Eliza Barkan - PhD Student - University of Washington.
The journal Democratic Culture was founded for this purpose: to serve as a forum for studies on democratic culture in general and Israeli democracy in particular. This interdisciplinary and multidisciplinary publication welcomes studies in the humanities, social sciences, law and Jewish studies. studies. Its editors are Prof. Yedidia Stern from the Faculty of Law and Prof. Avi Sagi from the.
Dafna Bar-Sagi The role of Ras oncogenes in promoting cellular transformation is well established. However, the contribution of Ras signaling to interactions between tumor cells and their host.
No. Student's Name Advisors Graduation Year Abstracts Theses Abstract Title; 1: Info: Sason Eliyahu: Shie Mannor Yacov Crammer: 2020: Abstracts: Structured Label Classification using Deep Learning.
Dr. Limor Sagi is a lecturer in Health Systems Management and Organizational Development Studies. In her dissertation, in the Department of Psychology at Bar-Ilan University, she examined the empirical validity of the generalized threat theory, a theory that attributes prejudice to a defined group to threat feelings that arise from it. Inter-group relationships are a major area of interest of.
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Students have the opportunity to perform Ph.D. thesis research in a number of laboratories at three collaborative institutions: The State University of New York at Stony Brook, Cold Spring Harbor Laboratory, or Brookhaven National Laboratory. The Ph.D. in molecular and cellular biology is granted by the State University of New York at Stony Brook. The Molecular and Cellular Biology Graduate.
This Ph.D. thesis outlines the problem of learning algorithms from data and shows several partial solutions to it. Our data model is mainly neural networks as they have proven to be successful in various domains like object recognition, language modeling, speech recognition and others. First, we examine empirical trainability limits for classical neural networks. Then, we extend them by.