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内部出版物
Elsevier电子期刊(35826)
在“
Elsevier电子期刊
”中,
命中:
35,826
条,耗时:小于0.01 秒
在所有数据库中总计命中:
35,826
条
1.
Experts community memory for entity
similarity
functions recommendation
作者:
Seung Hwan Ryu
;
deepryu@gmail.com" class="auth_mail" title="E-mail the corresponding author
;
Boualem Benatallah
关键词:
Entity matching
;
Similarity
function
;
Incremental knowledge acquisition
;
Similarity
search
;
Similarity
measure
;
Recommendation
刊名:Information Sciences
出版年:2017
2.
A polygraph test for trustworthy structural
similarity
作者:
Kevin A. Naudé
;
;
Kevin.Naude@nmmu.ac.za
;
Jean H. Greyling
Jean.Greyling@nmmu.ac.za
;
Dieter Vogts
Dieter.Vogts@nmmu.ac.za
关键词:
Similarity
measures
;
Distance measures
;
Similarity
judgment errors
;
Similarity
judgment quality
;
Information retrieval
刊名:Information Systems
出版年:2017
3.
Forward backward
similarity
search in knowledge networks
作者:
Baoxu Shi
a
;
bshi@nd.edu
;
Lin Yang
b
;
lyang5@nd.edu
;
Tim Weninger
;
c
;
tweninge@nd.edu
关键词:
Knowledge graph
;
Similarity
measures
;
Graph search
刊名:Knowledge-Based Systems
出版年:2017
4.
Wikipedia-based information content and semantic
similarity
computation
作者:
Yuncheng Jiang
;
ycjiang@scnu.edu.cn
;
ycjiang21@qq.com
;
Wen Bai
;
Xiaopei Zhang
;
Jiaojiao Hu
关键词:
Information content
;
Semantic
similarity
;
Concept
similarity
;
Wikipedia
;
Category structure
刊名:Information Processing & Management
出版年:2017
5.
Evaluation of dissolution profile
similarity
- Comparison between the f
2
, the multivariate statistical distance and the f
2
bootstrapping methods
作者:
Paulo Paixã
;
o
;
ppaixao@ff.ul.pt
;
Luí
;
s F. Gouveia
;
Nuno Silva
;
José
;
A.G. Morais
关键词:
Similarity
of dissolution profiles
;
f2 metric
;
Bootstrap f2 method
;
Model-independent multivariate statistical distance
;
Variability in dissolution profiles
;
Regulatory acceptance of dissolution
similarity
刊名:European Journal of Pharmaceutics and Biopharmaceutics
出版年:2017
6.
Mixed
similarity
learning for recommendation with implicit feedback
作者:
Mengsi Liu
liumengsi@email.szu.edu.cn
;
Weike Pan
1
;
panweike@szu.edu.cn
;
Miao Liu
liumiao1@email.szu.edu.cn
;
Yaofeng Chen
chenyaofeng@email.szu.edu.cn
;
Xiaogang Peng
;
pengxg@szu.edu.cn
;
Zhong Ming
;
mingz@szu.edu.cn
关键词:
Mixed
similarity
;
Implicit feedback
;
Recommender systems
刊名:Knowledge-Based Systems
出版年:2017
7.
Trait and goal
similarity
and discrepancy in romantic couples
作者:
Jacob S. Gray
;
jgray009@ucr.edu
;
Jennifer V. Coons
关键词:
Similarity
;
Personal goals
;
Personality traits
;
Relationship satisfaction
;
Discrepancy
刊名:Personality and Individual Differences
出版年:2017
8.
Generalized total least squares prediction algorithm for universal 3D
similarity
transformation
作者:
Bin Wang
a
;
b
;
binwangsgg@whu.edu.cn
;
Jiancheng Li
a
;
Chao Liu
c
;
Jie Yu
d
关键词:
3D
similarity
transformation
;
Errors&ndash
;
in&ndash
;
variables model
;
Total least squares prediction
;
Gauss&ndash
;
Newton approach
刊名:Advances in Space Research
出版年:2017
9.
A robust
similarity
measure for attributed scattering center sets with application to SAR ATR
作者:
Baiyuan DingAuthor Vitae
;
Gongjian WenAuthor Vitae
;
Jinrong ZhongAuthor Vitae
;
Conghui MaAuthor Vitae
;
Xiaoliang YangAuthor Vitae
关键词:
Synthetic aperture radar (SAR)
;
Automatic target recognition (ATR)
;
Attributed scattering center (ASC)
;
Robust
similarity
measure
;
Kullback&ndash
;
Leibler (KL) divergence
;
Hungarian algorithm
刊名:Neurocomputing
出版年:2017
10.
Power series models of self-
similarity
in social networks
作者:
Subhash Kak
subhash.kak@gmail.com" class="auth_mail" title="E-mail the corresponding author
关键词:
Social networks
;
Self-
similarity
;
80&ndash
;
20 phenomenon
;
Connectivity
;
Golden ratio
刊名:Information Sciences
出版年:2017
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