为什么igraph中eigen_centrality函数的结果每次执行时都不同

如何解决为什么igraph中eigen_centrality函数的结果每次执行时都不同

我想在我的交易数据网络上计算特征集中度。但是,每次运行igraph中的eigen_centrality函数时,它都会为节点创建不同的结果。

代码如下:

relations <- data.frame(from = data$from,to = data$to)
network <- graph_from_data_frame(relations,directed = T)

E(network)$weight <- log(data$amount + 1.1) # weight of the edges

V(network)$eigenCentrality <- eigen_centrality(network,scale = TRUE)$vector

network_data <- igraph::as_data_frame(network,what = "vertices")
head(network_data) 

上面的代码的结果每次运行都会产生不同的结果。

运行结果:

        name    eigenCentrality
        <chr>   <dbl>
5695    5695    0.00000000000000004061352       
9379    9379    0.00000000000000001507577       
8170    8170    0.00000000000000002865109       
9845    9845    0.00000000000000000000000       
9640    9640    0.00000000000000000000000       
5815    5815    0.00000000000000000000000        

另一次运行的结果:

        name    eigenCentrality
        <chr>   <dbl>
5695    5695    0.0000000000000000000000        
9379    9379    0.0000000000000000000000        
8170    8170    0.0000000000000000000000        
9845    9845    0.0000000000000002674064        
9640    9640    0.0000000000000000000000        
5815    5815    0.0000000000000011516567    

可能是什么原因造成的?

可复制的示例:

structure(list(id = 0:499,from = c("5695","9379","8170","9845","9640","5815","8583","8314","8865","6530","9155","7536","7085","5829","9606","6795","5573","7874","9409","5454","9318","8763","9030","9280","5517","9387","9810","9056","7300","7313","7518","5601","7549","7841","8888","5808","9545","9460","8053","6615","8846","7280","8265","6934","8930","6917","7889","7653","6262","7222","7907","6203","9098","7278","6312","8844","8822","9742","8687","9174","5939","7424","6797","7564","8671","6415","5610","6052","9152","7568","5503","7869","7148","6686","6223","7343","8990","8027","5673","6718","5858","7001","9529","8708","7603","7468","7601","9868","5755","9655","8321","9110","5726","6393","7425","5803","6268","9723","7682","6839","7063","8046","9558","8628","7719","7754","6292","6306","9069","6329","8238","9793","8178","5538","8305","7227","9207","9694","6194","7559","5373","8235","8280","6252","6646","5781","5568","6234","5588","6015","6253","5400","5954","8518","6829","6660","7210","6351","6147","5907","6504","7344","7584","7989","7265","7207","9620","6022","6733","6210","8631","6222","7070","9524","5640","5649","9291","7617","8727","6794","6502","7259","5621","7055","7151","8594","8980","7264","6526","8781","7984","6114","9408","9115","6140","8537","7370","7744","8551","5562","6354","7783","5443","9161","5668","9249","8422","5409","9216","7253","5921","8689","5836","9669","6359","8239","9021","8469","9135","6043","5776","6770","7725","5769","7502","6284","9811","6830","7047","5608","8282","9047","8768","9398","8532","9048","7195","7812","7528","5957","8233","7039","6874","8390","9843","8906","5952","6772","5774","5773","5816","7664","6600","7093","6454","6487","5585","6358","5876","8266","6361","6799","7839","8047","6390","8423","7247","7534","8870","8756","8880","9772","6989","6248","6374","7893","8228","6514","7974","8395","8361","9027","8456","6616","7035","7488","7382","6784","9597","9075","6228","8736","6442","9137","8168","9803","7650","7290","6410","9450","9201","7728","7049","6986","9084","7955","8336","9457","9676","8078","6540","8757","7084","7492","5566","8872","5931","5722","8502","6836","6648","9696","9498","8317","8389","6375","7109","8304","6463","8894","8741","9719","8963","5915","7336","7802","8374","5922","7680","8598","6634","6765","7880","9855","8683","8640","8853","9277","8105","9819","8472","8713","6509","7503","7069","8787","9251","9744","8912","7614","6669","6749","7860","9589","5715","8130","6143","6129","8937","8660","6883","8599","7494","6417","5650","9613","7021","7996","5784","5885","7390","6230","7495","8512","9684","9802","5418","8668","5605","9813","8206","8783","8723","7321","9610","6334","5866","7792","5512","7711","9632","5896","8945","8982","7057","8809","9630","6479","5433","8933","9839","8735","6153","6042","7899","9111","7332","5473","8869","7770","7598","5831","9750","6099","7293","6551","9228","8739","9315","5644","7718","8008","8499","7854","8041","9617","9525","5576","6997","6138","9657","7631","8785","8615","7271","7326","9652","5999","5976","9392","8118","9580","9046","7517","6407","8934","7577","6510","5727","9840","9350","9369"
),to = c("7468","6213","6254","9240","9131","9770","6217","9565","9202","9333","6503","6673","8323","6671","8657","7471","8408","7154","9664","6053","8368","7483","7772","7243","8820","6951","6771","9667","8876","7885","6155","5648","6404","9573","5997","9682","8665","8678","6947","6912","9012","7345","5483","8278","8606","9493","5635","7604","6299","7192","9741","5732","6273","9602","8611","5643","5925","7406","6331","6093","7990","8790","9468","6243","9631","7672","6429","9628","5837","7624","7143","7155","8248","6566","9042","7525","8769","5570","8180","8782","7714","8128","9488","8567","6460","5468","6192","6011","7825","9065","5411","8044","5873","7785","6876","6025","7710","8483","6837","7317","7675","7214","9837","6523","9815","8726","5506","6422","5582","8952","9827","6164","8558","9690","7790","9501","7707","9648","5614","8220","6411","6560","6613","5408","5968","8967","7929","5604","6340","8939","7411","6142","9499","7447","9552","9555","8345","6215","9313","6851","7915","7153","9469","7555","9372","9369","9717","9348","8947","7920","6400","5849","8674","7895","8429","6014","9037","7017","8095","6938","8941","7878","7941","9777","8667","8975","7304","9828","5548","6831","7449","7170","9862","6131","6305","7122","6774","5641","7879","6517","8129","6866","6994","9085","9729","8772","5695","6056","7316","6333","8326","6108","6651","7532","8985","8412","9747","7635","5842","9861","6392","9746","8770","6689","8134","9244","7585","9623","9364","5692","5794","5741","8038","6020","7397","8420","5374","6581","5874","5827","5751","8405","7096","9102","7565","7735","7171","8409","5753","9832","7928","7496","6168","7506","8648","7191","8310","9570","8743","9454","8461","7599","8312","5728","7255","8523","6186","9522","8522","7208","6325","6843","7034","5789","6798","6525","9381","6700","6146","8830","6338","8309","8447","8017","9701","9366","9847","5905","6045","8416","9221","5495","7668","8329","7328","6311","9481","6972","6807","6735","8142","9493"),date = structure(c(12787,12791,12793,12795,12797,12803,12807,12809,12813,12814,12816,12817,12819,12820,12821,12822,12823,12824,12825,12826,12827,12828,12830,12832,12834,12837,12839,12840,12842,12845,12846,12847,12848,12849,12850,12851,12852,12853,12854,12855,12856,12857,12859,12861,12862,12864,12865,12867,12868,12869,12870,12872,12873,12875,12876,12877,12878,12879,12880,12881,12882,12883,12884,12885,12886,12887,12888,12889,12890,12891,12892,12893,12894,12895,12896,12897,12898,12899,12900,12901,12902,12903,12905,12906,12907,12908,12909,12910,12911,12912,12913,12914,12915,12916,12917,12918,12919,12920,12921,12922,12923,12924,12925,12926,12927,12928,12929,12930,12931,12932,12934,12935,12936,12937,12938,12939,12940,12941,12942,12943,12944,12945,12946,12947,12948,12949,12950,12951,12952,12953,12954,12955,12956,12957,12958,12959,12960,12961,12962,12963,12964,12965,12966,12967,12968,12969,12970,12971,12972,12973,12974,12975,12976,12977,12978,12979,12980,12981,12982,12983,12984,12985,12986,12987,12988,12989,12990,12991,12992,12993,12994,12995,12995),class = "Date"),amount = c(700,11832,1000,4276,200,49752,19961,13.4,42.7,800,5224,5859,3242,6242,1200,22349,17477,9000,20567,6600,500,3100,300,1100,18.7,102,2.9,3,39285,52.1,34.1,18.5,37305,8900,7618,7597,9612,10700,7041,12200,5922,5810,2901,15263,5718,3058,10737,16549,900,4300,7700,23851,700,400,600,13764,6.1,21.7,157.9,54,110.9,70.4,140.2,14500,39.3,30.1,259.3,154.9,87.6,35400,12300,5100,4807,3401,3375,6934,11584,5404,5298,6932,6559,18500,2400,12015,24863,6614,5582,37346,18729,20203,6959,6148,22800,6700,8500,45670,12100,9400,25700,9300,37.6,152.2,182.1,225.2,165.7,187.8,115.8,157.6,96.1,112.9,167,24.7,161.8,243.6,196.7,331.1,28.7,190.3,121,42538,13500,32800,3191,10000,43493,22054,23638,7600,3395,12368,46096,1300,6400,3300,4939,10200,8100,8905,9700,21971,4507,25317,4327,3662,9222,16646,4470,1600,20400,35000,29414,9900,5900,1500,3700,15300,20700,2600,13200,20600,5700,3200,6900,3600,16100,4700,69.9,48.7,211.2,14.6,56400,197.7,25.8,181.2,254.5,29,105.8,17.4,52600,277.7,83.4,25391,43.5,306.9,195.8,347.8,150.4,121.6,131.9,27900,13300,6000,26365,6280,169,5029,29902.5,30100,53100,8300,6825,22998,4042,15200,3390,5842,3978,15876,33132,3756,3008,28365,13900,17362,2800,33790,43352,33524,5400,2552,9100,37976,1474,32329.5,4600,5355,22444,3334,52500,4197,67124,990,4800,11900,20800,19200,48015,13000,18400,30600,46443,8356,9600,19100,12050,3000,23500,21440,22400,30146,23700,198,39.4,234.4,30,262,182.3,235.6,123.1,109,174.5,192.1,150.2,24,296.8,268.2,148.2,202.5,349.1,327.2,74.8,70.8,2.2,179.1,218.9,101.8,31.5,270.1,285.5,184.9,22851,279.2,95.3,17600,12000,15700,4680,7400,463,9541,22798,13841,997,8827,38098,1727,6300,2850,20673,15308,6842,6991,601,3399,33000,7936,44267,23381,37435,3913,10800,18347,48098,29416,1505,3596,23842,4146,2300,2962,506,2140,21400,2700,7591,19594,24266,8740,6136,25282,310,4407,36700,1400,6226,12245,32928,599,8414,24009,10562,1900,9500,12600,12800,3280,2200,4909,10609,31100,13534,8769,21800,33733,56300,59200,1800,19642,11800,11200,4892,19300,1700,130.9,188.7,29.7,246.1,9.8,155.4,172.3,132.4,177.8,191.8,190.9,94.5,189.3,60.5,112.6,285.9,354.7,90,132.5,22500,396,17.3,91.7,23,268.7,31.8,65.6
)),row.names = c(NA,-500L),class = "data.frame")

版权声明:本文内容由互联网用户自发贡献,该文观点与技术仅代表作者本人。本站仅提供信息存储空间服务,不拥有所有权,不承担相关法律责任。如发现本站有涉嫌侵权/违法违规的内容, 请发送邮件至 dio@foxmail.com 举报,一经查实,本站将立刻删除。

相关推荐


使用本地python环境可以成功执行 import pandas as pd import matplotlib.pyplot as plt # 设置字体 plt.rcParams[&#39;font.sans-serif&#39;] = [&#39;SimHei&#39;] # 能正确显示负号 p
错误1:Request method ‘DELETE‘ not supported 错误还原:controller层有一个接口,访问该接口时报错:Request method ‘DELETE‘ not supported 错误原因:没有接收到前端传入的参数,修改为如下 参考 错误2:cannot r
错误1:启动docker镜像时报错:Error response from daemon: driver failed programming external connectivity on endpoint quirky_allen 解决方法:重启docker -&gt; systemctl r
错误1:private field ‘xxx‘ is never assigned 按Altʾnter快捷键,选择第2项 参考:https://blog.csdn.net/shi_hong_fei_hei/article/details/88814070 错误2:启动时报错,不能找到主启动类 #
报错如下,通过源不能下载,最后警告pip需升级版本 Requirement already satisfied: pip in c:\users\ychen\appdata\local\programs\python\python310\lib\site-packages (22.0.4) Coll
错误1:maven打包报错 错误还原:使用maven打包项目时报错如下 [ERROR] Failed to execute goal org.apache.maven.plugins:maven-resources-plugin:3.2.0:resources (default-resources)
错误1:服务调用时报错 服务消费者模块assess通过openFeign调用服务提供者模块hires 如下为服务提供者模块hires的控制层接口 @RestController @RequestMapping(&quot;/hires&quot;) public class FeignControl
错误1:运行项目后报如下错误 解决方案 报错2:Failed to execute goal org.apache.maven.plugins:maven-compiler-plugin:3.8.1:compile (default-compile) on project sb 解决方案:在pom.
参考 错误原因 过滤器或拦截器在生效时,redisTemplate还没有注入 解决方案:在注入容器时就生效 @Component //项目运行时就注入Spring容器 public class RedisBean { @Resource private RedisTemplate&lt;String
使用vite构建项目报错 C:\Users\ychen\work&gt;npm init @vitejs/app @vitejs/create-app is deprecated, use npm init vite instead C:\Users\ychen\AppData\Local\npm-
参考1 参考2 解决方案 # 点击安装源 协议选择 http:// 路径填写 mirrors.aliyun.com/centos/8.3.2011/BaseOS/x86_64/os URL类型 软件库URL 其他路径 # 版本 7 mirrors.aliyun.com/centos/7/os/x86
报错1 [root@slave1 data_mocker]# kafka-console-consumer.sh --bootstrap-server slave1:9092 --topic topic_db [2023-12-19 18:31:12,770] WARN [Consumer clie
错误1 # 重写数据 hive (edu)&gt; insert overwrite table dwd_trade_cart_add_inc &gt; select data.id, &gt; data.user_id, &gt; data.course_id, &gt; date_format(
错误1 hive (edu)&gt; insert into huanhuan values(1,&#39;haoge&#39;); Query ID = root_20240110071417_fe1517ad-3607-41f4-bdcf-d00b98ac443e Total jobs = 1
报错1:执行到如下就不执行了,没有显示Successfully registered new MBean. [root@slave1 bin]# /usr/local/software/flume-1.9.0/bin/flume-ng agent -n a1 -c /usr/local/softwa
虚拟及没有启动任何服务器查看jps会显示jps,如果没有显示任何东西 [root@slave2 ~]# jps 9647 Jps 解决方案 # 进入/tmp查看 [root@slave1 dfs]# cd /tmp [root@slave1 tmp]# ll 总用量 48 drwxr-xr-x. 2
报错1 hive&gt; show databases; OK Failed with exception java.io.IOException:java.lang.RuntimeException: Error in configuring object Time taken: 0.474 se
报错1 [root@localhost ~]# vim -bash: vim: 未找到命令 安装vim yum -y install vim* # 查看是否安装成功 [root@hadoop01 hadoop]# rpm -qa |grep vim vim-X11-7.4.629-8.el7_9.x
修改hadoop配置 vi /usr/local/software/hadoop-2.9.2/etc/hadoop/yarn-site.xml # 添加如下 &lt;configuration&gt; &lt;property&gt; &lt;name&gt;yarn.nodemanager.res