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ID:34155794
大小:3.56 MB
页数:47页
时间:2019-03-04
《基于优化bp神经网络的微博舆情预测模型-研究》由会员上传分享,免费在线阅读,更多相关内容在教育资源-天天文库。
1、AbstractWiththerapiddevelopmentofIntemettechnology,micro—bloghasbecomeanimportantpartofpeople’Slives.Publicopinioncausedbythemicro—blogattractsmoreandmorepeople’Sattention.Sincethemicro—bloginformation’Spropagationvelocityisquickly,spreadwidelyandarbitrary
2、natureofmicro—blog,SOtheinformationonthemicro-bloghastrueandfalse.Positiveandnegativemicro—blogpublicopinionwillhavedifferenteffectsonpeople’Slives,someofthenegativemicro—blogpublicopinionwillevenconstituteacrisis,thenaseriousimpactonpublicsafety.Therefore
3、,thestudyonpredictedmicro—blogpublicopinionhasapracticalsignificance.Predictedmicro—blogpublicopinion,wemustgetdatawhichCanbeexpressedmicro—blogpublicopinionfirstly.Thepaperusesthediscretetimeseriestodescribemicro—blogpublicopinion’Strends.Inthispaper,weus
4、eSinamicro-blogplatformforbackground,accordingthehotmicro—blogtopictextextraction,analysis,forecastmicro—blogpublicopinion.Gettimeseriesstep:one诵tllSinamicro—blogAPIinterface,accesstomicro—blogtogetmicro—blogtextinsometime;Second,accordingthecharacteristic
5、softhecorrespondingpretreatmentmicro—blogtext,usethemethodsofstatisticalmicro-blogtopicandfoundthatmicro—bloghottopic;Third,statisticalthenumberofrepliesandforwardingnumberofmicro—bloghottopicforsometime,andusethenumbertoconsistofpublicopinionpredictionmod
6、el’Sexperimentaldata.BPneuralnetworkCanbebetterfitthenonlinearvariationofmicro—blogpublicopinion’Stimeseries,whichcanbeusedtopredictthemicro—blogpublicopinion,buttherearesomelimitations:BPneuralnetwork’Slearningalgorithmhastheweaknessofforgettingthealready
7、learningsamples.Whenthereisnoiseinthesample,theremaycausepoorperformanceonB.Pneuralnetwork;BPneuralnetworkalsohasaslowspeedofconvergence,andeasytofallintolocalminima.Wedidtwotasks:First,changethenetwork’SstructuretoimproveBPneuralnetwork.BehindtheBPneuraln
8、etworkinputlayerneurons,weaddalayertostoretheinputlayer’Shistorydata.Whenthesampleshaveanoisedata,thelayercandelaynetworkparameterstoimprovetheperformanceofBPneuralnetwork.ThesecondistouseGSAtooptimizethenetw
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