Crossref Citations
This article has been cited by the following publications. This list is generated based on data provided by
Crossref.
Ryall, Michael D.
2005.
Causal Ambiguity, Operating Complexity and Strong Capability-Based Advantages.
SSRN Electronic Journal,
Maria Yaneli, Ameca-Alducin
Nicandro, Cruz-Ramírez
Efrén, Mezura-Montes
Enrique, Martín-Del-Campo-Mena
Nancy, Pérez-Castro
and
Héctor Gabriel, Acosta-Mesa
2013.
Advances in Artificial Intelligence.
Vol. 7629,
Issue. ,
p.
419.
Wuest, Thorsten
2015.
Identifying Product and Process State Drivers in Manufacturing Systems Using Supervised Machine Learning.
p.
69.
Tourmen, Claire
2016.
With or Beyond Piaget? A Dialogue between New Probabilistic Models of Learning and the Theories of Jean Piaget.
Human Development,
Vol. 59,
Issue. 1,
p.
4.
Fan, Yi
Chen, Jiquan
Shirkey, Gabriela
John, Ranjeet
Wu, Susie R.
Park, Hogeun
and
Shao, Changliang
2016.
Applications of structural equation modeling (SEM) in ecological studies: an updated review.
Ecological Processes,
Vol. 5,
Issue. 1,
Chung, Sungeun
and
Moon, Shin-Il
2016.
Is the Third-Person Effect Real? A Critical Examination of Rationales, Testing Methods, and Previous Findings of the Third-Person Effect on Censorship Attitudes.
Human Communication Research,
Vol. 42,
Issue. 2,
p.
312.
Fei, Nina
and
Yang, Youlong
2017.
Estimating linear causality in the presence of latent variables.
Cluster Computing,
Vol. 20,
Issue. 2,
p.
1025.
Oddo, Vanessa M.
Bleich, Sara N.
Pollack, Keshia M.
Surkan, Pamela J.
Mueller, Noel T.
and
Jones-Smith, Jessica C.
2017.
The weight of work: the association between maternal employment and overweight in low- and middle-income countries.
International Journal of Behavioral Nutrition and Physical Activity,
Vol. 14,
Issue. 1,
Lawlor, Deborah A.
Richmond, Rebecca
Warrington, Nicole
McMahon, George
Smith, George Davey
Bowden, Jack
and
Evans, David M
2017.
Using Mendelian randomization to determine causal effects of maternal pregnancy (intrauterine) exposures on offspring outcomes: Sources of bias and methods for assessing them.
Wellcome Open Research,
Vol. 2,
Issue. ,
p.
11.
Lueckmann, Jan-Matthis
Macke, Jakob H.
and
Nienborg, Hendrikje
2018.
Can Serial Dependencies in Choices and Neural Activity Explain Choice Probabilities?.
The Journal of Neuroscience,
Vol. 38,
Issue. 14,
p.
3495.
Bañegil-Palacios, Tomás
and
Sánchez-Hernández, M.
2018.
The Challenge to Foster Foreign Students’ Experiences for Sustainable Higher Educational Institutions.
Sustainability,
Vol. 10,
Issue. 2,
p.
495.
Chawla, Suraj
Pund, Anagha
B., Vibishan
Kulkarni, Shubhankar
Diwekar-Joshi, Manawa
Watve, Milind
and
Ruscica, Massimiliano
2018.
Inferring causal pathways among three or more variables from steady-state correlations in a homeostatic system.
PLOS ONE,
Vol. 13,
Issue. 10,
p.
e0204755.
何, 建萍
2019.
Clinical Study of Morphine Combined with Prednisone in the Treatment of Carcinomatous Neuralgia with Anxiety and Depression.
Advances in Clinical Medicine,
Vol. 09,
Issue. 04,
p.
554.
Fomenko, A. E.
2019.
Validation of Forensic Expert’s Opinion in Investigation of Safety Rules Violations in Construction Works.
Theory and Practice of Forensic Science,
Vol. 14,
Issue. 2,
p.
16.
Lahmann, Benjamin
and
Hampel, David
2020.
Impact of Digital Supported Process Workflow Optimization for Hip Joint Endoprosthesis Implantation on Hospital-Specific Process and Quality Ratios.
Acta Universitatis Agriculturae et Silviculturae Mendelianae Brunensis,
Vol. 68,
Issue. 4,
p.
755.
Huang, Wei
Zhou, Jianzhong
and
Zhang, Dongying
2020.
Exploring Empirical Linkage of Water Level–Climate–Vegetation across the Three Georges Dam Areas.
Water,
Vol. 12,
Issue. 4,
p.
965.
Liu, Ping
Zhang, Shenglin
Sun, Yongqian
Meng, Yuan
Yang, Jiahai
and
Pei, Dan
2020.
FluxInfer: Automatic Diagnosis of Performance Anomaly for Online Database System.
p.
1.
Zhang, Shengyu
Jiang, Tan
Wang, Tan
Kuang, Kun
Zhao, Zhou
Zhu, Jianke
Yu, Jin
Yang, Hongxia
and
Wu, Fei
2020.
DeVLBert.
p.
4373.
Meng, Yuan
Zhang, Shenglin
Sun, Yongqian
Zhang, Ruru
Hu, Zhilong
Zhang, Yiyin
Jia, Chenyang
Wang, Zhaogang
and
Pei, Dan
2020.
Localizing Failure Root Causes in a Microservice through Causality Inference.
p.
1.
Moraffah, Raha
Karami, Mansooreh
Guo, Ruocheng
Raglin, Adrienne
and
Liu, Huan
2020.
Causal Interpretability for Machine Learning - Problems, Methods and Evaluation.
ACM SIGKDD Explorations Newsletter,
Vol. 22,
Issue. 1,
p.
18.