scholarly journals Cooperative Training of Fast Thinking Initializer and Slow Thinking Solver for Conditional Learning

Author(s):  
Jianwen Xie ◽  
Zilong Zheng ◽  
Xiaolin Fang ◽  
Song-Chun Zhu ◽  
Ying Nian Wu
Author(s):  
Laura A. Helbling ◽  
Martin J. Tomasik ◽  
Urs Moser

AbstractSummer break study designs are used in educational research to disentangle school from non-school contributions to social performance gaps. The summer breaks provide a natural experimental setting that allows for the measurement of learning progress when school is not in session, which can help to capture the unfolding of social disparities in learning that are the result of non-school influences. Seasonal comparative research has a longer tradition in the U.S. than in Europe, where it is only at its beginning. As such, summer setback studies in Europe lack a common methodological framework, impairing the possibility to draw lines across studies because they differ in their inherent focus on social inequality in learning progress. This paper calls for greater consideration of the parameterization of “unconditional” or “conditional” learning progress in European seasonal comparative research. Different approaches to the modelling of learning progress answer different research questions. Based on real data and constructed examples, this paper outlines in an intuitive fashion the different dynamics in inequality that may be simultaneously present in the survey data and distinctly revealed depending on whether one or the other modeling strategy of learning progress is chosen. An awareness of the parameterization of learning progress is crucial for an accurate interpretation of the findings and their international comparison.


Symmetry ◽  
2021 ◽  
Vol 13 (11) ◽  
pp. 2107
Author(s):  
Xin Wei ◽  
Huan Wan ◽  
Fanghua Ye ◽  
Weidong Min

In recent years, medical image segmentation (MIS) has made a huge breakthrough due to the success of deep learning. However, the existing MIS algorithms still suffer from two types of uncertainties: (1) the uncertainty of the plausible segmentation hypotheses and (2) the uncertainty of segmentation performance. These two types of uncertainties affect the effectiveness of the MIS algorithm and then affect the reliability of medical diagnosis. Many studies have been done on the former but ignore the latter. Therefore, we proposed the hierarchical predictable segmentation network (HPS-Net), which consists of a new network structure, a new loss function, and a cooperative training mode. According to our knowledge, HPS-Net is the first network in the MIS area that can generate both the diverse segmentation hypotheses to avoid the uncertainty of the plausible segmentation hypotheses and the measure predictions about these hypotheses to avoid the uncertainty of segmentation performance. Extensive experiments were conducted on the LIDC-IDRI dataset and the ISIC2018 dataset. The results show that HPS-Net has the highest Dice score compared with the benchmark methods, which means it has the best segmentation performance. The results also confirmed that the proposed HPS-Net can effectively predict TNR and TPR.


1974 ◽  
Vol 22 (5) ◽  
pp. 16-18 ◽  
Author(s):  
Oleta E. Burkeen

2020 ◽  
Vol 14 ◽  
Author(s):  
Daniela Cortese ◽  
Francesco Riganello ◽  
Francesco Arcuri ◽  
Lucia Lucca ◽  
Paolo Tonin ◽  
...  

Hippocampus ◽  
2004 ◽  
Vol 14 (2) ◽  
pp. 265-273 ◽  
Author(s):  
Agnieszka M. Janisiewicz ◽  
Orville Jackson ◽  
Elnaz F. Firoz ◽  
Mark G. Baxter

Sign in / Sign up

Export Citation Format

Share Document