scholarly journals Deep RNN with Pseudo Loss Objective for Forecasting Stop-over Decisions of Wild Migratory Birds.

2021 ◽  
Author(s):  
Kehinde ayodeji Owoeye

Forecasting stop-over decisions and mapping the stop-over sites of wild migratory birds is fast becoming important in light of recent developments affecting global health. Migratory wild birds stop at sites with access to food resources so they can rest before continuing with their journey. Unfortunately, these sites offer opportunities for these birds to spread pathogens and viruses by interacting with the ecosystem. While previous work have focused on predicting stop-over sites using historical information, we emphasize that this is not useful for any planning efforts by health authorities and instead offer a new perspective by proposing an approach that can forecast the duration of stop-over. In this work, first we cast this problem as a classification task and show how pseudo labels and losses in a Bi-directional recurrent neural network can help improve performance given the presence of significantly underrepresented class. We use dataset of Turkey vulture (avian pox vector) movement over several years for the forecasting task where we compare our approach with a variety of baselines and show that it outperform them. We also use this dataset and the White Fronted Geese (avian flu vector) movement dataset to understand the nature of the habitats used for stop-over using a publicly available model pre-trained on more than half a million land cover images. By knowing the preferred stop-over habitats and the time spent in and between stop-overs using our model, we can help relevant authorities come up with efficient intervention measures.

Author(s):  
Xu Wang ◽  
Hongyang Gu ◽  
Tianyang Wang ◽  
Wei Zhang ◽  
Aihua Li ◽  
...  

AbstractThe fault diagnosis of bearings is crucial in ensuring the reliability of rotating machinery. Deep neural networks have provided unprecedented opportunities to condition monitoring from a new perspective due to the powerful ability in learning fault-related knowledge. However, the inexplicability and low generalization ability of fault diagnosis models still bar them from the application. To address this issue, this paper explores a decision-tree-structured neural network, that is, the deep convolutional tree-inspired network (DCTN), for the hierarchical fault diagnosis of bearings. The proposed model effectively integrates the advantages of convolutional neural network (CNN) and decision tree methods by rebuilding the output decision layer of CNN according to the hierarchical structural characteristics of the decision tree, which is by no means a simple combination of the two models. The proposed DCTN model has unique advantages in 1) the hierarchical structure that can support more accuracy and comprehensive fault diagnosis, 2) the better interpretability of the model output with hierarchical decision making, and 3) more powerful generalization capabilities for the samples across fault severities. The multiclass fault diagnosis case and cross-severity fault diagnosis case are executed on a multicondition aeronautical bearing test rig. Experimental results can fully demonstrate the feasibility and superiority of the proposed method.


2014 ◽  
Vol 6 (1) ◽  
pp. 7-11
Author(s):  
Johan Fornäs ◽  
Martin Fredriksson ◽  
Naomi Stead

With this volume, Culture Unbound celebrates its five-year anniversary. This makes a good opportunity both to look back at what we have achieved and to gaze ahead to what we have planned for the future. This new volume, which will be more extensive and ambitious than ever, thus marks a readiness and willingness to engage with some of the most acute problems and complex transformation that society faces. We hope and believe that this not only expresses the ambitions of Culture Unbound but also reflects a more general tendency within contemporary cultural research. In order to better accommodate the most recent developments within the field of cultural research, and facilitate intellectual discussion and critical analysis of contemporary issues we also plan to expand our repertoire of published material. In the coming year Culture Unbound will therefore introduce a section of texts we have chosen to call ‘Unbound Ideas’. Here we welcome academic essays and texts of a somewhat shorter format and freer approach to scholarly convention than our usual full-length research articles. These essays will take different – perhaps speculative or conjectural – positions, or give a new perspective on pressing topics or recently emerged concerns within cultural research.


2011 ◽  
Vol 1 (2) ◽  
Author(s):  
Narainsamy Pavaday ◽  
Insah Bhurtah ◽  
Dr. K.M.Sunjiv Soyjaudah

Author(s):  
Brijesh Verma ◽  
Rinku Panchal

This chapter presents neural network-based techniques for the classification of micro-calcification patterns in digital mammograms. Artificial neural network (ANN) applications in digital mammography are mainly focused on feature extraction, feature selection, and classification of micro-calcification patterns into ‘benign’ and ‘malignant’. An extensive review of neural network based techniques in digital mammography is presented. Recent developments such as auto-associators and evolutionary neural networks for feature extraction and selection are presented. Experimental results using ANN techniques on a benchmark database are described and analysed. Finally, a comparison of various neural network-based techniques is presented.


2018 ◽  
Vol 10 (10) ◽  
pp. 95 ◽  
Author(s):  
Yue Wu ◽  
Junyi Zhang

Chinese event extraction uses word embedding to capture similarity, but suffers when handling previously unseen or rare words. From the test, we know that characters may provide some information that we cannot obtain in words, so we propose a novel architecture for combining word representations: character–word embedding based on attention and semantic features. By using an attention mechanism, our method is able to dynamically decide how much information to use from word or character level embedding. With the semantic feature, we can obtain some more information about a word from the sentence. We evaluate different methods on the CEC Corpus, and this method is found to improve performance.


2018 ◽  
Vol 2018 ◽  
pp. 1-14
Author(s):  
Zhihong Li ◽  
Lanteng Wu ◽  
Hongting Tang

P2P (peer-to-peer) lending is an emerging online service that allows individuals to borrow money from unrelated person without the intervention of traditional financial intermediaries. In these platforms, borrowing limit and interest rate are two of the most notable elements for borrowers, which directly influence their borrowing benefits and costs, respectively. To that end, this paper introduces a BP neural network interval estimation (BPIE) algorithm to predict the borrowers’ borrowing limit and interest rate based on their characteristics and simultaneously develops a new parameter optimization algorithm (GBPO) based on the genetic algorithm and our BP neural network predictive model to optimize them. Using real-world data from http://ppdai.com, the experimental results show that our proposed model achieves a good performance. This research provides a new perspective from borrowers in exploring the P2P lending. The case base and proposed knowledge are the two contributions for FinTech research.


Author(s):  
Delano B. Marques ◽  
Alex O. Barradas Filho ◽  
Alexandre R. S. Romariz ◽  
Isabelle M. A. Viegas ◽  
Djavania A. Luz ◽  
...  

2010 ◽  
Vol 4 (2) ◽  
pp. 237-253
Author(s):  
Peter Kevern

AbstractRecent developments in the theory and practice of care for persons with dementia have reopened questions, traditionally explored by theologians, to do with the nature of personal identity and its dialectical relationship to social recognition. This new perspective on classical theological questions serves as a potential theological resource in contemporary western society, where God appears to have withdrawn from the prevailing public discourses. In this article, I explore the analogical potential of imagery of a ‘dementing God’, as a way to describe the contemporary experience of western Christians, to develop appropriate responses to the current climate in public theology and to continue to talk of God in public, while respecting Bonhoeffer’s desire to celebrate a secular world in which humanity may ‘come of age’.


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