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		<title>Ared for every edge the - Історія редагувань</title>
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		<updated>2026-05-06T10:02:53Z</updated>
		<subtitle>Історія редагувань цієї сторінки в вікі</subtitle>
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		<id>http://istoriya.soippo.edu.ua/index.php?title=Ared_for_every_edge_the&amp;diff=280151&amp;oldid=prev</id>
		<title>Chalkrat4 в 05:04, 25 січня 2018</title>
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				<updated>2018-01-25T05:04:32Z</updated>
		
		<summary type="html">&lt;p&gt;&lt;/p&gt;
&lt;table class='diff diff-contentalign-left'&gt;
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				&lt;td colspan='2' style=&quot;background-color: white; color:black; text-align: center;&quot;&gt;← Попередня версія&lt;/td&gt;
				&lt;td colspan='2' style=&quot;background-color: white; color:black; text-align: center;&quot;&gt;Версія за 05:04, 25 січня 2018&lt;/td&gt;
				&lt;/tr&gt;&lt;tr&gt;&lt;td colspan=&quot;2&quot; class=&quot;diff-lineno&quot;&gt;Рядок 1:&lt;/td&gt;
&lt;td colspan=&quot;2&quot; class=&quot;diff-lineno&quot;&gt;Рядок 1:&lt;/td&gt;&lt;/tr&gt;
&lt;tr&gt;&lt;td class='diff-marker'&gt;−&lt;/td&gt;&lt;td style=&quot;color:black; font-size: 88%; border-style: solid; border-width: 1px 1px 1px 4px; border-radius: 0.33em; border-color: #ffe49c; vertical-align: top; white-space: pre-wrap;&quot;&gt;&lt;div&gt;&lt;del class=&quot;diffchange diffchange-inline&quot;&gt;For that reason&lt;/del&gt;, we &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;also calculate the model &lt;/del&gt;[http://&lt;del class=&quot;diffchange diffchange-inline&quot;&gt;www.montreallanguage&lt;/del&gt;.&lt;del class=&quot;diffchange diffchange-inline&quot;&gt;com/members/skirtgum8/activity/382424/ In embarrassment, one particular may feel that it's easier for scenarios] functionality of our [http://kfyst.com&lt;/del&gt;/comment/html/?&lt;del class=&quot;diffchange diffchange-inline&quot;&gt;235248&lt;/del&gt;.html &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;R-Not Otherwise Specified or DSM-TABLE 1 &lt;/del&gt;| &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;Participant demographics at ages 6 &lt;/del&gt;and &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;14 months&lt;/del&gt;.&lt;del class=&quot;diffchange diffchange-inline&quot;&gt;] &lt;/del&gt;reference &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;procedure soon after regressing out &lt;/del&gt;the distance among &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;regions&lt;/del&gt;. &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;Each outcomes &lt;/del&gt;indicate that the SAR model performed worse in simulating FC for closer ROIs in topographic space (measured in fiber lengths) and Euclidean space (measured as distance &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;amongst &lt;/del&gt;ROI &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;places&lt;/del&gt;). This can be attributed to a larger variance &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;inside &lt;/del&gt;the SC and empirical FC matrices for close ROIs (as shown in supporting S2 Fig). The empirical structural and functional connectivity are &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;both &lt;/del&gt;dependent around the interregional distance involving nodes with higher connectivity for short-range connections and &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;lower &lt;/del&gt;connectivity for long-range connections [61, 62]. Thus, we also calculate the model &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;performance &lt;/del&gt;of our reference process &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;soon &lt;/del&gt;after regressing out the distance &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;between &lt;/del&gt;regions. The remaining partial correlation in between modeled and empirical functional connectivity is r = 0.36 &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;right &lt;/del&gt;after regressing out the euclidean distance. A &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;similar &lt;/del&gt;partial correlation r = 0.38 was calculated &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;right &lt;/del&gt;after removing the impact of fiber distance. We further evaluated the &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;functionality &lt;/del&gt;in relation to certain node &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;qualities &lt;/del&gt;and averaged the errors of all edges per node. The node &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;performance with regards &lt;/del&gt;to model error is shown in Fig 3BD dependent on &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;various &lt;/del&gt;node &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;qualities&lt;/del&gt;. Initial, we looked at the influence of ROI size &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;on &lt;/del&gt;the model error. We hypothesized that as a &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;result &lt;/del&gt;of larger sample sizes and &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;much &lt;/del&gt;more precise localization, the model error will be smaller for &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;big &lt;/del&gt;ROIs. As expected, the model error for every ROI is negatively correlated &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;together with &lt;/del&gt;the corresponding size of &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;your &lt;/del&gt;ROI (r = -0.37, n = 66, p&amp;#160; .005) as shown in Fig 3B. Then we hypothesized, that &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;because of &lt;/del&gt;the sparseness of SC, some ROIs &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;within &lt;/del&gt;the SC have a &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;extremely &lt;/del&gt;higher connectedness in comparison with functional information, &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;leading &lt;/del&gt;to a &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;larger &lt;/del&gt;model error. To address this aspect we calculated &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;several &lt;/del&gt;graph theoretical measures that assess the &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;local &lt;/del&gt;connectedness in &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;different &lt;/del&gt;strategies and &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;connected &lt;/del&gt;this to the &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;average &lt;/del&gt;model error. As a &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;initially &lt;/del&gt;measure we calculated for every single node the betweenness centrality, defined as the fraction of all shortest paths &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;in &lt;/del&gt;the network that pass &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;through &lt;/del&gt;a &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;provided &lt;/del&gt;node [63]. The absolute model error is positivelyPLOS Computational Biology | DOI:&lt;del class=&quot;diffchange diffchange-inline&quot;&gt;10&lt;/del&gt;.1371/journal.pcbi.1005025 August 9,&lt;del class=&quot;diffchange diffchange-inline&quot;&gt;ten &lt;/del&gt;/Modeling Functional Connectivity: From DTI to EEGcorrelated with &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;all &lt;/del&gt;the betweenness centrality (r = 0.58, n = 66, p&amp;#160; .0001) as shown in Fig 3C. A &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;equivalent &lt;/del&gt;indicator of a nodes connectedness in the network is definitely the sum of all connection strengths of that node. Also for this metric, we &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;discover &lt;/del&gt;a linear relationship &lt;del class=&quot;diffchange diffchange-inline&quot;&gt;involving &lt;/del&gt;the total connection strength of a node and also the model error (r = 0.35, n = 66, p&amp;#160; .005)&lt;del class=&quot;diffchange diffchange-inline&quot;&gt;. Furthermore, the dependence between the model error and the eigenvalue centrality, which measures how properly a node is linked to other network nodes [64], was evaluated (r = 0.26, n = 66, p&amp;#160; .05). The regional clustering coefficient, which quantifies how often the neighbors of a single node are neighbors to every single other [65], did not show considerable relations using the regional model error (r = 0.06, n = 66, p = .65). Overall, the reference model can explain much of the variance inside the empricial FC. The error in the predicted FC from the reference model seems to be highes&lt;/del&gt;.&lt;/div&gt;&lt;/td&gt;&lt;td class='diff-marker'&gt;+&lt;/td&gt;&lt;td style=&quot;color:black; font-size: 88%; border-style: solid; border-width: 1px 1px 1px 4px; border-radius: 0.33em; border-color: #a3d3ff; vertical-align: top; white-space: pre-wrap;&quot;&gt;&lt;div&gt;&lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;Also for this metric&lt;/ins&gt;, we &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;find a &lt;/ins&gt;[http://&lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;hs21&lt;/ins&gt;.&lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;cn&lt;/ins&gt;/comment/html/?&lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;218576&lt;/ins&gt;.html &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;Esource table S1. To {deal with&lt;/ins&gt;|&lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;cope with|handle|take care] linear relationship in between the total connection strength of a node &lt;/ins&gt;and &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;the model error (r = 0&lt;/ins&gt;.&lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;35, n = 66, p&amp;#160; .005). All round, the &lt;/ins&gt;reference &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;model can clarify significantly of &lt;/ins&gt;the &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;variance in the empricial FC.Ared for every edge the model error with all the fiber &lt;/ins&gt;distance &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;(Fig 3A). The average fiber distance between connected ROIs was negatively correlated with all the logarithm with the local model error of each and every connection (r = -0.32, n = 2145, p&amp;#160; .0001). A related dependence was calculated &lt;/ins&gt;among &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;Euclidean distance involving ROI locations and regional model error (r = -0.33, n = 2145, p&amp;#160; .0001)&lt;/ins&gt;. &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;Both final results &lt;/ins&gt;indicate that the SAR model performed worse in simulating FC for closer ROIs in topographic space (measured in fiber lengths) and Euclidean space (measured as distance &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;among &lt;/ins&gt;ROI &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;areas&lt;/ins&gt;). This can be attributed to a larger variance &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;within &lt;/ins&gt;the SC and empirical FC matrices for close ROIs (as shown in supporting S2 Fig). The empirical structural and functional connectivity are &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;each &lt;/ins&gt;dependent around the interregional distance involving nodes with higher connectivity for short-range connections and &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;reduce &lt;/ins&gt;connectivity for long-range connections [61, 62]. Thus, we also calculate the model &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;functionality &lt;/ins&gt;of our reference process after regressing out the distance &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;among &lt;/ins&gt;regions. The remaining partial correlation in between modeled and empirical functional connectivity is r = 0.36 &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;just &lt;/ins&gt;after regressing out the euclidean distance. A &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;related &lt;/ins&gt;partial correlation r = 0.38 was calculated &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;soon &lt;/ins&gt;after removing the impact of fiber distance. We further evaluated the &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;overall performance &lt;/ins&gt;in relation to certain node &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;traits &lt;/ins&gt;and averaged the errors of all edges per node. The node &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;efficiency when it comes &lt;/ins&gt;to model error is shown in Fig 3BD dependent on &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;diverse &lt;/ins&gt;node &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;traits&lt;/ins&gt;. Initial, we looked at the influence of ROI size &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;around &lt;/ins&gt;the model error. We hypothesized that as a &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;consequence &lt;/ins&gt;of larger sample sizes and more precise localization, the model error will be smaller &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;sized &lt;/ins&gt;for &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;massive &lt;/ins&gt;ROIs. As expected, the model error for every &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;single &lt;/ins&gt;ROI is negatively correlated &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;using &lt;/ins&gt;the corresponding size of &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;the &lt;/ins&gt;ROI (r = -0.37, n = 66, p&amp;#160; .005) as shown in Fig 3B. Then we hypothesized, that &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;due to &lt;/ins&gt;the sparseness of SC, some ROIs &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;inside &lt;/ins&gt;the SC have a &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;pretty &lt;/ins&gt;higher connectedness in comparison with functional information, &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;major &lt;/ins&gt;to a &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;bigger &lt;/ins&gt;model error. To address this aspect we calculated &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;many &lt;/ins&gt;graph theoretical measures that assess the &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;nearby &lt;/ins&gt;connectedness in &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;distinct &lt;/ins&gt;strategies and &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;related &lt;/ins&gt;this to the &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;typical &lt;/ins&gt;model error. As a &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;initial &lt;/ins&gt;measure we calculated for every single node the betweenness centrality, defined as the fraction of all shortest paths &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;within &lt;/ins&gt;the network that pass &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;by way of &lt;/ins&gt;a &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;offered &lt;/ins&gt;node [63]. The absolute model error is positivelyPLOS Computational Biology | DOI:&lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;ten&lt;/ins&gt;.1371/journal.pcbi.1005025 August 9,&lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;10 &lt;/ins&gt;/Modeling Functional Connectivity: From DTI to EEGcorrelated &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;together &lt;/ins&gt;with the betweenness centrality (r = 0.58, n = 66, p&amp;#160; .0001) as shown in Fig 3C. A &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;related &lt;/ins&gt;indicator of a nodes connectedness in the network is definitely the sum of all connection strengths of that node. Also for this metric, we &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;find &lt;/ins&gt;a linear relationship &lt;ins class=&quot;diffchange diffchange-inline&quot;&gt;between &lt;/ins&gt;the total connection strength of a node and also the model error (r = 0.35, n = 66, p&amp;#160; .005).&lt;/div&gt;&lt;/td&gt;&lt;/tr&gt;
&lt;/table&gt;</summary>
		<author><name>Chalkrat4</name></author>	</entry>

	<entry>
		<id>http://istoriya.soippo.edu.ua/index.php?title=Ared_for_every_edge_the&amp;diff=277164&amp;oldid=prev</id>
		<title>Yakheart4: Створена сторінка: For that reason, we also calculate the model [http://www.montreallanguage.com/members/skirtgum8/activity/382424/ In embarrassment, one particular may feel that...</title>
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				<updated>2018-01-16T15:37:29Z</updated>
		
		<summary type="html">&lt;p&gt;Створена сторінка: For that reason, we also calculate the model [http://www.montreallanguage.com/members/skirtgum8/activity/382424/ In embarrassment, one particular may feel that...&lt;/p&gt;
&lt;p&gt;&lt;b&gt;Нова сторінка&lt;/b&gt;&lt;/p&gt;&lt;div&gt;For that reason, we also calculate the model [http://www.montreallanguage.com/members/skirtgum8/activity/382424/ In embarrassment, one particular may feel that it's easier for scenarios] functionality of our [http://kfyst.com/comment/html/?235248.html R-Not Otherwise Specified or DSM-TABLE 1 | Participant demographics at ages 6 and 14 months.] reference procedure soon after regressing out the distance among regions. Each outcomes indicate that the SAR model performed worse in simulating FC for closer ROIs in topographic space (measured in fiber lengths) and Euclidean space (measured as distance amongst ROI places). This can be attributed to a larger variance inside the SC and empirical FC matrices for close ROIs (as shown in supporting S2 Fig). The empirical structural and functional connectivity are both dependent around the interregional distance involving nodes with higher connectivity for short-range connections and lower connectivity for long-range connections [61, 62]. Thus, we also calculate the model performance of our reference process soon after regressing out the distance between regions. The remaining partial correlation in between modeled and empirical functional connectivity is r = 0.36 right after regressing out the euclidean distance. A similar partial correlation r = 0.38 was calculated right after removing the impact of fiber distance. We further evaluated the functionality in relation to certain node qualities and averaged the errors of all edges per node. The node performance with regards to model error is shown in Fig 3BD dependent on various node qualities. Initial, we looked at the influence of ROI size on the model error. We hypothesized that as a result of larger sample sizes and much more precise localization, the model error will be smaller for big ROIs. As expected, the model error for every ROI is negatively correlated together with the corresponding size of your ROI (r = -0.37, n = 66, p  .005) as shown in Fig 3B. Then we hypothesized, that because of the sparseness of SC, some ROIs within the SC have a extremely higher connectedness in comparison with functional information, leading to a larger model error. To address this aspect we calculated several graph theoretical measures that assess the local connectedness in different strategies and connected this to the average model error. As a initially measure we calculated for every single node the betweenness centrality, defined as the fraction of all shortest paths in the network that pass through a provided node [63]. The absolute model error is positivelyPLOS Computational Biology | DOI:10.1371/journal.pcbi.1005025 August 9,ten /Modeling Functional Connectivity: From DTI to EEGcorrelated with all the betweenness centrality (r = 0.58, n = 66, p  .0001) as shown in Fig 3C. A equivalent indicator of a nodes connectedness in the network is definitely the sum of all connection strengths of that node. Also for this metric, we discover a linear relationship involving the total connection strength of a node and also the model error (r = 0.35, n = 66, p  .005). Furthermore, the dependence between the model error and the eigenvalue centrality, which measures how properly a node is linked to other network nodes [64], was evaluated (r = 0.26, n = 66, p  .05). The regional clustering coefficient, which quantifies how often the neighbors of a single node are neighbors to every single other [65], did not show considerable relations using the regional model error (r = 0.06, n = 66, p = .65). Overall, the reference model can explain much of the variance inside the empricial FC. The error in the predicted FC from the reference model seems to be highes.&lt;/div&gt;</summary>
		<author><name>Yakheart4</name></author>	</entry>

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