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微创玻璃体切除术中及术后脉络膜脱离的原因及治疗 被引量:5
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作者 赵彭彭 刘楠 +2 位作者 程岩 王爽 赵劲松 《国际眼科杂志》 CAS 北大核心 2018年第1期76-79,共4页
无缝线微创玻璃体切除术的应用已有10余年,高速切割和精细器械的应用有效治疗严重的玻璃体视网膜疾病,但术中及术后的并发症也严重影响视力恢复,其中脉络膜脱离是微创玻璃体切除术中及术后比较少见的并发症,可继发青光眼、视力下降等。
关键词 微创玻璃体切除术 脉络膜脱离 并发症
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高度近视并发性白内障术后屈光误差影响因素的研究进展 被引量:7
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作者 蔡金彪 王剑锋 +2 位作者 赵芃芃 许澈 李娟 《国际眼科杂志》 CAS 北大核心 2021年第10期1720-1723,共4页
高度近视是我国乃至全世界主要致盲性疾病之一,而高度近视并发性白内障更是一种高致盲风险的复杂性白内障,目前手术是唯一的治疗手段,由于高度近视可导致眼内一系列复杂改变,相比正常眼轴眼而言,术后更易产生屈光误差以及屈光漂移,本文... 高度近视是我国乃至全世界主要致盲性疾病之一,而高度近视并发性白内障更是一种高致盲风险的复杂性白内障,目前手术是唯一的治疗手段,由于高度近视可导致眼内一系列复杂改变,相比正常眼轴眼而言,术后更易产生屈光误差以及屈光漂移,本文就术前生物学测量准确性、人工晶状体计算公式的选择、有效人工晶状体位置变化等几部分对高度近视并发性白内障术后屈光误差的影响因素作一综述。 展开更多
关键词 高度近视 白内障 屈光误差 人工晶状体计算公式
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Towards Effective Author Name Disambiguation by Hybrid Attention
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作者 Qian Zhou Wei Chen +4 位作者 peng-peng zhao An Liu Jia-Jie Xu Jian-Feng Qu Lei zhao 《Journal of Computer Science & Technology》 SCIE EI CSCD 2024年第4期929-950,共22页
Author name disambiguation(AND)is a central task in academic search,which has received more attention recently accompanied by the increase of authors and academic publications.To tackle the AND problem,existing studie... Author name disambiguation(AND)is a central task in academic search,which has received more attention recently accompanied by the increase of authors and academic publications.To tackle the AND problem,existing studies have proposed various approaches based on different types of information,such as raw document features(e.g.,co-authors,titles,and keywords),the fusion feature(e.g.,a hybrid publication embedding based on multiple raw document features),the local structural information(e.g.,a publication's neighborhood information on a graph),and the global structural information(e.g.,interactive information between a node and others on a graph).However,there has been no work taking all the above-mentioned information into account and taking full advantage of the contributions of each raw document feature for the AND problem so far.To fill the gap,we propose a novel framework named EAND(Towards Effective Author Name Disambiguation by Hybrid Attention).Specifically,we design a novel feature extraction model,which consists of three hybrid attention mechanism layers,to extract key information from the global structural information and the local structural information that are generated from six similarity graphs constructed based on different similarity coefficients,raw document features,and the fusion feature.Each hybrid attention mechanism layer contains three key modules:a local structural perception,a global structural perception,and a feature extractor.Additionally,the mean absolute error function in the joint loss function is used to introduce the structural information loss of the vector space.Experimental results on two real-world datasets demonstrate that EAND achieves superior performance,outperforming state-of-the-art methods by at least+2.74%in terms of the micro-F1 score and+3.31%in terms of the macro-F1 score. 展开更多
关键词 author name disambiguation multiple-feature information hybrid attention pruning strategy structural information loss of vector space
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Meta-Learning Based Few-Shot Link Prediction for Emerging Knowledge Graph
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作者 Yu-Feng Zhang Wei Chen +3 位作者 peng-peng zhao Jia-Jie Xu Jun-Hua Fang Lei zhao 《Journal of Computer Science & Technology》 SCIE EI CSCD 2024年第5期1058-1077,共20页
Inductive knowledge graph embedding(KGE)aims to embed unseen entities in emerging knowledge graphs(KGs).The major recent studies of inductive KGE embed unseen entities by aggregating information from their neighboring... Inductive knowledge graph embedding(KGE)aims to embed unseen entities in emerging knowledge graphs(KGs).The major recent studies of inductive KGE embed unseen entities by aggregating information from their neighboring entities and relations with graph neural networks(GNNs).However,these methods rely on the existing neighbors of unseen entities and suffer from two common problems:data sparsity and feature smoothing.Firstly,the data sparsity problem means unseen entities usually emerge with few triplets containing insufficient information.Secondly,the effectiveness of the features extracted from original KGs will degrade when repeatedly propagating these features to represent unseen entities in emerging KGs,which is termed feature smoothing problem.To tackle the two problems,we propose a novel model entitled Meta-Learning Based Memory Graph Convolutional Network(MMGCN)consisting of three different components:1)the two-layer information transforming module(TITM)developed to effectively transform information from original KGs to emerging KGs;2)the hyper-relation feature initializing module(HFIM)proposed to extract type-level features shared between KGs and obtain a coarse-grained representation for each entity with these features;and 3)the meta-learning training module(MTM)designed to simulate the few-shot emerging KGs and train the model in a meta-learning framework.The extensive experiments conducted on the few-shot link prediction task for emerging KGs demonstrate the superiority of our proposed model MMGCN compared with state-of-the-art methods. 展开更多
关键词 knowledge graph graph representation learning few-shot learning inductive link prediction
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A Generative Model Approach for Geo-Social Group Recommendation 被引量:2
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作者 peng-peng zhao Hai-Feng Zhu +5 位作者 Yanchi Liu Zi-Ting Zhou Zhi-Xu Li Jia-Jie Xu Lei zhao Victor S. Sheng 《Journal of Computer Science & Technology》 SCIE EI CSCD 2018年第4期727-738,共12页
With the development and prevalence of online social networks, there is an obvious tendency that people are willing to attend and share group activities with friends or acquaintances. This motivates the study on group... With the development and prevalence of online social networks, there is an obvious tendency that people are willing to attend and share group activities with friends or acquaintances. This motivates the study on group recommendation, which aims to meet the needs of a group of users, instead of only individual users. However, how to aggregate different preferences of different group members is still a challenging problem: 1) the choice of a member in a group is influenced by various factors, e.g., personal preference, group topic, and social relationship; 2) users have different influences when in diffe- rent groups. In this paper, we propose a generative geo-social group recommendation model (GSGR) to recommend points of interest (POIs) for groups. Specifically, GSGR well models the personal preference impacted by geographical information, group topics, and social influence for recommendation. Moreover, when making recommendations, GSGR aggregates the preferences of group members with different weights to estimate the preference score of a group to a POI. Experimental results on two datasets show that GSGR is effective in group recommendation and outperforms the state-of-the-art methods. 展开更多
关键词 group recommendation topic model social network
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ATLRec:An Attentional Adversarial Transfer Learning Network for Cross-Domain Recommendation 被引量:1
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作者 Ying Li Jia-Jie Xu +3 位作者 peng-peng zhao Jun-Hua Fang Wei Chen Lei zhao 《Journal of Computer Science & Technology》 SCIE EI CSCD 2020年第4期794-808,共15页
Entity linking is a new technique in recommender systems to link users'interaction behaviors in different domains,for the purpose of improving the performance of the recommendation task.Linking-based cross-domain ... Entity linking is a new technique in recommender systems to link users'interaction behaviors in different domains,for the purpose of improving the performance of the recommendation task.Linking-based cross-domain recom-mendation aims to alleviate the data sparse problem by utilizing the domain-sharable knowledge from auxiliary domains.However,existing methods fail to prevent domain-specific features to be transferred,resulting in suboptimal results.In this paper,we aim to address this issue by proposing an adversarial transfer learning based model ATLRec,which effec-tively captures domain-sharable features for cross-domain recommendation.In ATLRec,we leverage adversarial learning to generate representations of user-item interactions in both the source and the target domains,such that the discrimina-tor cannot identify which domain they belong to,for the purpose of obtaining domain-sharable features.Meanwhile each domain learns its domain-specific features by a private feature extractor.The recommendation of each domain considers both domain-specific and domain-sharable features.We further adopt an attention mechanism to learn item latent factors of both domains by utilizing the shared users with interaction history,so that the representations of all items can be learned sufficiently in a shared space,even when few or even no items are shared by different domains.By this method,we can represent all items from the source and the target domains in a shared space,for the purpose of better linking items in different domains and capturing cross-domain item-item relatedness to facilitate the learning of domain-sharable knowledge.The proposed model is evaluated on various real-world datasets and demonstrated to outperform several state-of-the-art single-domain and cross-domain recommendation methods in terms of recommendation accuracy. 展开更多
关键词 adversarial TRANSFER LEARNING ATTENTION mechanism cross-domain RECOMMENDATION ENTITY LINKING
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Scalable and Adaptive Joins for Tra jectory Data in Distributed Stream System
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作者 Jun-Hua Fang peng-peng zhao +2 位作者 An Liu Zhi-Xu Li Lei zhao 《Journal of Computer Science & Technology》 SCIE EI CSCD 2019年第4期747-761,共15页
As a fundamental operation in LBS(location-based services),the trajectory similarity of moving objects has been extensively studied in recent years.However,due to the increasing volume of moving object trajectories an... As a fundamental operation in LBS(location-based services),the trajectory similarity of moving objects has been extensively studied in recent years.However,due to the increasing volume of moving object trajectories and the demand of interactive query performance,the trajectory similarity queries are now required to be processed on massive datasets in a real-time manner.Existing work has proposed distributed or parallel solutions to enable large-scale trajectory similarity processing.However,those techniques cannot be directly adapted to the real-time scenario as it is likely to generate poor balancing performance when workload variance occurs on the incoming trajectory stream.In this paper,we propose a new workload partitioning framework,ART(Adaptive Framework for Real-Time Trajectory Similarity),which introduces practical algorithms to support dynamic workload assignment for RTTS(real-time trajectory similarity).Our proposal includes a processing model tailored for the RTTS scenario,a load balancing framework to maximize throughput,and an adaptive data partition manner designed to cut off unnecessary network cost.Based on this,our model can handle the large-scale trajectory similarity in an on-line scenario,which achieves scalability,effectiveness,and efficiency by a single shot.Empirical studies on synthetic data and real-world stream applications validate the usefulness of our proposal and prove the huge advantage of our approach over state-of-the-art solutions in the literature. 展开更多
关键词 real-time DATA processing DISTRIBUTED computing trajectory SIMILARITY load balancing
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Enriching Context Information for Entity Linking with Web Data
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作者 Yi-Ting Wang Jie Shen +6 位作者 Zhi-Xu Li Qiang Yang An Liu peng-peng zhao Jia-Jie Xu Lei zhao Xun-Jie Yang 《Journal of Computer Science & Technology》 SCIE EI CSCD 2020年第4期724-738,共15页
Entity linking(EL)is the task of determining the identity of textual entity mentions given a predefined knowledge base(KB).Plenty of existing efforts have been made on this task using either"local"informatio... Entity linking(EL)is the task of determining the identity of textual entity mentions given a predefined knowledge base(KB).Plenty of existing efforts have been made on this task using either"local"information(contextual information of the mention in the text),or"global"information(relations among candidate entities).However,either local or global information might be insufficient especially when the given text is short.To get richer local and global information for entity linking,we propose to enrich the context information for mentions by getting extra contexts from the web through web search engines(WSE).Based on the intuition above,two novel attempts are made.The first one adds web-searched results into an embedding-based method to expand the mention's local information,where we try two different methods to help generate high-quality web contexts:one is to apply the attention mechanism and the other is to use the abstract extraction method.The second one uses the web contexts to extend the global information,i.e.,finding and utilizing more extra relevant mentions from the web contexts with a graph-based model.Finally,we combine the two models we propose to use both extended local and global information from the extra web contexts.Our empirical study based on six real-world datasets shows that using extra web contexts to extend the local and the global information could effectively improve the F1 score of entity linking. 展开更多
关键词 ENTITY LINKING web search engine (WSE) attention mechanism ABSTRACT extraction
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