yilmaz, Ibrahim Shehzad, Christophe Pere, Kumar Ghosh, Corey O'Meara, Giorgio Cortiana, Stefan Woerner and Francesco Tacchino Towards quantum extreme learning and reservoir computing on utility-scale digital quantum processors
305 Nikhil Khatri, Stefan Zohren and Gabriel Matos Trainability of Parameterised Linear Combinations of Unitaries
284 Monit Sharma and Hoong Chuin Lau Transferable Equivariant Quantum Circuits for TSP: Generalization Bounds and Empirical Validation
79 Valentin Heyraud, Héloise Chomet and Jules Tilly Unified Framework for Matchgate Classical Shadows
311 Gregory White, Petar Jurcevic, Charles Hill and Kavan Modi Unifying non-Markovian characterisation with an efficient and self-consistent framework
122 Aaron Thomas, Harry Youel and Sharu Jose VAE-QWGAN: Addressing Mode Collapse in Quantum GANs via Autoencoding Priors
202 Xavi Font Aragones and Miguel Ángel González Ballester Wavelet vision transformers and quantum pyramidal networks for biomedical image analysis
299 Slimane Thabet, Léo Monbroussou, Eliott Z. Mamon and Jonas Landman When Quantum and Classical Models Disagree: Learning Beyond Minimum Norm Least Square

Poster Session II: Tuesday

EasyChairID Authors Title
259 Morounfoluwa Obidare, Ernesto Campos and Daniil Rabinovich A distributed approach to quantum approximate optimization
182 Jiasheng Isaac Cheong, Marcia Zhang, Wei Kit Tan, Solomonraj Wilson, Tianqi Chen and Mai Chan Lau A Hybrid Quantum-Classical AI Approach for Scalable and Precise Prediction of Cell-Level Molecular Biomarkers from Histology
178 Utkarsh Singh, Marco Armenta, Jean-Frederic Laprade, Aaron Z. Goldberg and Khabat Heshami A Resource-Efficient Quantum Kernel for High-Dimensional Learning on NISQ Devices
201 Krzysztof Bieniasz and Hans-Martin Rieser Active learning with quantics tensor networks
195 Junghoon Justin Park, Jiook Cha, Samuel Yen-Chi Chen, Huan-Hsin Tseng and Shinjae Yoo Addressing the Current Challenges of Quantum Machine Learning through Multi-Chip Ensembles
333 Fute Wong Advanced for-loop for QML algorithm search
327Sebastian Nagies, Chiara Capecci, Kevin T. Geier, Marcel Seelbach Benkner, Javed Akram, Sebastian Rubbert, Dimitrios Bantounas, Michael Moeller, Michael Johanning and Philipp Hauke Advances in Quantum Annealing: From PUBO Formulations to Practical Implementation
294 Hayata Yamasaki, Natsuto Isogai and Mio Murao Advantage of Quantum Machine Learning from General Computational Advantages
96 Chirag Wadhwa, Laura Lewis, Elham Kashefi and Mina Doosti Agnostic Process Tomography
179 Haiyue Kang, Younghun Kim, Eromanga Adermann, Martin Sevior and Muhammad Usman Almost fault--tolerant quantum machine learning with drastic overhead reduction
322 Kensuke Kamisoyama, Lento Nagano and Koji Terashi Analyzing Generalization Error in Quantum Kernel Methods using Random Matrix Theory
173 Dhiya Dharampal, Francesco Petruccione and Ilya Sinayskiy Applications of Quantum Convolutional Neural Networks in Medical Image Processing
204 James Sud, Kunal Marwaha and Adrian She Average-Case Algorithms for Local Hamiltonian Problems
25 Fariha Azad, Matteo Inajetovic, Stefan Kühn and Anna Pappa Barren-plateau free variational quantum simulation of Z2 lattice gauge theories
81 Alexandra Ramôa and Luis Santos Bayesian Quantum Amplitude Estimation
258 Antonio Mandarino, Christian Candeago, Paolo Da Rold, Michele Grossi and Pawel Horodecki Characterization of distillable bipartite system enhanced by collective measurement and machine learning
101 Matteo D'Anna, Yuxuan Zhang, Roeland Wiersema and Juan Carrasquilla Alvarez Circuit compression for 2D quantum dynamics
329 V Vijendran, Dax Enshan Koh, Ping Koy Lam and Syed M Assad Classical and Quantum Heuristics for the Binary Paint Shop Problem
145 Matteo Inajetovic, Johannes Jung, Matic Petrič, Raphael Seidel and René Zander Compilable QSVM with HHL in Qrisp
12 Tuyen Nguyen and Maria Kieferova Convergence and Generalization of Warm-Starting Variational Quantum Algorithm
92 Aakash Ravindra Shinde, Arianne Meijer-van de Griend, Ilmo Salmenperä, Valter Uotila and Jukka K. Nurminen Data Embedding on Two-Qubit interaction using Ising XYZ Hamiltonian model on Multiple Basis
312 Anurag Saha Roy Differentiable Digital Twins & Machine Learning for Quantum Computing
313 Kin Ian Lo, Hala Hawashin, Mina Abbazadeh, Tilen Limback-Stokin and Mehrnoosh Mehrnoosh Sadrzadeh DisCoCLIP: A Distributional Compositional Tensor Network Encoder for Vision-Language Understanding
58 Amena Khatun and Muhammad Usman Distilling Quantum Adversarial Manipulations via Classical Autoencoders
56 Ivana Nikoloska, Hamdi Joudeh, Ruud van Sloun and Osvaldo Simeone Dynamic Estimation Loss Control in Variational Quantum Sensing via Online Conformal Inference
234 Saad Amir, Anton Dekusar and Biswajit Basu Effect of Hybrid Model Structure on Reinforcement Learning Performance
163 Rafael Gomez Lurbe Efficient Estimation of the Quantum Fisher Information Matrix in Commuting-Block Variational Circuits
232 Yewei Yuan, Outongyi Lv and Nana Liu Efficient Offline Reinforcement Learning via Quantum Reward Encoding
100 Peter Röseler, Oliver Schaudt, Helmut Berg, Christian Bauckhage and Matthias Koch Efficient Quantum Convolutional Neural Networks for Image Classification: Overcoming Hardware Constraints
119 Francesco Ghisoni and Alessandro Berti Efficient State Preparation with Bucket Brigade QRAM and Segment Tree
320 Emin Tarakci and Emine Can Employing an Integrated MCDM with Quantum Fuzzy Logic in Next-Generation Communication
285 Jayne Thompson, Paul Riechers, Andrew Garner, Thomas Elliott and Mile Gu Energetic advantages for quantum agents in online execution of complex strategies
326 Sebastian Nagies, Emiliano Tolotti, Davide Pastorello and Enrico Blanzieri Enhancing Expressivity of Quantum Neural Networks Based on the SWAP test
236 Yixuan Hu, Mengru Ma and Jiangwei Shang Error-mitigated quantum state tomography using neural networks
107 Martin Mauser, Solène Four, Lena Marie Predl, Riccardo Albiero, Francesco Ceccarelli, Roberto Osellame, Philipp Petersen, Borivoje Dakic, Iris Agresti and Philip Walther Experimental data re-uploading with provable enhanced learning capabilities
332 Ritu Thombre and Lirandë Pira Explaining Quanvolutional Neural Networks: A Frobenius Norm-Based Approach
286 Mariia Sobchuk, Arsalan Motamedi, Grecia Castelazo and Pooya Ronagh Fast quantum algorithms for PDEs with pseudospectral Fourier method via preconditioning
98 Hyeondo Oh and Daniel Kyungdeock Park Finding Lottery Tickets in Quantum Machine Learning: Sparse Trainability in Variational Quantum Circuits
297 Rupayan Bhattacharjee, Sergi Abadal, Carmen G. Almudever and Eduard Alarcón Full-Stack Assessment Framework for Quantum Machine Learning Models
218 Matteo Robbiati and Andrea Papaluca Full-stack quantum machine learning on self-hosted quantum devices with Qiboml
132 Tobias Fellner, Samuel Tovey, Christian Holm and Michael Spannowsky Generating Quantum Reservoir State Representations with Random Matrices
214 Azadeh Alavi, Fatemeh Kouchmeshki, Abdolrahman Alavi, Jiayang Niu and Yongli Ren Geometry-Aware Dictionary Learning and Quantum-Guided Bagging for Qubit-Efficient Recommender Systems
272 Yule Mayevsky, Akram Youssry, Ritik Sareen, Gerardo Paz-Silva and Alberto Peruzzo Graybox Approach for Qudit System Identification and Control
341 Payal D. Solanki and Anh Pham Harnessing Quantum Dynamics for Robust and Scalable Quantum Extreme Learning Machines
283 Monit Sharma and Hoong Chuin Lau Hybrid Learning and Optimization Methods for Solving Capacitated Vehicle Routing Problem
307 Jian Feng Kong, Chee Kwan Gan, Stefano Carrazza and Jun Yong Khoo Hybrid Quantum-Classical Neural Networks with Data Reuploading for Binary Medical Image Classification
164 Florian Heininger, Niels Halama, Sakshi Singh, Jeanette Miriam Lorenz and Matthias Weidemüller Imbalanced classification with quantum kernel methods
27 Mafalda Ramôa, Panagiotis Anastasiou, Luis Santos, Edwin Barnes, Nicholas Mayhall and Sophia Economou Improving Adaptive Variational Quantum Algorithms
160 Francesco Scala, Giacomo Guarnieri, Dario Gerace and Aurelien Lucchi Improving Quantum Neural Networks performances by Noise-Induced Equalization
17 Arthur Mendonça Faria, Ignacio Fernández Graña and Savvas Varsamopoulos Inductive Graph Representation Learning with Quantum Graph Neural Networks
235 Gordon Yuan Ning Ma, Ioannis Leonidas and Dimitris G. Angelakis Information-Minimal Two-Body Moment Learning for Scalable QUBO Optimisation
117 Aoi Hayashi, Akitada Sakurai and Kae Nemoto Information-theoretic evaluation of quantum machine learning model complexity
22 Doron Podoleanu Interference Beats Hallucination? A Controlled Study of Hybrid Quantum–Classical Language Models for Code Generation
239 Nicola Assolini, Luca Marzari, Isabella Mastroeni and Alessandra Di Pierro Interval-based Analysis of Variational Quantum Algorithms
338 Leonardo Lavagna, Francesca De Falco and Massimo Panella Is the QAOA the Ultimate Solution for the MaxCut problem?
99 Yuqi Li, Zhouhang Shi, Li Shen, Haitao Ma, Jinge Bao and Yunlong Xiao Language Model for Large-Text Transmission in Noisy Quantum Communications
157 Jinge Bao and Francisco Escudero Gutiérrez Learning junta distributions, quantum junta states, and QAC0 circuits
106 Eric Brunner, Luuk Coopmans, Gabriel Matos, Matthias Rosenkranz, Frederic Sauvage and Yuta Kikuchi Lindblad engineering for quantum Gibbs state preparation under the eigenstate thermalization hypothesis
180 Siddhartha Emmanuel Morales Guzman Low Rank Piecewise Polynomial Data Encoding
138 Roselyn Nmaju, Sarah Croke and Fiona Speirits Low-depth measurement-based deterministic quantum state preparation
44 Alice Barthe, Casper Gyurik, Jordi Tura, Vedran Dunjko and Patrick Emonts Lower Bounding Betti Numbers using Tensor Networks
199 Prashasti Tiwari Many Body Eigenvalue Problems with a Trapped Ion System
112 Hector Spencer-Wood, John Jeffers and Sarah Croke Measurement disturbance tradeoffs in unsupervised quantum classification
159 Yang Qian, Xinbiao Wang, Yuxuan Du, Yong Luo and Dacheng Tao MG-Net: Learn to Customize QAOA with Circuit Depth Awareness
222 Korbinian Stein, Davide Bincoletto and Jakob Kottmann Modeling Quantum Circuit Parameterswith Size-Independent Machine Learning Models
245 Illia Lukin, Vladyslav Bohun, Mykola Lukhanko and Maciej Koch-Janusz MPS-based Fourier series loading
137 Wenyu Guo, Qing Liu, Ximing Wang, Chufan Lyu, Jayne Thompson, Andrew J.P. Garner, Aaron Tranter, Rigui Zhou, Chengran Yang and Mile Gu Neural network-assisted quantum compilation
141 Seongwook Shin, Ryan Sweke and Hyunseok Jeong New perspectives on quantum kernels through the lens of entangled tensor kernels
7 Natchapol Patamawisut and Yen-Jui Chang Nonlinear Quantum Image Encoding via Information Mixing
105 Nicolo Colombo and Thomas Gargan On Bounding Quantum Fidelity with Conformal Prediction
275 Guilherme Adamatti Bridi, Debbie Lim, Lirandë Pira, Raqueline Azevedo Medeiros Santos, Franklin de Lima Marquezino and Soumik Adhikary On the Necessity of Overparameterization in the Quantum Walk Optimization Algorithm
315 Rebecca Erbanni, Gregory A. L. White, Jens Eisert and Matthias C. Caro On the structure of easy and hard-to-learn positive MPOs
74 Niclas Götting, Steffen Wilksen, Alexander Steinhoff, Frederik Lohof and Christopher Gies Optically Probing Quantum Reservoir Memory
5 Bodo Rosenhahn, Tobias J. Osborne and Christoph Hirche Optimization Driven Quantum Circuit Reduction
223 Chenghong Zhu, Hongshun Yao, Yingjian Liu and Xin Wang Optimizer-Dependent Generalization Bound for Quantum Neural Networks
30 Benjamin Stott, Grégoire Barrué and Tony Quertier Photonic Quantum Kernel methods for Malware Classification
241 Marco Parigi, Stefano Martina, Francesco Aldo Venturelli and Filippo Caruso Physics-inspired Generative AI models via real hardware-based noisy quantum diffusion
87 Taisei Nohara, Itsuki Noda and Satoshi Oyama Positive-Unlabeled Learning for Training an Entanglement Detector
63 Takao Tomono and Kazuya Tsujimura Potential of multi-anomalies detection using quantum machine learning
146 Aaron Thomas, Yu-Cheng Chen, Hubert Valencia, Sharu Jose and Ronin Wu QCA-MolGAN: Quantum Circuit Associative Molecular GAN with Multi-Agent Reinforcement Learning
325 Nouhaila Innan and Muhammad Shafique Q-Compression: Quantum-Aware Model Compression Techniques for Scalable Quantum Machine Learning
23 Petr Ivashkov, Po-Wei Huang, Kelvin Koor, Lirandë Pira and Patrick Rebentrost QKAN: Quantum Kolmogorov-Arnold Networks
68 Anderson Melchor Hernandez, Filippo Girardi, Davide Pastorello and Giacomo De Palma Quantitative convergence of trained quantum neural networks to a Gaussian process
128 Ge Bai, Francesco Buscemi and Valerio Scarani Quantum Bayes’ rule from a minimum change principle: gradient-free belief updates for quantum learning
85 Natchapol Patamawisut and Ruchipas Bavontaweepanya Quantum Circuit Optimization for Variational Grover's Search via ZX Calculus
280 Kouhei Nakaji, Jonathan Wurtz, Haozhe Huang, Luis Mantilla Calderon, Karthik Panicker, Elica Kyoseva and Alán Aspuru-Guzik Quantum circuits as a game: A reinforcement learning agent for quantum compilation and its application to reconfigurable neutral atom arrays
238 Hoang Anh Nguyen, Nhu Duc Dinh, Le Tu Uyen Tu and Van Duy Nguyen Quantum Deep Learning Force Field
14 Neeshu Rathi and Sanjeev Kumar Quantum Ensemble Learning with QRAM-Based Subsampling and Shallow Clustering Weak Learners
158 Borja Aizpurua, Saeed Jahromi, Sukhbinder Singh and Román Orús Quantum Large Language Models via Tensor Network Disentanglers
246 Riccardo Molteni, Simon C. Marshall and Vedran Dunjko Quantum machine learning advantages beyond hardness of evaluation
267 Hon Wai Lau, Aoi Hayashi, William John Munro, Jayne Thompson and Mile Gu Quantum Memory Resource Advantage in Reinforcement Learning
75 João F. Bravo, Daniel Basilewitsch, Christian Tutschku and Frederick Struckmeier Quantum Neural Networks in Practice: A Comparative Study with Classical Models from Standard Data Sets to Industrial Images
254 Danijela Markovic Quantum neuromorphic computing with parametrically coupled bosonic modes in superconducting resonators
224 Sreetama Das, Gian Luca Giorgi and Roberta Zambrini Quantum reservoir computing for temporal series processing using spin-boson systems
255 Michał Siemaszko, Martin Mauser, Iris Agresti, Philip Walther and Magdalena Stobińska Quantum reservoir computing with multiple photonic memristors and skip connections
330 Luke Antoncich, Milan Kornjaca, Jonathan Wurtz, Jing Chen, Pascal Elahi and Casey Myers Quantum Reservoir Computing with Small Datasets
156 Maitreyee Sarkar, Lisa Roy, Aksah Gutal, Atul Kumar and Manikandan Paranjothy Quantum Simulations of Chemical Reactions: Achieving Accuracy with NISQ Devices
268 Ritik Sareen, Akram Youssry, Yule Mayevsky and Alberto Peruzzo Quantum State Preparation using Dynamical Invariants and Machine Learning
265 Luis Ernesto Campos Espinoza and Dmitry Guskov Quantum variational parameters as classical data outputs
339 Soham Pawar and Dibakar Das Quantum-Hybrid Siamese Networks with Inter-Channel Weight Interaction
34 Hideki Okawa, Qing-Guo Zeng, Xian-Zhe Tao and Man-Hong Yung Quantum-Inspired Optimization for High Energy Physics
278 Seungcheol Oh, Chaemoon Im and Joongheon Kim Qubit Trajectory Analysis in Quantum Neural Networks
90 Chengsi Mao, Changhao Yi and Huangjun Zhu Qudit shadow estimation based on the Clifford group and the power of a single magic gate
309 Nikhil Khatri, Gabriel Matos, Luuk Coopmans and Stephen Clark Quixer: A Quantum Transformer Model
233 Hoang-Anh Nguyen, Duy-Tung Nguyen, Tran-Hien Vo, Dang-Khanh Nguyen, Nhu-Duc Dinh and Van-Duy Nguyen Qutrit-Based Quantum Circuit Design via Reinforcement Learning for Simulating Three-Flavor Collective Neutrino Oscillations
36 Felix J. Beckmann and João F. Bravo Ravines in quantum cost landscapes: Opportunities for enhanced VQA predictions on quantum data
64 Maxwell West, Antonio Anna Mele, Martín Larocca and Marco Cerezo Real classical shadows
316 Abdullah Kazi and Jayesh Hire Recurrent Measurement-Based Quantum Machine Learning (MBQML) with Feedback
124 Jan Nogué Gómez Reinforcement Learning Based Quantum Circuit Optimization via ZX-Calculus
140 Weijie Xiong, Zoe Holmes, Armando Angrisani, Yudai Suzuki, Thiparat Chotibut and Supanut Thanasilp Role of scrambling, noise, and symmetry in temporal learning with quantum systems
177 Hongshun Yao, Yingjian Liu, Tengxiang Lin and Xin Wang Sample-Efficient Estimation of Nonlinear Quantum State Functions
225 Chenghong Zhu, Xian Wu, Hao-Kai Zhang, Sixuan Wu, Guangxi Li and Xin Wang Scalable Quantum Architecture Search based on Relative Fluctuation of Landscapes
216 Antonin Sulc Self-Optimizing Quantum Circuits via Reinforcement Learning and Language Models
289 Su Yeon Chang, Supanut Thanasilp, Zoë Holmes and Marco Cerezo Simulation cost of classically simulable quantum machine learning models
206 Jonathan Teo, Xin Wei Lee and Hoong Chuin Lau Size-Invariant Properties at Depth 1 of the Equivariant Quantum Circuit
264 Callum Duffy, Marcin Jastrzebski and Sarah Malik Spectral Bias in Parameterised Quantum Circuits
89 Vardaan Mongia, Abhishek Kumar, Shashi Prabhakar and R.P. Singh Strengthening the no-go theorem for QRNGs
191 Léo Monbroussou, Jonas Landman, Letao Wang, Alex Bredariol Grilo and Elham Kashefi Subspace Preserving Quantum Convolutional Neural Network Architectures
153 Jun Qi, Chao-Han Huck Yang and Pin-Yu Chen Tensor Network-Enhanced Variational Quantum Circuits: Theory, Hybrid Architectures, and Scalable Optimization for Quantum Machine Learning
310 Mario Herrero-González, Ross Grassie, Kieran McDowall, Sjoerd Beentjes, Ava Khamseh and Elham Kashefi The Born Ultimatum: Simulability in Quantum Generative Models. Capturing Higher-Order Moments from Data.
250 Ilya Sinayskiy The effect of classical optimizers and Ansatz depth on QAOA performance in noisy devices
269 Muhammad Al-Zafar Khan, Jamal Al-Karaki, Assala Benmalek, Abdullah Al Omar Ghalib and Marwan Omar The Ubiquity of QPINNs: A Multi-Domain Study
127 Zherui Wang, Jordi Tura and Patrick Emonts Topological data analysis with variational quantum circuits
123 Caesnan Leditto, Angus Southwell, Behnam Tonekaboni, Muhammad Usman, Kavan Modi and Gregory White Topological Signal Processing on Quantum Computers for Higher-Order Network Analysis
231 Eleanor Kedem, Ryan Sweke and Francesco Petruccione Toward Undetectable Backdoors in Variational Quantum Models
53 Adrián Pérez-Salinas, Berta Casas, Xavier Bonet-Monroig and Hao Wang Towards a Framework for Analyzing Quantum Machine Learning Algorithms
162 Brian Coyle, Snehal Raj and El Amine Cherrat Training parameterized quantum circuits with forward gradients
237 Yunting Li and Huangjun Zhu Universal and Efficient Quantum State Verification via Schmidt Decomposition and Mutually Unbiased Bases
54 Adrián Pérez-Salinas, Mahtab Yaghubi Rad, Alice Barthe and Vedran Dunjko Universal approximation of continuous functions with minimal quantum circuits
282 Kosuke Ito, Hiroshi Yano, Yudai Suzuki, Akira Tanji and Naoki Yamamoto Unsupervised domain adaptation for quantum data under state and distribution shifts
69 M. Emre Sahin, Cenk Tüysüz, Edoardo Altamura, David Galvin, Oscar Wallis, Alex Gregory, Paul Edwards, Stefano Mensa and Christa Zoufal Usable Information in Quantum Machine Learning
247 Vladyslav Los and Maciej Koch-Janusz Variational bounds of quantum information-theoretic quantities for quantum error correcting code analytics
118 Benchi Zhao and Keisuke Fujii Variational quantum Hamiltonian engineering
57 Alessio Pecilli and Matteo Rosati Variational quantum self-attention for the prediction of classical and quantum data sequences
84 Fong Yew Leong, Dax Enshan Koh, Jian Feng Kong, Siong Thye Goh, Jun Yong Khoo, Wei-Bin Ewe, Hongying Li, Jayne Thompson and Dario Poletti Variational Quantum Solver for Time-Fractional Differential Equations with Efficient Memory Scaling
73 Annie Paine, Smit Chaudhary and Antonio Gentile Weak Form Regularisation for Solving Differential Equations with Quantum Neural Networks
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