Font Size: a A A

A Cognitive Study Of Network Craques Based On News Events

Posted on:2015-12-20Degree:MasterType:Thesis
Country:ChinaCandidate:M ZhangFull Text:PDF
GTID:2175330431471766Subject:Linguistics and Applied Linguistics
Abstract/Summary:PDF Full Text Request
The network catchwords which is based on news events is a new language phenomenongenerated in the current network environment.This kind of network catchwords is closelyrelated to our social life.Their scope and influence in constantly upgrading and expanding,some news events network buzzwords has spread from the network to penetrate into our dailylives. People through this kind of language to express their views and attitudes towards aparticular news event, reflecting the sentiments and opinions. In recent years, news eventsnetwork buzzwords has been appeared a blowout situation.In addition to its own characteristics,the effect of its user cannot be ignored.This article will study network catchwords which is based on news events. Through analysis thecollected corpus,we got some conclusions. In the first part,we defined what is networkcatchwords,and described the research background and significance of the topic, explained theorigin of the corpus and research method. In the second part,we summarized the characteristicsof network catchwords which is based on news events. And were classified network catchwordswhich is based on news events according to its characteristics, explores the influence of thislinguistic phenomenon. In the third part, we analysis of the mechanism of news events networkbuzzwords in the framework of Event-domain Cognitive Model.Analysis of the phenomenon ofmetonymy and metaphor. In the fourth part, we analysis the generalization of this kind oflanguage phenomenon in the framework of association and imagination. In the fifth part, weanalyzed the propagation mechanism of this language phenomenon under the principle ofself-negotiation.
Keywords/Search Tags:News events network catchwords, Metonymy, Metaphor, Meaning generalization
PDF Full Text Request
Related items