scholarly journals Knowledge Transfer Using Local Features

Author(s):  
Martin Stolle ◽  
Christopher G. Atkeson
Prostor ◽  
2021 ◽  
Vol 29 (2 (62)) ◽  
pp. 226-237
Author(s):  
Domonkos Wettstein

The regional aspirations of resort architecture give specific perspectives on the history of regionalism. The development of the shores of Lake Balaton, the largest lake in Central Europe, was determined by this particular regional aspiration. Iván Kotsis was a defining figure of Hungarian architecture between the world wars, and had a significant impact on the period - not only with his work as an architect, but also as a university professor and a public activist. This paper examines his activity around Lake Balaton on different scales, since it represented a peculiar perspective within the history of regional ideas. The research concludes that Kotsis’ regional perspective focused on resort architecture was an independent conception separated from both modern and local interpretations. Based on his university work and the knowledge transfer resulting from his international relations, he developed an integrated perspective on the region from an academic position. Reflecting on the problems of holiday resorts, he formed an autonomous method with which he experimented, to mediate between the universal modern approach and the local features of the landscape.


Information ◽  
2021 ◽  
Vol 12 (8) ◽  
pp. 333
Author(s):  
Ilias Theodorakopoulos ◽  
Foteini Fotopoulou ◽  
George Economou

In this work, we propose a mechanism for knowledge transfer between Convolutional Neural Networks via the geometric regularization of local features produced by the activations of convolutional layers. We formulate appropriate loss functions, driving a “student” model to adapt such that its local features exhibit similar geometrical characteristics to those of an “instructor” model, at corresponding layers. The investigated functions, inspired by manifold-to-manifold distance measures, are designed to compare the neighboring information inside the feature space of the involved activations without any restrictions in the features’ dimensionality, thus enabling knowledge transfer between different architectures. Experimental evidence demonstrates that the proposed technique is effective in different settings, including knowledge-transfer to smaller models, transfer between different deep architectures and harnessing knowledge from external data, producing models with increased accuracy compared to a typical training. Furthermore, results indicate that the presented method can work synergistically with methods such as knowledge distillation, further increasing the accuracy of the trained models. Finally, experiments on training with limited data show that a combined regularization scheme can achieve the same generalization as a non-regularized training with 50% of the data in the CIFAR-10 classification task.


2012 ◽  
pp. 117-131 ◽  
Author(s):  
O. Golichenko

The problems of multifold increase of technological potential of developing countries are considered in the article. To solve them, i.e. to organize effectively tapping into global knowledge and their absorption, the performance of two diffusion channels is considered: open knowledge transfer and commercial knowledge transfer. The models of technological catching-up are investigated. Two of them are found to give an opportunity of effective use of international competition and global technology knowledge as a driver of technology development.


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