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趣说“news”
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作者 任民 《英语辅导(初三年级)》 2000年第10期31-31,共1页
词源学家认为,news是由north(北)、east(东)、west(西)、south(南)这四个词的首字母组成。据说,报纸出现之前,人们关心的新闻通常是被张贴在公共场所的专栏上。专栏分N、E、W和S四个版,北方的事记在N栏,东部来得的消息登在E栏,依... 词源学家认为,news是由north(北)、east(东)、west(西)、south(南)这四个词的首字母组成。据说,报纸出现之前,人们关心的新闻通常是被张贴在公共场所的专栏上。专栏分N、E、W和S四个版,北方的事记在N栏,东部来得的消息登在E栏,依次类推。在有了报纸之后,编辑人员就在报纸的报头上印着NEWS四个大字,表示消息来自东西南北、四面八方,所以渐渐地便有了news这个词。 展开更多
关键词 报纸 专栏 消息 报头 编辑人员 新闻 news “new 词源学 类推
全文增补中
网络新媒体视阈下客家议题在日传播特征分析——基于日本Google News的考察
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作者 李晓霞 周巍 《肇庆学院学报》 2024年第1期116-123,共8页
以日本Google News中的客家相关日文报道为语料,通过文本挖掘工具KH Coder进行文本数据挖掘,发现日本网络新闻媒体的客家议题日文报道具有分布零散性及以图片报道为主的特点。报道关注的客家区域主要涉及台湾地区、福建、香港地区、广... 以日本Google News中的客家相关日文报道为语料,通过文本挖掘工具KH Coder进行文本数据挖掘,发现日本网络新闻媒体的客家议题日文报道具有分布零散性及以图片报道为主的特点。报道关注的客家区域主要涉及台湾地区、福建、香港地区、广东等地,其中,台湾地区的客家关注度最高。报道聚焦客家的观光旅游、产业振兴、客家书籍出版等相关内容,形成了客家传统建筑类、台湾地区客家文化交流类、客家文学作品推介类、客家观光旅游类等四大主要议题。本文提出要充分运用Google News等网络新媒体强大的技术功能和传播优势加大客家文化的传播力度。 展开更多
关键词 网络新媒体 客家文化 日本传播 Google news KH Coder
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Improving Diversity with Multi-Loss Adversarial Training in Personalized News Recommendation
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作者 Ruijin Xue Shuang Feng Qi Wang 《Computers, Materials & Continua》 SCIE EI 2024年第8期3107-3122,共16页
Users’interests are often diverse and multi-grained,with their underlying intents even more so.Effectively captur-ing users’interests and uncovering the relationships between diverse interests are key to news recomm... Users’interests are often diverse and multi-grained,with their underlying intents even more so.Effectively captur-ing users’interests and uncovering the relationships between diverse interests are key to news recommendation.Meanwhile,diversity is an important metric for evaluating news recommendation algorithms,as users tend to reject excessive homogeneous information in their recommendation lists.However,recommendation models themselves lack diversity awareness,making it challenging to achieve a good balance between the accuracy and diversity of news recommendations.In this paper,we propose a news recommendation algorithm that achieves good performance in both accuracy and diversity.Unlike most existing works that solely optimize accuracy or employ more features to meet diversity,the proposed algorithm leverages the diversity-aware capability of the model.First,we introduce an augmented user model to fully capture user intent and the behavioral guidance they might undergo as a result.Specifically,we focus on the relationship between the original clicked news and the augmented clicked news.Moreover,we propose an effective adversarial training method for diversity(AT4D),which is a pluggable component that can enhance both the accuracy and diversity of news recommendation results.Extensive experiments on real-world datasets confirm the efficacy of the proposed algorithm in improving both the accuracy and diversity of news recommendations. 展开更多
关键词 news recommendation DIVERSITY ACCURACY data augmentation
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Fake News Detection Based on Text-Modal Dominance and Fusing Multiple Multi-Model Clues
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作者 Li fang Fu Huanxin Peng +1 位作者 Changjin Ma Yuhan Liu 《Computers, Materials & Continua》 SCIE EI 2024年第3期4399-4416,共18页
In recent years,how to efficiently and accurately identify multi-model fake news has become more challenging.First,multi-model data provides more evidence but not all are equally important.Secondly,social structure in... In recent years,how to efficiently and accurately identify multi-model fake news has become more challenging.First,multi-model data provides more evidence but not all are equally important.Secondly,social structure information has proven to be effective in fake news detection and how to combine it while reducing the noise information is critical.Unfortunately,existing approaches fail to handle these problems.This paper proposes a multi-model fake news detection framework based on Tex-modal Dominance and fusing Multiple Multi-model Cues(TD-MMC),which utilizes three valuable multi-model clues:text-model importance,text-image complementary,and text-image inconsistency.TD-MMC is dominated by textural content and assisted by image information while using social network information to enhance text representation.To reduce the irrelevant social structure’s information interference,we use a unidirectional cross-modal attention mechanism to selectively learn the social structure’s features.A cross-modal attention mechanism is adopted to obtain text-image cross-modal features while retaining textual features to reduce the loss of important information.In addition,TD-MMC employs a new multi-model loss to improve the model’s generalization ability.Extensive experiments have been conducted on two public real-world English and Chinese datasets,and the results show that our proposed model outperforms the state-of-the-art methods on classification evaluation metrics. 展开更多
关键词 Fake news detection cross-modal attention mechanism multi-modal fusion social network transfer learning
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A Model for Detecting Fake News by Integrating Domain-Specific Emotional and Semantic Features
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作者 Wen Jiang Mingshu Zhang +4 位作者 Xu’an Wang Wei Bin Xiong Zhang Kelan Ren Facheng Yan 《Computers, Materials & Continua》 SCIE EI 2024年第8期2161-2179,共19页
With the rapid spread of Internet information and the spread of fake news,the detection of fake news becomes more and more important.Traditional detection methods often rely on a single emotional or semantic feature t... With the rapid spread of Internet information and the spread of fake news,the detection of fake news becomes more and more important.Traditional detection methods often rely on a single emotional or semantic feature to identify fake news,but these methods have limitations when dealing with news in specific domains.In order to solve the problem of weak feature correlation between data from different domains,a model for detecting fake news by integrating domain-specific emotional and semantic features is proposed.This method makes full use of the attention mechanism,grasps the correlation between different features,and effectively improves the effect of feature fusion.The algorithm first extracts the semantic features of news text through the Bi-LSTM(Bidirectional Long Short-Term Memory)layer to capture the contextual relevance of news text.Senta-BiLSTM is then used to extract emotional features and predict the probability of positive and negative emotions in the text.It then uses domain features as an enhancement feature and attention mechanism to fully capture more fine-grained emotional features associated with that domain.Finally,the fusion features are taken as the input of the fake news detection classifier,combined with the multi-task representation of information,and the MLP and Softmax functions are used for classification.The experimental results show that on the Chinese dataset Weibo21,the F1 value of this model is 0.958,4.9% higher than that of the sub-optimal model;on the English dataset FakeNewsNet,the F1 value of the detection result of this model is 0.845,1.8% higher than that of the sub-optimal model,which is advanced and feasible. 展开更多
关键词 Fake news detection domain-related emotional features semantic features feature fusion
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Multimodal Social Media Fake News Detection Based on Similarity Inference and Adversarial Networks
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作者 Fangfang Shan Huifang Sun Mengyi Wang 《Computers, Materials & Continua》 SCIE EI 2024年第4期581-605,共25页
As social networks become increasingly complex, contemporary fake news often includes textual descriptionsof events accompanied by corresponding images or videos. Fake news in multiple modalities is more likely tocrea... As social networks become increasingly complex, contemporary fake news often includes textual descriptionsof events accompanied by corresponding images or videos. Fake news in multiple modalities is more likely tocreate a misleading perception among users. While early research primarily focused on text-based features forfake news detection mechanisms, there has been relatively limited exploration of learning shared representationsin multimodal (text and visual) contexts. To address these limitations, this paper introduces a multimodal modelfor detecting fake news, which relies on similarity reasoning and adversarial networks. The model employsBidirectional Encoder Representation from Transformers (BERT) and Text Convolutional Neural Network (Text-CNN) for extracting textual features while utilizing the pre-trained Visual Geometry Group 19-layer (VGG-19) toextract visual features. Subsequently, the model establishes similarity representations between the textual featuresextracted by Text-CNN and visual features through similarity learning and reasoning. Finally, these features arefused to enhance the accuracy of fake news detection, and adversarial networks have been employed to investigatethe relationship between fake news and events. This paper validates the proposed model using publicly availablemultimodal datasets from Weibo and Twitter. Experimental results demonstrate that our proposed approachachieves superior performance on Twitter, with an accuracy of 86%, surpassing traditional unimodalmodalmodelsand existing multimodal models. In contrast, the overall better performance of our model on the Weibo datasetsurpasses the benchmark models across multiple metrics. The application of similarity reasoning and adversarialnetworks in multimodal fake news detection significantly enhances detection effectiveness in this paper. However,current research is limited to the fusion of only text and image modalities. Future research directions should aimto further integrate features fromadditionalmodalities to comprehensively represent themultifaceted informationof fake news. 展开更多
关键词 Fake news detection attention mechanism image-text similarity multimodal feature fusion
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LKPNR: Large Language Models and Knowledge Graph for Personalized News Recommendation Framework
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作者 Hao Chen Runfeng Xie +4 位作者 Xiangyang Cui Zhou Yan Xin Wang Zhanwei Xuan Kai Zhang 《Computers, Materials & Continua》 SCIE EI 2024年第6期4283-4296,共14页
Accurately recommending candidate news to users is a basic challenge of personalized news recommendation systems.Traditional methods are usually difficult to learn and acquire complex semantic information in news text... Accurately recommending candidate news to users is a basic challenge of personalized news recommendation systems.Traditional methods are usually difficult to learn and acquire complex semantic information in news texts,resulting in unsatisfactory recommendation results.Besides,these traditional methods are more friendly to active users with rich historical behaviors.However,they can not effectively solve the long tail problem of inactive users.To address these issues,this research presents a novel general framework that combines Large Language Models(LLM)and Knowledge Graphs(KG)into traditional methods.To learn the contextual information of news text,we use LLMs’powerful text understanding ability to generate news representations with rich semantic information,and then,the generated news representations are used to enhance the news encoding in traditional methods.In addition,multi-hops relationship of news entities is mined and the structural information of news is encoded using KG,thus alleviating the challenge of long-tail distribution.Experimental results demonstrate that compared with various traditional models,on evaluation indicators such as AUC,MRR,nDCG@5 and nDCG@10,the framework significantly improves the recommendation performance.The successful integration of LLM and KG in our framework has established a feasible way for achieving more accurate personalized news recommendation.Our code is available at https://github.com/Xuan-ZW/LKPNR. 展开更多
关键词 Large language models news recommendation knowledge graphs(KG)
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TOP 10 NEWS STORIES ON 2023 LANCANG-MEKONG COOPERATION
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作者 Huang Jiangqin 《China Report ASEAN》 2024年第2期32-39,共8页
Linked by mountains and rivers,China and the five other Lancang-Mekong countries share cultural similarities and are as close as a big family.The year 2023 marked the 10th anniversary of the Belt and Road Initiative(B... Linked by mountains and rivers,China and the five other Lancang-Mekong countries share cultural similarities and are as close as a big family.The year 2023 marked the 10th anniversary of the Belt and Road Initiative(BRI),the 10th anniversary of the vision of building a community with a shared future for mankind,and the 10th anniversary of the principle of amity,sincerity. 展开更多
关键词 MOUNTAINS ANNIVERSARY news
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NEWS
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《China Report ASEAN》 2024年第4期6-9,共4页
The Chinese economy has maintained good recovery momentum,beginning the year on a solid note as the country’s macro policies took effect,official data showed on March 18.Given its solid performance in January and Feb... The Chinese economy has maintained good recovery momentum,beginning the year on a solid note as the country’s macro policies took effect,official data showed on March 18.Given its solid performance in January and February,China has the conditions and support to achieve its full-year growth target of around 5 percent for 2024 through enhanced efforts,the National Bureau of Statistics(NBS)spokesperson Liu Aihua said. 展开更多
关键词 maintained MOMENTUM news
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On the“News Exception”in Personal Information Protection
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作者 张文亮 刘雨祺 LI Donglin 《The Journal of Human Rights》 2024年第1期89-110,共22页
Protection of personal information is a significant issue in the construction of legal systems in various countries in the information age.Introducing a balanced approach for protecting personal information is an impo... Protection of personal information is a significant issue in the construction of legal systems in various countries in the information age.Introducing a balanced approach for protecting personal information is an important goal of basic human rights protection and data legislation.Personal information protection involves comprehensive considerations among various values,and the balanced structure between personal information rights and other rights systems has become the key to legislation on personal information protection.The“news exception”is a prominent example representing the balanced structure of personal information protection.As a societal instrument,news not only pursues commercial value but also advocates freedom of expression and public value.There exists a natural tension between news and personal information protection.The“news exception”of the balanced structure has become a fundamental requirement and important connotation for constructing a system for protecting personal information.The balanced structure of the“news exception”requires a reasonable definition of the concept and purpose of news,and both the self-discipline within the news industry and the judicial intervention are necessary factors.China has preliminarily completed the top-level legislative design of personal information protection through laws such as the Civil Code of the People’s Republic of China(PRC)and the Personal Information Protection Law of the People’s Republic of China.However,the balanced mechanism of the“news exception”has not yet been fully established in China.A“news exception”based on the ideas of balance and the improvement of the institutional system is the fundamental principle for the development of China’s personal information protection system. 展开更多
关键词 personal information news exception Civil Code of the PRC
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NEWS ROUNDUP
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《ChinAfrica》 2024年第8期8-10,共3页
Exhibition on Ancient Egyptian Civilisation Opens A grand exhibition on the ancient Egyptian civilisation,the largest of its kind held outside Egypt over the past 20 years,opened on 17 July in Shanghai.
关键词 OUTSIDE news EXHIBITION
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WORLD NEWS
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《ChinAfrica》 2024年第8期12-13,共2页
DENMARK A tourist looks out at icebergs in an ice bay in Greenland on 15 July.FRANCE An Olympic Torch Relay event is held in Paris on 14 July on the occasion of the Bastille Day,the French national day.
关键词 TORCH news TOURIST
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NEWS ROUNDUP
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《ChinAfrica》 2024年第5期8-10,共3页
Boosting Grain Output China has initiated a new round of action to significantly increase its grain output,in the latest e"ort to ensure food security.
关键词 initiated news GRAIN
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News Roundup
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《ChinAfrica》 2024年第7期8-10,共3页
SUMMARIES OF TOP NEWS STORIES Ramping Up Public Health Literacy China’s National Health Commission(NHC)announced a three-year campaign launched this month to significantly improve public health literacy.The initiativ... SUMMARIES OF TOP NEWS STORIES Ramping Up Public Health Literacy China’s National Health Commission(NHC)announced a three-year campaign launched this month to significantly improve public health literacy.The initiative,co-organised with the National Administration of Disease Control and Prevention and the National Administration of Traditional Chinese Medicine,aims to empower citizens with essential health knowledge and practices. 展开更多
关键词 CAMPAIGN news KNOWLEDGE
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WORLD NEWS
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《ChinAfrica》 2024年第9期12-13,共2页
KYRGYZSTAN A man and a golden eagle participate in a raptor festival at a yurt camp on 10 August.FRANCE The opening ceremony of the Paris Olympics is held on 26 July.
关键词 GOLDEN CEREMONY news
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基于NEWS的急诊早期预警系统的构建及临床应用研究
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作者 陈秋菊 董珊 +3 位作者 陈雁 袁玲 罗彩凤 朱欢欢 《护理管理杂志》 CSCD 2023年第6期413-417,共5页
目的 探讨基于NEWS构建急诊早期预警系统的实践与效果。方法 通过文献研究及Delphi法制定基于NEWS的急诊患者分级预警及干预方案,并构建急诊早期预警信息系统进行临床应用。采用类实验研究方法,选取南京市某三级甲等综合性医院急诊室202... 目的 探讨基于NEWS构建急诊早期预警系统的实践与效果。方法 通过文献研究及Delphi法制定基于NEWS的急诊患者分级预警及干预方案,并构建急诊早期预警信息系统进行临床应用。采用类实验研究方法,选取南京市某三级甲等综合性医院急诊室2020年3月至5月符合纳入标准的所有急诊留观及抢救患者1 131例为干预组,选取运行前1年同期即2019年3月至5月符合纳入标准的所有急诊留观及抢救患者1 005例为对照组,两组患者均按照分级护理制度要求及急诊专科护理常规进行护理,干预组在此基础上应用急诊早期预警系统进行干预。结果 干预组生命体征测量频率、抢救成功率显著高于对照组,护理不良事件发生率显著低于对照组,急诊医护人员安全态度的6个不同维度均有改善,差异有统计学意义(P<0.05)。结论 急诊早期预警系统提高了医务人员的安全态度,减少了护理不良事件的发生,提高了急诊患者的生命体征测量频次和抢救成功率,保障了患者预后及安全。 展开更多
关键词 news 急诊 早期预警系统 信息化 护理
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Fake News Detection Based on Multimodal Inputs 被引量:1
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作者 Zhiping Liang 《Computers, Materials & Continua》 SCIE EI 2023年第5期4519-4534,共16页
In view of the various adverse effects,fake news detection has become an extremely important task.So far,many detection methods have been proposed,but these methods still have some limitations.For example,only two ind... In view of the various adverse effects,fake news detection has become an extremely important task.So far,many detection methods have been proposed,but these methods still have some limitations.For example,only two independently encoded unimodal information are concatenated together,but not integrated with multimodal information to complete the complementary information,and to obtain the correlated information in the news content.This simple fusion approach may lead to the omission of some information and bring some interference to the model.To solve the above problems,this paper proposes the FakeNewsDetectionmodel based on BLIP(FNDB).First,the XLNet and VGG-19 based feature extractors are used to extract textual and visual feature representation respectively,and BLIP based multimodal feature extractor to obtain multimodal feature representation in news content.Then,the feature fusion layer will fuse these features with the help of the cross-modal attention module to promote various modal feature representations for information complementation.The fake news detector uses these fused features to identify the input content,and finally complete fake news detection.Based on this design,FNDB can extract as much information as possible from the news content and fuse the information between multiple modalities effectively.The fake news detector in the FNDB can also learn more information to achieve better performance.The verification experiments on Weibo and Gossipcop,two widely used real-world datasets,show that FNDB is 4.4%and 0.6%higher in accuracy than the state-of-theart fake news detection methods,respectively. 展开更多
关键词 Natural language processing fake news detection machine learning text classification
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Hunter Prey Optimization with Hybrid Deep Learning for Fake News Detection on Arabic Corpus 被引量:1
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作者 Hala J.Alshahrani Abdulkhaleq Q.A.Hassan +5 位作者 Khaled Tarmissi Amal S.Mehanna Abdelwahed Motwakel Ishfaq Yaseen Amgad Atta Abdelmageed Mohamed I.Eldesouki 《Computers, Materials & Continua》 SCIE EI 2023年第5期4255-4272,共18页
Nowadays,the usage of socialmedia platforms is rapidly increasing,and rumours or false information are also rising,especially among Arab nations.This false information is harmful to society and individuals.Blocking an... Nowadays,the usage of socialmedia platforms is rapidly increasing,and rumours or false information are also rising,especially among Arab nations.This false information is harmful to society and individuals.Blocking and detecting the spread of fake news in Arabic becomes critical.Several artificial intelligence(AI)methods,including contemporary transformer techniques,BERT,were used to detect fake news.Thus,fake news in Arabic is identified by utilizing AI approaches.This article develops a new hunterprey optimization with hybrid deep learning-based fake news detection(HPOHDL-FND)model on the Arabic corpus.The HPOHDL-FND technique undergoes extensive data pre-processing steps to transform the input data into a useful format.Besides,the HPOHDL-FND technique utilizes long-term memory with a recurrent neural network(LSTM-RNN)model for fake news detection and classification.Finally,hunter prey optimization(HPO)algorithm is exploited for optimal modification of the hyperparameters related to the LSTM-RNN model.The performance validation of the HPOHDL-FND technique is tested using two Arabic datasets.The outcomes exemplified better performance over the other existing techniques with maximum accuracy of 96.57%and 93.53%on Covid19Fakes and satirical datasets,respectively. 展开更多
关键词 Arabic corpus fake news detection deep learning hunter prey optimizer classification model
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简版NEWS在识别急诊科抢救室老年病人死亡风险中的应用
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作者 李乃发 石新莉 +1 位作者 高圆 许红璐 《护理研究》 北大核心 2023年第2期340-342,共3页
目的:分析简版国家早期预警评分(NEWS)识别急诊科抢救室老年病人入院30 d内死亡风险的效能。方法:选择2019年1月—2020年12月深圳市某三级甲等医院急诊科抢救室收治的1184例老年病人作为研究对象。收集急诊科抢救室收治的老年病人入急... 目的:分析简版国家早期预警评分(NEWS)识别急诊科抢救室老年病人入院30 d内死亡风险的效能。方法:选择2019年1月—2020年12月深圳市某三级甲等医院急诊科抢救室收治的1184例老年病人作为研究对象。收集急诊科抢救室收治的老年病人入急诊科抢救室时的体温、心率、呼吸频率、血压、意识状态、血氧饱和度数据及入急诊科抢救室的主要诊断、入院30 d内的预后结局,通过模型区分度、校准度分析简版NEWS在识别急诊科抢救室老年人入院30 d内死亡的效能。结果:简版NEWS、NEWS及改良早期预警评分(MEWS)预测急诊科抢救室老年人入院30 d内死亡的受试者工作特征曲线下面积(AUC)分别为0.847,0.842及0.793,Brier评分分别为0.0450,0.0455及0.0478。当简版NEWS得分>3.5分时,病人30 d内死亡风险为13.7%;当简版NEWS得分<3.5分,病人30 d内死亡风险为1.5%。结论:简版NEWS的操作更简捷,在急诊科抢救室老年病人入院30 d内死亡风险评估中有良好的区分度及校准度。 展开更多
关键词 国家早期预警评分 news 急诊 老年病人 死亡风险 护理
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Build neural network models to identify and correct news headlines exaggerating obesity-related scientific findings
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作者 Ruopeng An Quinlan Batcheller +1 位作者 Junjie Wang Yuyi Yang 《Journal of Data and Information Science》 CSCD 2023年第3期88-97,共10页
Purpose:Media exaggerations of health research may confuse readers’understanding,erode public trust in science and medicine,and cause disease mismanagement.This study built artificial intelligence(AI)models to automa... Purpose:Media exaggerations of health research may confuse readers’understanding,erode public trust in science and medicine,and cause disease mismanagement.This study built artificial intelligence(AI)models to automatically identify and correct news headlines exaggerating obesity-related research findings.Design/methodology/approach:We searched popular digital media outlets to collect 523 headlines exaggerating obesity-related research findings.The reasons for exaggerations include:inferring causality from observational studies,inferring human outcomes from animal research,inferring distant/end outcomes(e.g.,obesity)from immediate/intermediate outcomes(e.g.,calorie intake),and generalizing findings to the population from a subgroup or convenience sample.Each headline was paired with the title and abstract of the peer-reviewed journal publication covered by the news article.We drafted an exaggeration-free counterpart for each original headline and fined-tuned a BERT model to differentiate between them.We further fine-tuned three generative language models-BART,PEGASUS,and T5 to autogenerate exaggeration-free headlines based on a journal publication’s title and abstract.Model performance was evaluated using the ROUGE metrics by comparing model-generated headlines with journal publication titles.Findings:The fine-tuned BERT model achieved 92.5%accuracy in differentiating between exaggeration-free and original headlines.Baseline ROUGE scores averaged 0.311 for ROUGE-1,0.113 for ROUGE-2,0.253 for ROUGE-L,and 0.253 ROUGE-Lsum.PEGASUS,T5,and BART all outperformed the baseline.The best-performing BART model attained 0.447 for ROUGE-1,0.221 for ROUGE-2,0.402 for ROUGE-L,and 0.402 for ROUGE-Lsum.Originality/value:This study demonstrated the feasibility of leveraging AI to automatically identify and correct news headlines exaggerating obesity-related research findings. 展开更多
关键词 Artificial intelligence Deep neural networks news Headlines EXAGGERATION OBESITY
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