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  • About
  • The Global ETD Search service is a free service for researchers to find electronic theses and dissertations. This service is provided by the Networked Digital Library of Theses and Dissertations.
    Our metadata is collected from universities around the world. If you manage a university/consortium/country archive and want to be added, details can be found on the NDLTD website.
1

神韻派詩論之研究

易新宙, Yi, Xin-Zhou Unknown Date (has links)
在吾國傳統思想史上,儒釋道三家宿稱顯學。就文學理念言,儒家思想籠罩下之文學 觀多尚功利實用性,此派主張於吾國傳統批評史上佔有極大之勢。然另有以禪道思想 為基底之神韻派,其論詩特尚「言外之意」而無涉功利實用性。本篇言侖文即欲就「 神韻派」詩論做一歷史性之考察與申述。 第一章:緒論。共三節:要在申明神韻派名義與範圍、研究動機及方法步驟。 第二章:神韻派詩論之思想背景。共二節:要就莊學與禪學思想論述。 第三章:神韻之涵義。共四節:要就「神」及「韻」之分別意義與「神韻」之出現及 意義上討論。 第四章:神韻派詩論之統緒(一)。共二節:要就皎然及司空圖論。 第五章:神韻派詩論之統緒(二)。共二節:要就嚴羽及王士禎論。 第六章:綜論。共三節:要就美感性質,神韻派對元白之意見及他人對神韻派之意見 三方面,以探討神韻派詩論之特色。
2

離散條件機率分配之相容性研究 / On compatibility of discrete conditional distributions

陳世傑, Chen, Shih Chieh Unknown Date (has links)
設二個隨機變數X1 和X2,所可能的發生值分別為{1,…,I}和{1,…,J}。條件機率分配模型為二個I × J 的矩陣A 和B,分別代表在X2 給定的條件下X1的條件機率分配和在X1 給定的條件下X2的條件機率分配。若存在一個聯合機率分配,而且它的二個條件機率分配剛好就是A 和B,則稱A和B相容。我們透過圖形表示法,提出新的二個離散條件機率分配會相容的充分必要條件。另外,我們證明,二個相容的條件機率分配會有唯一的聯合機率分配的充分必要條件為:所對應的圖形是相連的。我們也討論馬可夫鏈與相容性的關係。 / For two discrete random variables X1 and X2 taking values in {1,…,I} and {1,…,J}, respectively, a putative conditional model for the joint distribution of X1 and X2 consists of two I × J matrices representing the conditional distributions of X1 given X2 and of X2 given X1. We say that two conditional distributions (matrices) A and B are compatible if there exists a joint distribution of X1 and X2 whose two conditional distributions are exactly A and B. We present new versions of necessary and sufficient conditions for compatibility of discrete conditional distributions via a graphical representation. Moreover, we show that there is a unique joint distribution for two given compatible conditional distributions if and only if the corresponding graph is connected. Markov chain characterizations are also presented.
3

利用機率式神經纖維追蹤術量測大腦小世界網路參數的重現性 / The Reproducibility on the Estimation of Brain Small World Metrics using Probabilistic Diffusion Tractography

王煒平, Wang, Wei Ping Unknown Date (has links)
擴散權重影像與神經纖維追蹤可以用來探討腦區域之間的連結性,目前透過網路分析方式已經證實腦網路是有小世界的特性,最近也有研究不同受試者或者是病人之間的網路連結量測集中程度,但是擴散權重影像所運算出來的網路參數中間要經過很多步驟,這些中間步驟可能會影響到網路參數。所以有必要對於量測網路參數的受試者間變異性和重複量測重現性進行研究。本研究的目標是利用機率式神經纖維追蹤術量測大腦網路參數的重現性,探討三個會影響計算網路參數的重現性的變因,分別是,路徑定義方式、有無損耗正規化、受試者群體的網路連結篩選機制。變異係數定義(Coefficient of Variance, CV)為標準差除以平均值,分別計算二次量測之間的變異係數(CVwithin),以及受試者之間的變異係數(CVbetween),另外也計算組內相關係數(Intraclass correlation coefficient, ICC)。 掃描30受試者(15男,15女,年齡20~26)。每人掃描二次,並利用機率式神經纖維追蹤術計算網路連結,網路節點則是使用AAL標準模板定義的節點。若使用Wij = 1 – Pij定義長度,三項網路參數(區域效率、全域效率及損耗)重現性皆可接受(CVwithin<1.08%, CVwithin ≤ 10% and ICC > 0.7)。如果使用Wij=1/Pij定義長度,其損耗的CVwithin相較於Wij = 1 – Pij的大。如果長度的全距大,區域效率會不尋常地增加。如果二次掃描分別實施連結篩選,全域效率的CVwithin會較大。 本研究探討不同的網路建構方式將會影響測試內重現度,不同的研究團隊,縱使是採用相同的受試者群體和相同的儀器,所發表出來的網路參數可能會因為纖維追蹤術造成的誤差而不一致,因此實驗必須謹慎的分析資料以及闡述結果。 / Diffusion tensor imaging (DTI) with associate tractography can be used to access the connectivity of cortical regions in brain. Network analysis applied to connectivity matrix has demonstrated that brain has small world property. Recent studies also use network analysis to study the variation of concentricity among different group of subjects and patients. However the estimation of network metrics from DTI takes sophisticated processing steps. These intermediate steps may influence the estimation of network metric. It is therefore needed to investigate the potential variation of estimated network metrics using reproducibility test. The goal is to study the reproducibility of network properties derived from diffusion connectivity matrix constructed using probabilistic tractography. The effects of three factors on the reproducibility of network metrics estimation were studied. They are definition of path lengths of network matrix, path with and without cost normalization, the application of threshold to subjects groups. Coefficient of Variation (CV) defined as standard deviation divided by mean is used to test the intra-session (CVwithin) and inter subject (CVbetween) variability. Intra-class correlation coefficient (ICC) was also calculated. Images were acquired from 30 healthy participants (15 male, 15 female, aged 20-26 years). Each subject was scanned twice, denoted as N1 and N2. Probabilistic tractography was performed to mapping of cortico-cortical anatomical connections between regions defined from an anatomical atlas. All three of the tested network metrics (local efficiency, global efficiency and cost) were identified as acceptable (CVwithin < 1.08%, CVwithin ≤ 10% and ICC > 0.7) using path length defined as Wij = 1 – Pij. When the path length is defined as Wij = 1/Pij, cost showed higher CVwithin compared to Wij = 1 – Pij. It is unusual that local efficiency increase when the range of path length of edges is large. Global efficiency showed higher CVwithin as threshold is applied to N1 and N2 separately compared to both scans together. The present study revealed that different ways to construct cortical network had an effect on intra-session reproducibility. Our study also showed that despite evaluation of identical subjects using the same MRI system, variation of network metrics may be found by different research groups due to the potential errors from tractography. Replication of the experiment need to be carefully analyzed and interpreted.

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