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  1. NTU Theses and Dissertations Repository
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  3. 統計碩士學位學程
Please use this identifier to cite or link to this item: http://tdr.lib.ntu.edu.tw/jspui/handle/123456789/101758
Title: 應用一般化袋形距離於深度局部中心分群之框架研究
A Depth-Based Local Center Clustering Framework with Generalized Bagdistance
Authors: 郭軒丞
Shiuan-Cheng Kuo
Advisor: 陳彥賓
Yan-Bin Chen
Keyword: 分群,深度函數袋形距離密度異質性
Clustering,Depth FunctionsBagdistanceDensity Heterogeneity
Publication Year : 2026
Degree: 碩士
Abstract: 在群集分析中,對具備非凸幾何、嚴重密度異質性與非對稱結構的資料進行無監督劃分,始終是一項根本性的挑戰。本研究擴展深度局部中心分群(DLCC)演算法,以處理其在資料分派上的限制。為緩解由嚴重密度異質性引發的結構失衡,本方法基於嚴格的鄰域重疊準則保留稀疏中心,並限制過渡群集的初始擴張,從而防止稀疏觀測值遭到系統性誤派。針對未分派的觀測值,本程序相對於結構核心,評估連續的深度適應性袋形距離。此幾何適應性距離能有效捕捉局部非等向性特徵與非對稱結構。經數值實驗證實,本框架能維持非凸幾何中的結構連通性,並防止在嚴重密度異質性與結構非對稱下發生系統性分類錯誤。
The unsupervised partitioning of data characterized by non-convex geometries, severe density heterogeneity, and asymmetric structures remains a fundamental challenge in cluster analysis. This study extends the Depth-Based Local Center Clustering (DLCC) algorithm to address its allocation limitations. To mitigate the structural imbalance induced by severe density heterogeneity, the methodology retains sparse centers based on a strict neighborhood overlap criterion and constrains the initial expansion of interim clusters, thereby preventing the systematic misallocation of sparse observations. For unallocated observations, the procedure evaluates continuous depth-adapted bagdistance relative to the structural cores. This geometry-adaptive distance captures local anisotropic features and asymmetric structures. Numerical experiments demonstrate that the framework maintains structural connectivity in non-convex geometries and prevents systematic misclassifications under severe density heterogeneity and structural asymmetry.
URI: http://tdr.lib.ntu.edu.tw/jspui/handle/123456789/101758
DOI: 10.6342/NTU202600688
Fulltext Rights: 未授權
metadata.dc.date.embargo-lift: N/A
Appears in Collections:統計碩士學位學程

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