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Keywords = Ewe language

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15 pages, 2006 KiB  
Article
Tracking Free-Ranging Pantaneiro Sheep during Extreme Drought in the Pantanal through Precision Technologies
by Gianni Aguiar da Silva, Sandra Aparecida Santos, Paulo Roberto de Lima Meirelles, Rafael Silvio Bonilha Pinheiro, Marcos Paulo Silva Gôlo, Jorge Luiz Franco, Igor Alexandre Hany Fuzeta Schabib Péres, Laysa Fontes Moura and Ciniro Costa
Agriculture 2024, 14(7), 1154; https://doi.org/10.3390/agriculture14071154 - 16 Jul 2024
Cited by 1 | Viewed by 1184
Abstract
The Pantanal has been facing consecutive years of extreme drought, with an impact on the quantity and quality of available pasture. However, little is known about how locally adapted breeds respond to the distribution of forage resources in this extreme drought scenario. This [...] Read more.
The Pantanal has been facing consecutive years of extreme drought, with an impact on the quantity and quality of available pasture. However, little is known about how locally adapted breeds respond to the distribution of forage resources in this extreme drought scenario. This study aimed to evaluate the movement of free-grazing Pantaneiro sheep using a low-cost GPS to assess the main grazing sites, measure the daily distance traveled, and determine the energy requirements for walking with body weight monitoring. In a herd of 100 animals, 31 were selected for weighing, and six ewes were outfitted with GPS collars. GPS data collected on these animals every 10 m from August 2020 to May 2021 was analyzed using the Python programming language. The traveled distance and activity energy requirements (ACT) for horizontal walking (Mcal/d of NEm) were determined. The 31 ewes were weighed at the beginning and end of each season. The available dry matter (DM) and floristic composition of the grazing sites were estimated at the peak of the drought. DM was predicted using power regression with NDVI (normalized difference vegetation index) (R2 = 0.94). DM estimates averaged 450 kg/ha, ranging from traces to 3830 kg/ha, indicating overall very low values. Individual variation in the frequency of use of grazing sites was observed (p < 0.05), reflecting the distances traveled and the energetic cost of the activity. The range of distances traveled by the animals varied from 3.3 to 17.7 km/d, with an average of 5.9 km/d, indicating low energy for walking. However, the traveled distance and ACT remained consistent over time; there were no significant differences observed between seasons (p > 0.05). On average, the ewes’ initial weight did not differ from the weight at the drought peak (p > 0.05), indicating that they maintained their initial weight, which is important for locally adapted breeds as it confers robustness and resilience. This study also highlighted the importance of the breed’s biodiverse diet during extreme drought, which enabled the selection of forage for energy and nutrient supplementation. The results demonstrated that precision tools such as GPS and satellite imagery enabled the study of animals in extensive systems, thereby contributing to decision-making within the production system. Full article
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23 pages, 386 KiB  
Article
Unsung Heroes of Mission Bible Translation in Colonial West Africa: Ludwig Adzaklo of the Bremen Mission in German Togoland
by Michael F. Wandusim
Religions 2024, 15(3), 314; https://doi.org/10.3390/rel15030314 - 1 Mar 2024
Cited by 1 | Viewed by 3281
Abstract
The Africanisation of Christianity in Africa is closely linked to the availability of the Bible in African mother tongues. However, mission-led Bible translation in Africa in the nineteenth and early twentieth centuries was not solely the work of European missionary linguists. Africans, such [...] Read more.
The Africanisation of Christianity in Africa is closely linked to the availability of the Bible in African mother tongues. However, mission-led Bible translation in Africa in the nineteenth and early twentieth centuries was not solely the work of European missionary linguists. Africans, such as Ludwig Adzaklo of the Bremen Mission, played essential roles in this process. Nevertheless, African translators like him were considered as mere Sprachgehilfe (language assistants) to the missionaries and not as co-translators. After a postcolonial analysis of archival data on the translation of the Old Testament into Ewe by Ludwig Adzaklo and Jakob Spieth, this study argues that Adzaklo was not just Spieth’s Sprachgehilfe but a co-translator on the project. Being referred to as Spieth’s Sprachgehilfe was a colonial-missionary label that denied Adzaklo’s agency in mission-led Bible translation in Africa. Therefore, the study suggests that Adzaklo should be viewed as an early Ewe mother-tongue Bible translator in the history of West African Christianity. Full article
22 pages, 4747 KiB  
Article
Pre-Trained Transformer-Based Models for Text Classification Using Low-Resourced Ewe Language
by Victor Kwaku Agbesi, Wenyu Chen, Sophyani Banaamwini Yussif, Md Altab Hossin, Chiagoziem C. Ukwuoma, Noble A. Kuadey, Colin Collinson Agbesi, Nagwan Abdel Samee, Mona M. Jamjoom and Mugahed A. Al-antari
Systems 2024, 12(1), 1; https://doi.org/10.3390/systems12010001 - 19 Dec 2023
Cited by 6 | Viewed by 4581
Abstract
Despite a few attempts to automatically crawl Ewe text from online news portals and magazines, the African Ewe language remains underdeveloped despite its rich morphology and complex "unique" structure. This is due to the poor quality, unbalanced, and religious-based nature of the crawled [...] Read more.
Despite a few attempts to automatically crawl Ewe text from online news portals and magazines, the African Ewe language remains underdeveloped despite its rich morphology and complex "unique" structure. This is due to the poor quality, unbalanced, and religious-based nature of the crawled Ewe texts, thus making it challenging to preprocess and perform any NLP task with current transformer-based language models. In this study, we present a well-preprocessed Ewe dataset for low-resource text classification to the research community. Additionally, we have developed an Ewe-based word embedding to leverage the low-resource semantic representation. Finally, we have fine-tuned seven transformer-based models, namely BERT-based (cased and uncased), DistilBERT-based (cased and uncased), RoBERTa, DistilRoBERTa, and DeBERTa, using the preprocessed Ewe dataset that we have proposed. Extensive experiments indicate that the fine-tuned BERT-base-cased model outperforms all baseline models with an accuracy of 0.972, precision of 0.969, recall of 0.970, loss score of 0.021, and an F1-score of 0.970. This performance demonstrates the model’s ability to comprehend the low-resourced Ewe semantic representation compared to all other models, thus setting the fine-tuned BERT-based model as the benchmark for the proposed Ewe dataset. Full article
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15 pages, 906 KiB  
Article
An Extended AHP-Based Corpus Assessment Approach for Handling Keyword Ranking of NLP: An Example of COVID-19 Corpus Data
by Liang-Ching Chen and Kuei-Hu Chang
Axioms 2023, 12(8), 740; https://doi.org/10.3390/axioms12080740 - 28 Jul 2023
Cited by 6 | Viewed by 1735
Abstract
The use of corpus assessment approaches to determine and rank keywords for corpus data is critical due to the issues of information retrieval (IR) in Natural Language Processing (NLP), such as when encountering COVID-19, as it can determine whether people can rapidly obtain [...] Read more.
The use of corpus assessment approaches to determine and rank keywords for corpus data is critical due to the issues of information retrieval (IR) in Natural Language Processing (NLP), such as when encountering COVID-19, as it can determine whether people can rapidly obtain knowledge of the disease. The algorithms used for corpus assessment have to consider multiple parameters and integrate individuals’ subjective evaluation information simultaneously to meet real-world needs. However, traditional keyword-list-generating approaches are based on only one parameter (i.e., the keyness value) to determine and rank keywords, which is insufficient. To improve the evaluation benefit of the traditional keyword-list-generating approach, this paper proposed an extended analytic hierarchy process (AHP)-based corpus assessment approach to, firstly, refine the corpus data and then use the AHP method to compute the relative weights of three parameters (keyness, frequency, and range). To verify the proposed approach, this paper adopted 53 COVID-19-related research environmental science research articles from the Web of Science (WOS) as an empirical example. After comparing with the traditional keyword-list-generating approach and the equal weights (EW) method, the significant contributions are: (1) using the machine-based technique to remove function and meaningless words for optimizing the corpus data; (2) being able to consider multiple parameters simultaneously; and (3) being able to integrate the experts’ evaluation results to determine the relative weights of the parameters. Full article
(This article belongs to the Special Issue Mathematical Methods in the Applied Sciences)
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18 pages, 443 KiB  
Article
Linguistic Predictors of Psychological Adjustment in Healthcare Workers during the COVID-19 Pandemic
by Marco Castiglioni, Cristina Liviana Caldiroli, Attà Negri, Gian Mauro Manzoni and Rossella Procaccia
Int. J. Environ. Res. Public Health 2023, 20(5), 4482; https://doi.org/10.3390/ijerph20054482 - 2 Mar 2023
Cited by 10 | Viewed by 3043
Abstract
COVID-19 broke out in China in December 2019 and rapidly became a worldwide pandemic that demanded an extraordinary response from healthcare workers (HCWs). Studies conducted during the pandemic observed severe depression and PTSD in HCWs. Identifying early predictors of mental health disorders in [...] Read more.
COVID-19 broke out in China in December 2019 and rapidly became a worldwide pandemic that demanded an extraordinary response from healthcare workers (HCWs). Studies conducted during the pandemic observed severe depression and PTSD in HCWs. Identifying early predictors of mental health disorders in this population is key to informing effective treatment and prevention. The aim of this study was to investigate the power of language-based variables to predict PTSD and depression symptoms in HCWs. One hundred thirty-five HCWs (mean age = 46.34; SD = 10.96) were randomly assigned to one of two writing conditions: expressive writing (EW n = 73) or neutral writing (NW n = 62) and completed three writing sessions. PTSD and depression symptoms were assessed both pre- and post-writing. LIWC was used to analyze linguistic markers of four trauma-related variables (cognitive elaboration, emotional elaboration, perceived threat to life, and self-immersed processing). Changes in PTSD and depression were regressed onto the linguistic markers in hierarchical multiple regression models. The EW group displayed greater changes on the psychological measures and in terms of narrative categories deployed than the NW group. Changes in PTSD symptoms were predicted by cognitive elaboration, emotional elaboration, and perceived threat to life; changes in depression symptoms were predicted by self-immersed processing and cognitive elaboration. Linguistic markers can facilitate the early identification of vulnerability to mental disorders in HCWs involved in public health emergencies. We discuss the clinical implications of these findings. Full article
24 pages, 515 KiB  
Review
Machine Learning Applied to Banking Supervision a Literature Review
by Pedro Guerra and Mauro Castelli
Risks 2021, 9(7), 136; https://doi.org/10.3390/risks9070136 - 19 Jul 2021
Cited by 23 | Viewed by 10365
Abstract
Machine learning (ML) has revolutionised data analysis over the past decade. Like innumerous other industries heavily reliant on accurate information, banking supervision stands to benefit greatly from this technological advance. The objective of this review is to provide a comprehensive walk-through of how [...] Read more.
Machine learning (ML) has revolutionised data analysis over the past decade. Like innumerous other industries heavily reliant on accurate information, banking supervision stands to benefit greatly from this technological advance. The objective of this review is to provide a comprehensive walk-through of how the most common ML techniques have been applied to risk assessment in banking, focusing on a supervisory perspective. We searched Google Scholar, Springer Link, and ScienceDirect databases for articles including the search terms “machine learning” and (“bank” or “banking” or “supervision”). No language, date, or Journal filter was applied. Papers were then screened and selected according to their relevance. The final article base consisted of 41 papers and 2 book chapters, 53% of which were published in the top quartile journals in their field. Results are presented in a timeline according to the publication date and categorised by time slots. Credit risk assessment and stress testing are highlighted topics as well as other risk perspectives, with some references to ML application surveys. The most relevant ML techniques encompass k-nearest neighbours (KNN), support vector machines (SVM), tree-based models, ensembles, boosting techniques, and artificial neural networks (ANN). Recent trends include developing early warning systems (EWS) for bankruptcy and refining stress testing. One limitation of this study is the paucity of contributions using supervisory data, which justifies the need for additional investigation in this field. However, there is increasing evidence that ML techniques can enhance data analysis and decision making in the banking industry. Full article
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