Enhancing Interpretability of Quantum-Assisted Blockchain Clustering via AI Agent-Based Qualitative Analysis
- URL: http://arxiv.org/abs/2506.02068v1
- Date: Mon, 02 Jun 2025 02:15:48 GMT
- Title: Enhancing Interpretability of Quantum-Assisted Blockchain Clustering via AI Agent-Based Qualitative Analysis
- Authors: Yun-Cheng Tsai, Yen-Ku Liu, Samuel Yen-Chi Chen,
- Abstract summary: We propose a two stage analysis framework that combines quantitative clustering evaluation with AI Agent assisted qualitative interpretation.<n>This work advances the interpretability frontier in quantum assisted blockchain analytics and lays the groundwork for future autonomous AI orchestrated clustering frameworks.
- Score: 2.777785884503825
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Blockchain transaction data is inherently high dimensional, noisy, and entangled, posing substantial challenges for traditional clustering algorithms. While quantum enhanced clustering models have demonstrated promising performance gains, their interpretability remains limited, restricting their application in sensitive domains such as financial fraud detection and blockchain governance. To address this gap, we propose a two stage analysis framework that synergistically combines quantitative clustering evaluation with AI Agent assisted qualitative interpretation. In the first stage, we employ classical clustering methods and evaluation metrics including the Silhouette Score, Davies Bouldin Index, and Calinski Harabasz Index to determine the optimal cluster count and baseline partition quality. In the second stage, we integrate an AI Agent to generate human readable, semantic explanations of clustering results, identifying intra cluster characteristics and inter cluster relationships. Our experiments reveal that while fully trained Quantum Neural Networks (QNN) outperform random Quantum Features (QF) in quantitative metrics, the AI Agent further uncovers nuanced differences between these methods, notably exposing the singleton cluster phenomenon in QNN driven models. The consolidated insights from both stages consistently endorse the three cluster configuration, demonstrating the practical value of our hybrid approach. This work advances the interpretability frontier in quantum assisted blockchain analytics and lays the groundwork for future autonomous AI orchestrated clustering frameworks.
Related papers
- Quantum Feature Optimization for Enhanced Clustering of Blockchain Transaction Data [3.1219529587298727]
Transaction data exhibits high dimensionality, noise, and intricate feature entanglement.<n>In this study, we conduct a comparative analysis of three clustering approaches.<n>We show that even shallow quantum circuits can effectively extract meaningful non-linear representations.
arXiv Detail & Related papers (2025-05-22T13:37:07Z) - Hamiltonian formulations of centroid-based clustering [0.46040036610482665]
We formulate the clustering problem as a search for the ground state of a Hamiltonian.<n>We propose various Hamiltonians to accommodate different clustering objectives.<n>We evaluate the clustering performance through numerical simulations and implementations on the D-Wave quantum annealer.
arXiv Detail & Related papers (2025-02-10T15:08:22Z) - Interaction-Aware Gaussian Weighting for Clustered Federated Learning [58.92159838586751]
Federated Learning (FL) emerged as a decentralized paradigm to train models while preserving privacy.<n>We propose a novel clustered FL method, FedGWC (Federated Gaussian Weighting Clustering), which groups clients based on their data distribution.<n>Our experiments on benchmark datasets show that FedGWC outperforms existing FL algorithms in cluster quality and classification accuracy.
arXiv Detail & Related papers (2025-02-05T16:33:36Z) - A clustering aggregation algorithm on neutral-atoms and annealing quantum processors [0.44531072184246007]
This work presents a hybrid quantum-classical algorithm to perform clustering aggregation.<n>It is designed for neutral-atoms quantum computers and quantum annealers.<n>Findings suggest promising potential for future advancements in hybrid quantum-classical pipelines.
arXiv Detail & Related papers (2024-12-10T14:48:44Z) - Revisiting Self-Supervised Heterogeneous Graph Learning from Spectral Clustering Perspective [52.662463893268225]
Self-supervised heterogeneous graph learning (SHGL) has shown promising potential in diverse scenarios.<n>Existing SHGL methods encounter two significant limitations.<n>We introduce a novel framework enhanced by rank and dual consistency constraints.
arXiv Detail & Related papers (2024-12-01T09:33:20Z) - Self-Supervised Graph Embedding Clustering [70.36328717683297]
K-means one-step dimensionality reduction clustering method has made some progress in addressing the curse of dimensionality in clustering tasks.
We propose a unified framework that integrates manifold learning with K-means, resulting in the self-supervised graph embedding framework.
arXiv Detail & Related papers (2024-09-24T08:59:51Z) - Deep Embedding Clustering Driven by Sample Stability [16.53706617383543]
We propose a deep embedding clustering algorithm driven by sample stability (DECS)
Specifically, we start by constructing the initial feature space with an autoencoder and then learn the cluster-oriented embedding feature constrained by sample stability.
The experimental results on five datasets illustrate that the proposed method achieves superior performance compared to state-of-the-art clustering approaches.
arXiv Detail & Related papers (2024-01-29T09:19:49Z) - Problem-Dependent Power of Quantum Neural Networks on Multi-Class
Classification [83.20479832949069]
Quantum neural networks (QNNs) have become an important tool for understanding the physical world, but their advantages and limitations are not fully understood.
Here we investigate the problem-dependent power of QCs on multi-class classification tasks.
Our work sheds light on the problem-dependent power of QNNs and offers a practical tool for evaluating their potential merit.
arXiv Detail & Related papers (2022-12-29T10:46:40Z) - Rethinking Clustering-Based Pseudo-Labeling for Unsupervised
Meta-Learning [146.11600461034746]
Method for unsupervised meta-learning, CACTUs, is a clustering-based approach with pseudo-labeling.
This approach is model-agnostic and can be combined with supervised algorithms to learn from unlabeled data.
We prove that the core reason for this is lack of a clustering-friendly property in the embedding space.
arXiv Detail & Related papers (2022-09-27T19:04:36Z) - A Modular Framework for Centrality and Clustering in Complex Networks [0.6423239719448168]
In this paper, we study two important such network analysis techniques, namely, centrality and clustering.
An information-flow based model is adopted for clustering, which itself builds upon an information theoretic measure for computing centrality.
Our clustering naturally inherits the flexibility to accommodate edge directionality, as well as different interpretations and interplay between edge weights and node degrees.
arXiv Detail & Related papers (2021-11-23T03:01:29Z) - Learning to Cluster Faces via Confidence and Connectivity Estimation [136.5291151775236]
We propose a fully learnable clustering framework without requiring a large number of overlapped subgraphs.
Our method significantly improves clustering accuracy and thus performance of the recognition models trained on top, yet it is an order of magnitude more efficient than existing supervised methods.
arXiv Detail & Related papers (2020-04-01T13:39:37Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.