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請用此 Handle URI 來引用此文件: http://tdr.lib.ntu.edu.tw/jspui/handle/123456789/102266
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dc.contributor.advisor胡明哲zh_TW
dc.contributor.advisorMing-Che Huen
dc.contributor.author李晨榕zh_TW
dc.contributor.authorChen-Jung Lien
dc.date.accessioned2026-04-27T16:09:14Z-
dc.date.available2026-04-28-
dc.date.copyright2026-04-27-
dc.date.issued2025-
dc.date.submitted2025-08-11-
dc.identifier.citation[1] Harry Markowitz. Portfolio selection. The Journal of Finance, 7(1):77–91, 1952.
[2] William F Sharpe. Capital asset prices: A theory of market equilibrium under conditions of risk. The Journal of Finance, 19(3):425–442, 1964.
[3] Stephen A Ross. The arbitrage theory of capital asset pricing. Journal of Economic Theory, 13(3):341–360, 1976.
[4] Olivier Ledoit and Michael Wolf. Improved estimation of the covariance matrix of stock returns with an application to portfolio selection. Journal of Empirical Finance, 10(5):603–621, 2003.
[5] Kristin J Forbes and Roberto Rigobon. No contagion, only interdependence: Measuring stock market comovements. The Journal of Finance, 57(5):2223–2261, 2002.
[6] Andrew Ang and Joseph Chen. Asymmetric correlations of equity portfolios. Journal of Financial Economics, 63(3):443–494, 2002.
[7] Laurens van der Maaten, Eric Postma, and Jaap van den Herik. Learning a parametric embedding by preserving local structure. In Artificial Intelligence and Statistics, pages 384–391, 2009. 55
[8] Gregory Connor and Robert A Korajczyk. A test for the number of factors in an approximate factor model. Journal of Finance, 48(4):1263–1291, 1993.
[9] Laurent Laloux, Pierre Cizeau, Jean-Philippe Bouchaud, and Marc Potters. Noise dressing of financial correlation matrices. Physical Review Letters, 83(7):1467, 1999.
[10] John A Lee and Michel Verleysen. Nonlinear Dimensionality Reduction. Springer, New York, 2007.
[11] Joshua B Tenenbaum, Vin de Silva, and John C Langford. A global geometric framework for nonlinear dimensionality reduction. Science, 290(5500):2319–2323, 2000.
[12] Ruiling Liu, Hengjin Cai, and Cheng Luo. Clustering analysis of stocks of csi300 index based on manifold learning. Journal of Intelligent Learning Systems and Applications, 4(2):120–126, 2012.
[13] Rosario N. Mantegna. Hierarchical structure in financial markets. The European Physical Journal B-Condensed Matter and Complex Systems, 11(1):193–197, 1999.
[14] Michele Tumminello, Tomaso Aste, Tiziana Di Matteo, and Rosario N. Mantegna. A tool for filtering information in complex systems. Proceedings of the National Academy of Sciences, 102(30):10421–10426, 2005.
[15] Jerome Friedman, Trevor Hastie, and Robert Tibshirani. Sparse inverse covariance estimation with the graphical lasso. Biostatistics, 9(3):432–441, 2008.
[16] Nicolai Meinshausen and Peter Bühlmann. High-dimensional graphs and variable selection with the lasso. The Annals of Statistics, 34(3):1436–1462, 2006. 56
[17] Ming Yuan and Yi Lin. Model selection and estimation in the gaussian graphical model. Biometrika, 94(1):19–35, 2007.
[18] Santo Fortunato. Community detection in graphs. Physics Reports, 486(3–5):75–174, 2010.
[19] Vincent D Blondel, Jean-Loup Guillaume, Renaud Lambiotte, and Etienne Lefebvre. Fast unfolding of communities in large networks. In Journal of Statistical Mechanics: Theory and Experiment, volume 2008, page 10008. IOP Publishing, 2008.
[20] Nicoló Musmeci, Tomaso Aste, and Tiziana Di Matteo. Risk diversification: a study of persistence with a filtered network approach. Journal of Network Theory in Finance, 1(1):1–22, 2015.
[21] Phillip Bonacich. Power and centrality: A family of measures. American Journal of Sociology, 92(5):1170–1182, 1987.
[22] Monica Billio, Mila Getmansky, Loriana Pelizzon, and Andrew W Lo. Econometric measures of connectedness and systemic risk in the finance and insurance sectors. Journal of Financial Economics, 104(3):535–559, 2012.
[23] Gustavo Peralta and Abalfazl Zareei. A network approach to portfolio selection. Journal of Empirical Finance, 38:157–180, 2016.
[24] Vincent D Blondel, Jean-Loup Guillaume, Renaud Lambiotte, and Etienne Lefebvre. Fast unfolding of communities in large networks. Journal of Statistical Mechanics: Theory and Experiment, 2008(10):P10008, 2008.
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dc.identifier.urihttp://tdr.lib.ntu.edu.tw/jspui/handle/123456789/102266-
dc.description.abstract隨著可投資資產的種類與數量大幅增加,傳統投資組合理論在面對高維度資料時,逐漸暴露出共變異數矩陣估計不穩定及線性假設過於簡化等限制。為解決ㄇ此一問題,本研究提出並實作一個創新的交集網絡框架,以建構更穩健且具解釋力的量化投資組合策略。

本研究以台灣股市上市櫃公司為研究樣本,核心方法為結合兩種異質性網絡以擷取資產間之強關聯性:結合非線性技術特徵相似性及稀疏精度矩陣。僅保留在上述兩種網絡中皆存在之連結,交集後即構成本研究所定義之交集網絡。基於此網絡結構,設計選股策略,並搭配權重配置方式,進行序時回測與穩健性檢驗。

實證結果顯示,多數策略在風險調整後報酬上均明顯優於大盤基準。其中,融合網絡拓樸結構與傳統量化因子相結合的策略,能有效提升超額報酬潛力。分期測試亦證明,核心策略於熊市期間具備優異的抗跌性與防禦力;此外,敏感度分析指出,模型績效對核心超參數之設定不具高度敏感性,進一步強化其應用上的穩健性。綜合而言,本研究提出之交集網絡不僅能有效降低金融網絡建構過程中的雜訊干擾,更成功應用於具實務潛力之資產配置策略設計,為現代投資組合理論與資產管理實務提供一項具創新性的可行路徑。
zh_TW
dc.description.abstractAs the variety and volume of investable assets continue to expand, traditional portfolio theories increasingly reveal their limitations when dealing with high-dimensional data—specifically, the instability of covariance matrix estimation and the oversimplification of linear assumptions. To address these challenges, this study proposes and implements an innovative intersection network framework to construct more robust and interpretable quantitative investment strategies.

Using listed companies in the Taiwan stock market as the research sample, the proposed method integrates two types of heterogeneous networks to capture strong asset relationships: one based on nonlinear technical feature similarity, and the other derived from sparse precision matrices. Only the links simultaneously present in both networks are retained, forming what this study defines as the intersection network. Based on this structure, a series of stock selection strategies are developed and combined with various weighting schemes for sequential backtesting and robustness testing.

Empirical results show that most strategies achieve significantly better risk-adjusted returns than the market benchmark. In particular, strategies that combine network topology with traditional quantitative factors demonstrate strong potential for generating excess returns. Period-based evaluations also confirm that the core strategies exhibit superior defensive performance during bear markets. Moreover, sensitivity analysis indicates that model performance is not overly dependent on specific hyperparameter settings, further reinforcing the robustness of the framework. Overall, the proposed high-conviction network effectively reduces noise in financial network construction and is successfully applied to practical portfolio design, offering an innovative and feasible approach to modern portfolio theory and asset management.
en
dc.description.provenanceSubmitted by admin ntu (admin@lib.ntu.edu.tw) on 2026-04-27T16:09:14Z
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dc.description.provenanceMade available in DSpace on 2026-04-27T16:09:14Z (GMT). No. of bitstreams: 0en
dc.description.tableofcontents口試委員審定書 i
致謝 ii
摘要 iii
Abstract iv
目次 vi
圖次 ix
表次 x

第一章 緒論 1
 1.1 研究背景 1
 1.2 研究動機與目的 3
 1.3 研究架構 4

第二章 文獻回顧 5
 2.1 投資組合理論之演進與挑戰 5
 2.2 非線性降維與流形學習於金融之應用 7
  2.2.1 線性降維方法的應用與限制 7
  2.2.2 流形學習 8
 2.3 金融網路分析與社群偵測 10
  2.3.1 從相關矩陣到金融網路 10
  2.3.2 網路建構:Graphical Lasso 的稀疏化優勢 11
  2.3.3 網路分群:社群偵測與 Louvain 演算法 12
  2.3.4 網路中心性與代表性資產 13

第三章 研究方法 14
 3.1 研究架構 14
 3.2 樣本與資料來源 15
  3.2.1 樣本篩選流程 16
 3.3 技術指標與特徵工程 16
 3.4 流形學習 17
 3.5 Graphical Lasso:稀疏精度矩陣估計 20
 3.6 交集網絡的構建與加權 22
 3.7 社群偵測方法與分群建模 23
 3.8 投資組合構建:選股策略 25
 3.9 績效評估指標 27

第四章 實證結果與分析 31
 4.1 樣本描述與特徵統計 31
  4.1.1 樣本特徵統計 32
 4.2 實驗設計及選股策略驗證 35
  4.2.1 績效指標總覽 37
 4.3 資產配置與風險特徵分析 41
 4.4 穩健性與敏感度分析 43
  4.4.1 市場環境穩健性分析 46
  4.4.2 敏感度分析 48
 4.5 選股組合特性分析:重疊性、產業配置與穩定性 50
  4.5.1 持股重疊度分析 50
  4.5.2 持股穩定性分析 51

第五章 結論與建議 53
 5.1 結論 53
 5.2 未來研究方向 54

參考文獻 55

附錄 A — 產業分布 58
 A.1 樣本資料之產業分布比例 58

附錄 B — 技術指標 59
 B.1 技術指標公式 59
  B.1.1 相對強弱指標(RSI) 59
  B.1.2 移動平均收斂擴散指標(MACD) 60
  B.1.3 簡單移動平均(SMA) 60
  B.1.4 隨機指標(Stochastic) 60
  B.1.5 布林通道(Bollinger Bands) 61
  B.1.6 收益率與波動率(Return and Volatility) 62
    B.1.6.1 N日持有期收益率 62
    B.1.6.2 N日年化波動率 62
 B.2 指標參數與週期設定 63
 B.3 技術指標變數定義 63
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dc.language.isozh_TW-
dc.subject流型學習-
dc.subject稀疏矩陣-
dc.subject金融網絡分析-
dc.subject資產配置-
dc.subject投資組合-
dc.subjectManifold Learning-
dc.subjectSparse Matrix-
dc.subjectFinancial Network Analysis-
dc.subjectAsset Allocation-
dc.subjectPortfolio Construction-
dc.title結合流形學習與 Graphical Lasso 之投資組合與風險分散策略zh_TW
dc.titleManifold Learning and Graphical Lasso for Portfolio and Risk Diversificationen
dc.typeThesis-
dc.date.schoolyear113-2-
dc.description.degree碩士-
dc.contributor.coadvisor溫在弘zh_TW
dc.contributor.coadvisorTzai-Hung Wenen
dc.contributor.oralexamcommittee陳郁蕙;何率慈zh_TW
dc.contributor.oralexamcommitteeYu-Hui Chen;Shuay-tsyr Hoen
dc.subject.keyword流型學習,稀疏矩陣金融網絡分析資產配置投資組合zh_TW
dc.subject.keywordManifold Learning,Sparse MatrixFinancial Network AnalysisAsset AllocationPortfolio Constructionen
dc.relation.page63-
dc.identifier.doi10.6342/NTU202503678-
dc.rights.note同意授權(限校園內公開)-
dc.date.accepted2025-08-13-
dc.contributor.author-college共同教育中心-
dc.contributor.author-dept統計碩士學位學程-
dc.date.embargo-lift2030-08-04-
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