Mediación escolar en educación primaria: Diseño de un programa de capacitación para las docentes en mediación escolar para una convivencia armónica y prevenir los conflictos en aula.

Tesis Materias > Educación Universidad Internacional Iberoamericana México > Docencia > Trabajos finales de Máster
Universidad Internacional Iberoamericana Puerto Rico > Docencia > Trabajos finales de Máster
Cerrado Español Resumen.Este estudio investigativo de fin de máster busca caracterizar los conocimientos en mediación escolar en educación primaria en las docentes de la Escuela de Educación Básica Fiscal “Lic. Ángel Autilio Del Cioppo Becerra” de la ciudad de Guayaquil con el objetivo de diseñar un programa de capacitación en mediación escolar para mejorar la convivencia armónica y prevenir los conflictos en el aula. Se consideró los informes disciplinarios de los docentes y los conflictos generados por parte de los padres de familia quienes buscan solucionar los conflictos por cuenta propia entre ellos en la parte externa del plantel; por esta razón es necesario que las profesionales en educación tengan conocimientos profundos en mediación escolar para garantizar una buena convivencia en la institución.Para el desarrollo de este proyecto se realizó un estudio diseño de investigación-acción-participación (I-A-P) con diseño cualitativo con una población total de 13 educadores, para ello se utilizó como técnica de recolección de información encuestas con características de orden cualitativas, con las mismas se pudo levantar datos donde se revelaba la falta de conocimientos en cuanto a técnicas para mediar una situación de conflicto dentro del aula, por ende, la propuesta diseño de un programa de capacitación en mediación escolar permitirá hallar soluciones viables para disminuir los conflictos dentro del aula y mejorar las relaciones interpersonales entre docentes y padres de familia. De los resultados obtenidos se pudo contrastar la necesidad de la implementación y capacitación docente para la mediación escolar y convivencia en la unidad educativa, pues, aunque existe ya un plan establecido, muchos de los maestros no han recibido capacitación alguna e incluso desconocen la existencia de este. En este sentido, la propuesta planteada pretende generar un ambiente educativo de paz y armónico para los procesos educativos y la enseñanza significativa de los docentes, brindando información oportuna para la mediación escolar. metadata Jiménez Correa, Karina Mariela mail marie-kari1@hotmail.com (2022) Mediación escolar en educación primaria: Diseño de un programa de capacitación para las docentes en mediación escolar para una convivencia armónica y prevenir los conflictos en aula. Masters thesis, Universidad Internacional Iberoamericana México.

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Resumen

Resumen.Este estudio investigativo de fin de máster busca caracterizar los conocimientos en mediación escolar en educación primaria en las docentes de la Escuela de Educación Básica Fiscal “Lic. Ángel Autilio Del Cioppo Becerra” de la ciudad de Guayaquil con el objetivo de diseñar un programa de capacitación en mediación escolar para mejorar la convivencia armónica y prevenir los conflictos en el aula. Se consideró los informes disciplinarios de los docentes y los conflictos generados por parte de los padres de familia quienes buscan solucionar los conflictos por cuenta propia entre ellos en la parte externa del plantel; por esta razón es necesario que las profesionales en educación tengan conocimientos profundos en mediación escolar para garantizar una buena convivencia en la institución.Para el desarrollo de este proyecto se realizó un estudio diseño de investigación-acción-participación (I-A-P) con diseño cualitativo con una población total de 13 educadores, para ello se utilizó como técnica de recolección de información encuestas con características de orden cualitativas, con las mismas se pudo levantar datos donde se revelaba la falta de conocimientos en cuanto a técnicas para mediar una situación de conflicto dentro del aula, por ende, la propuesta diseño de un programa de capacitación en mediación escolar permitirá hallar soluciones viables para disminuir los conflictos dentro del aula y mejorar las relaciones interpersonales entre docentes y padres de familia. De los resultados obtenidos se pudo contrastar la necesidad de la implementación y capacitación docente para la mediación escolar y convivencia en la unidad educativa, pues, aunque existe ya un plan establecido, muchos de los maestros no han recibido capacitación alguna e incluso desconocen la existencia de este. En este sentido, la propuesta planteada pretende generar un ambiente educativo de paz y armónico para los procesos educativos y la enseñanza significativa de los docentes, brindando información oportuna para la mediación escolar.

Tipo de Documento: Tesis (Masters)
Palabras Clave: Mediación, convivencia, conflictos, prevención, holística.
Clasificación temática: Materias > Educación
Divisiones: Universidad Internacional Iberoamericana México > Docencia > Trabajos finales de Máster
Universidad Internacional Iberoamericana Puerto Rico > Docencia > Trabajos finales de Máster
Depositado: 20 Oct 2023 23:30
Ultima Modificación: 20 Oct 2023 23:30
URI: https://repositorio.unib.org/id/eprint/992

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Evaluating the impact of deep learning approaches on solar and photovoltaic power forecasting: A systematic review

Accurate solar and photovoltaic (PV) power forecasting is essential for optimizing grid integration, managing energy storage, and maximizing the efficiency of solar power systems. Deep learning (DL) models have shown promise in this area due to their ability to learn complex, non-linear relationships within large datasets. This study presents a systematic literature review (SLR) of deep learning applications for solar PV forecasting, addressing a gap in the existing literature, which often focuses on traditional ML or broader renewable energy applications. This review specifically aims to identify the DL architectures employed, preprocessing and feature engineering techniques used, the input features leveraged, evaluation metrics applied, and the persistent challenges in this field. Through a rigorous analysis of 26 selected papers from an initial set of 155 articles retrieved from the Web of Science database, we found that Long Short-Term Memory (LSTM) networks were the most frequently used algorithm (appearing in 32.69% of the papers), closely followed by Convolutional Neural Networks (CNNs) at 28.85%. Furthermore, Wavelet Transform (WT) was found to be the most prominent data decomposition technique, while Pearson Correlation was the most used for feature selection. We also found that ambient temperature, pressure, and humidity are the most common input features. Our systematic evaluation provides critical insights into state-of-the-art DL-based solar forecasting and identifies key areas for upcoming research. Future research should prioritize the development of more robust and interpretable models, as well as explore the integration of multi-source data to further enhance forecasting accuracy. Such advancements are crucial for the effective integration of solar energy into future power grids.

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Novel hybrid transfer neural network for wheat crop growth stages recognition using field images

Wheat is one of the world’s most widely cultivated cereal crops and is a primary food source for a significant portion of the population. Wheat goes through several distinct developmental phases, and accurately identifying these stages is essential for precision farming. Determining wheat growth stages accurately is crucial for increasing the efficiency of agricultural yield in wheat farming. Preliminary research identified obstacles in distinguishing between these stages, negatively impacting crop yields. To address this, this study introduces an innovative approach, MobDenNet, based on data collection and real-time wheat crop stage recognition. The data collection utilized a diverse image dataset covering seven growth phases ‘Crown Root’, ‘Tillering’, ‘Mid Vegetative’, ‘Booting’, ‘Heading’, ‘Anthesis’, and ‘Milking’, comprising 4496 images. The collected image dataset underwent rigorous preprocessing and advanced data augmentation to refine and minimize biases. This study employed deep and transfer learning models, including MobileNetV2, DenseNet-121, NASNet-Large, InceptionV3, and a convolutional neural network (CNN) for performance comparison. Experimental evaluations demonstrated that the transfer model MobileNetV2 achieved 95% accuracy, DenseNet-121 achieved 94% accuracy, NASNet-Large achieved 76% accuracy, InceptionV3 achieved 74% accuracy, and the CNN achieved 68% accuracy. The proposed novel hybrid approach, MobDenNet, that synergistically merges the architectures of MobileNetV2 and DenseNet-121 neural networks, yields highly accurate results with precision, recall, and an F1 score of 99%. We validated the robustness of the proposed approach using the k-fold cross-validation. The proposed research ensures the detection of growth stages with great promise for boosting agricultural productivity and management practices, empowering farmers to optimize resource distribution and make informed decisions.

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Aisha Naseer mail , Madiha Amjad mail , Ali Raza mail , Kashif Munir mail , Aseel Smerat mail , Henry Fabian Gongora mail henry.gongora@uneatlantico.es, Carlos Eduardo Uc Ríos mail carlos.uc@unini.edu.mx, Imran Ashraf mail ,

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Client engagement solution for post implementation issues in software industry using blockchain

In the rapidly advanced and evolving information technology industry, adequate client engagement plays a critical role as it is very important to understand the client’s concerns, and requirements, have the records, authorizations, and go-ahead of previously agreed requirements, and provide the feasible solution accordingly. Previously multiple solutions have been proposed to enhance the efficiency of client engagement, but they lack traceability, trust, transparency, and conflict in agreements of previous contracts. Due to the lack of these shortcomings, the client requirement is getting delayed which is causing client escalations, integrity issues, project failure, and penalties. In this study, we proposed the UniferCollab framework to overcome the issues of collaboration between various teams, transparency, the record of client authorizations, and the go-ahead on previous developments by implementing blockchain technology. We store the data on the permissible network in the proposed approach. It allows us to compile all the requirements and information shared by clients on permissible blockchain to secure a large amount of data which enhances the traceability of all the requirements. All the authorizations from the client generate push notifications for any changes in their current system executed through smart contracts. It removes the ambiguity between various development teams if the client has only shared the requirement with one team. The data is stored in the decentralized network from where information is gathered which resolves the traceability, transparency, and trust issues. Lastly, evaluations involved a total of 800 hypertext transfer protocol (HTTP) requests tested using Postman with blockchain block sizes ranging from 0.568 KB to 550 KB and an average size increase of 280 KB was observed as new blocks were added. The longest chain in the network was observed during 800 repetitions of blockchain operations. Latency analysis revealed that delays in processing HTTP requests were influenced by decentralized node processing, local machine response times, and internet bandwidth through various experiments. Results show that the proposed framework resolves all client engagement issues in implementation between all stakeholders which enhances trust, and transparency improves client experience and helps us manage disputes effectively.

Producción Científica

Muhammad Shoaib Farooq mail , Khurram Irshad mail , Danish Riaz mail , Nagwan Abdel Samee mail , Ernesto Bautista Thompson mail ernesto.bautista@unini.edu.mx, Daniel Gavilanes Aray mail daniel.gavilanes@uneatlantico.es, Imran Ashraf mail ,

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Advancing Nutritional Science: Contemporary Perspectives on Diet’s Role in Metabolic Health and Disease Prevention

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Ensemble stacked model for enhanced identification of sentiments from IMDB reviews

The emergence of social media platforms led to the sharing of ideas, thoughts, events, and reviews. The shared views and comments contain people’s sentiments and analysis of these sentiments has emerged as one of the most popular fields of study. Sentiment analysis in the Urdu language is an important research problem similar to other languages, however, it is not investigated very well. On social media platforms like X (Twitter), billions of native Urdu speakers use the Urdu script which makes sentiment analysis in the Urdu language important. In this regard, an ensemble model RRLS is proposed that stacks random forest, recurrent neural network, logistic regression (LR), and support vector machine (SVM). The Internet Movie Database (IMDB) movie reviews and Urdu tweets are examined in this study using Urdu sentiment analysis. The Urdu hack library was used to preprocess the Urdu data, which includes preprocessing operations including normalizing individual letters, merging them, including spaces, etc. concerning punctuation. The problem of accurately encoding Urdu characters and replacing Arabic letters with their Urdu equivalents is fixed by the normalization module. Several models are adopted in this study for extensive evaluation of their accuracy for Urdu sentiment analysis. While the results promising, among machine learning models, the SVM and LR attained an accuracy of 87%, according to performance criteria such as F-measure, accuracy, recall, and precision. The accuracy of the long short-term memory (LSTM) and bidirectional LSTM (BiLSTM) was 84%. The suggested ensemble RRLS model performs better than other learning algorithms and achieves a 90% accuracy rate, outperforming current methods. The use of the synthetic minority oversampling technique (SMOTE) is observed to improve the performance and lead to 92.77% accuracy.

Producción Científica

Komal Azim mail , Alishba Tahir mail , Mobeen Shahroz mail , Hanen Karamti mail , Annia A. Vázquez mail annia.almeyda@uneatlantico.es, Angel Olider Rojas Vistorte mail angel.rojas@uneatlantico.es, Imran Ashraf mail ,

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