Estrategias Metodológicas de Aprendizaje Colaborativo Dirigidas a estudiantes de Educación Básica.

Thesis Subjects > Education Ibero-american International University > Teaching > Final Master Projects
Ibero-american International University > Teaching > Master's Final Projects
Closed Spanish La presente investigación hace un análisis sobre una Estrategia metodológica para la introducción del aprendizaje colaborativo en estudiantes de la Escuela Fiscal Mixta 28 de mayo, para favorecer el rendimiento académico, y en base a los resultados, construir tareas educativas que permita reducir los posibles efectos negativos de los aprendizajes individualizados. Una vez detectado el problema se plantea el objetivo general Elaborar una estrategia metodológica para la aplicación del aprendizaje colaborativo en el proceso de enseñanza y aprendizaje de los estudiantes, contribuyendo a la mejora del rendimiento académico. Para llevar a cabo esta investigación se ha recolectado información bibliográfica que sirvió para elaborar el marco teórico y sustentar las dos variables de estudio. El aprendizaje colaborativo es una técnica utilizada en trabajos grupales. Esta investigación se ha enfocado en la metodología cuantitativa y cualitativa ya que presenta un enfoque cuantitativo, porque a través de la encuesta e información otorgada se pudo cuantificar y tabular los datos estadísticamente e interpretar los resultados mediante análisis reflexivo, numérico y cualitativo. Para llevar a cabo el diagnóstico de la información se aplicó el cuestionario de 10 preguntas correspondientes a estudiantes y docentes, mismo que tuvo por objetivo conocer el discernimiento que tiene los docentes al aplicar el aprendizaje colaborativo y el impacto que tendrá en el rendimiento académico con la técnica de la encuesta, mediante esta se recolecta la información necesaria e importante para poder analizar y tabular, obteniendo un resultado que fue análisis para la toma de decisiones, la población para llevar la aplicación de la encuesta estuvo conformada por 110 alumnos y 10 docentes. En base al análisis y tabulación de los datos recogidos se concluye que el aprendizaje colaborativo no es de uso frecuente en el aula de clase, mucho menos en forma correcta por los docentes de la institución. Además, al observar los resultados del método de investigación, podemos ver que los estudiantes piensan que los profesores no ayudan a la integración de los estudiantes con otros, y se puede deducir que el trabajo de clase y el contenido que se imparte es teórico sin práctica. Las estrategias de educación básica y colaborativa no se aplican y reducen la capacidad de los estudiantes para desarrollar las habilidades de razonamiento científico. metadata Guaranda Cochea, Ingrid Lilibeth mail igicita@hotmail.com (2022) Estrategias Metodológicas de Aprendizaje Colaborativo Dirigidas a estudiantes de Educación Básica. Master's thesis, UNSPECIFIED.

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Abstract

La presente investigación hace un análisis sobre una Estrategia metodológica para la introducción del aprendizaje colaborativo en estudiantes de la Escuela Fiscal Mixta 28 de mayo, para favorecer el rendimiento académico, y en base a los resultados, construir tareas educativas que permita reducir los posibles efectos negativos de los aprendizajes individualizados. Una vez detectado el problema se plantea el objetivo general Elaborar una estrategia metodológica para la aplicación del aprendizaje colaborativo en el proceso de enseñanza y aprendizaje de los estudiantes, contribuyendo a la mejora del rendimiento académico. Para llevar a cabo esta investigación se ha recolectado información bibliográfica que sirvió para elaborar el marco teórico y sustentar las dos variables de estudio. El aprendizaje colaborativo es una técnica utilizada en trabajos grupales. Esta investigación se ha enfocado en la metodología cuantitativa y cualitativa ya que presenta un enfoque cuantitativo, porque a través de la encuesta e información otorgada se pudo cuantificar y tabular los datos estadísticamente e interpretar los resultados mediante análisis reflexivo, numérico y cualitativo. Para llevar a cabo el diagnóstico de la información se aplicó el cuestionario de 10 preguntas correspondientes a estudiantes y docentes, mismo que tuvo por objetivo conocer el discernimiento que tiene los docentes al aplicar el aprendizaje colaborativo y el impacto que tendrá en el rendimiento académico con la técnica de la encuesta, mediante esta se recolecta la información necesaria e importante para poder analizar y tabular, obteniendo un resultado que fue análisis para la toma de decisiones, la población para llevar la aplicación de la encuesta estuvo conformada por 110 alumnos y 10 docentes. En base al análisis y tabulación de los datos recogidos se concluye que el aprendizaje colaborativo no es de uso frecuente en el aula de clase, mucho menos en forma correcta por los docentes de la institución. Además, al observar los resultados del método de investigación, podemos ver que los estudiantes piensan que los profesores no ayudan a la integración de los estudiantes con otros, y se puede deducir que el trabajo de clase y el contenido que se imparte es teórico sin práctica. Las estrategias de educación básica y colaborativa no se aplican y reducen la capacidad de los estudiantes para desarrollar las habilidades de razonamiento científico.

Document Type: Thesis (Master's)
Keywords: Teorías de aprendizaje, Aprendizaje colaborativo, Evaluación de aprendizaje, Trabajo en equipo, Rendimiento académico.
Subject classification: Subjects > Education
Divisions: Ibero-american International University > Teaching > Final Master Projects
Ibero-american International University > Teaching > Master's Final Projects
Deposited: 17 Nov 2023 23:30
Last Modified: 17 Nov 2023 23:30
URI: https://repositorio.unib.org/id/eprint/2159

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Benchmarking multiple instance learning architectures from patches to pathology for prostate cancer detection and grading using attention-based weak supervision

Histopathological evaluation is necessary for the diagnosis and grading of prostate cancer, which is still one of the most common cancers in men globally. Traditional evaluation is time-consuming, prone to inter-observer variability, and challenging to scale. The clinical usefulness of current AI systems is limited by the need for comprehensive pixel-level annotations. The objective of this research is to develop and evaluate a large-scale benchmarking study on a weakly supervised deep learning framework that minimizes the need for annotation and ensures interpretability for automated prostate cancer diagnosis and International Society of Urological Pathology (ISUP) grading using whole slide images (WSIs). This study rigorously tested six cutting-edge multiple instance learning (MIL) architectures (CLAM-MB, CLAM-SB, ILRA-MIL, AC-MIL, AMD-MIL, WiKG-MIL), three feature encoders (ResNet50, CTransPath, UNI2), and four patch extraction techniques (varying sizes and overlap) using the PANDA dataset (10,616 WSIs), yielding 72 experimental configurations. The methodology used distributed cloud computing to process over 31 million tissue patches, implementing advanced attention mechanisms to ensure clinical interpretability through Grad-CAM visualizations. The optimum configuration (UNI2 encoder with ILRA-MIL, 256 256 patches, 50% overlap) achieved 78.75% accuracy and 90.12% quadratic weighted kappa (QWK), outperforming traditional methods and approaching expert pathologist-level diagnostic capability. Overlapping smaller patches offered the best balance of spatial resolution and contextual information, while domain-specific foundation models performed noticeably better than generic encoders. This work is the first large-scale, comprehensive comparison of weekly supervised MIL methods for prostate cancer diagnosis and grading. The proposed approach has excellent clinical diagnostic performance, scalability, practical feasibility through cloud computing, and interpretability using visualization tools.

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A scalable and secure federated learning authentication scheme for IoT

Secure and scalable authentication remains a fundamental challenge in Internet of Things (IoT) networks due to constrained device resources, dynamic topology, and the absence of centralized trust infrastructures. Conventional password-based and certificate-driven authentication schemes incur high computation, storage, and communication overhead, limiting their suitability for large-scale deployments. To address these limitations, this paper proposes ScLBS, a federated learning (FL)–based self-certified authentication scheme for distributed and sustainable IoT environments. ScLBS integrates self-certified public key cryptography with FL-driven trust adaptation, enabling decentralized public key derivation without reliance on third-party certificate authorities or exposure of private credentials. A zero-knowledge mechanism combined with location-aware authentication strengthens resistance to impersonation, Sybil, and replay attacks. Hierarchical key management supported by a -tree enables efficient group rekeying and preserves forward and backward secrecy under dynamic membership. Formal security verification is conducted under the Dolev–Yao adversary model using ProVerif, confirming secrecy of private and session keys (SKs) and correctness of authentication. Extensive NS-3 simulations and ablation analysis demonstrate that ScLBS achieves lower authentication delay, reduced message overhead, improved network utilization, and decreased energy consumption compared to representative IoT authentication schemes, while maintaining bounded FL overhead. These results indicate that ScLBS provides a balanced trade-off between security strength, scalability, and resource efficiency for constrained IoT networks.

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Innovative Application of Chatbots in Clinical Nutrition Education: The E+DIEting_Lab Experience in University Students

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Identifying the emotional state of individuals has useful applications, particularly to reduce the risk of suicide. Users’ thoughts on social media platforms can be used to find cues on the emotional state of individuals. Clinical approaches to suicide ideation detection primarily rely on evaluation by psychologists, medical experts, etc., which is time-consuming and requires medical expertise. Machine learning approaches have shown potential in automating suicide detection. In this regard, this study presents a soft voting ensemble model (SVEM) by leveraging random forest, logistic regression, and stochastic gradient descent classifiers using soft voting. In addition, for the robust training of SVEM, a hybrid feature engineering approach is proposed that combines term frequency-inverse document frequency and the bag of words. For experimental evaluation, “Suicide Watch” and “Depression” subreddits on the Reddit platform are used. Results indicate that the proposed SVEM model achieves an accuracy of 94%, better than existing approaches. The model also shows robust performance concerning precision, recall, and F1, each with a 0.93 score. ERT and deep learning models are also used, and performance comparison with these models indicates better performance of the SVEM model. Gated recurrent unit, long short-term memory, and recurrent neural network have an accuracy of 92% while the convolutional neural network obtains an accuracy of 91%. SVEM’s computational complexity is also low compared to deep learning models. Further, this study highlights the importance of explainability in healthcare applications such as suicidal ideation detection, where the use of LIME provides valuable insights into the contribution of different features. In addition, k-fold cross-validation further validates the performance of the proposed approach.

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Human metapneumovirus (hMPV) is one of the potential pandemic pathogens, and it is a concern for elderly subjects and immunocompromised patients. There is no vaccine or specific antiviral available for hMPV. We conducted an in-silico study to predict initial antiviral candidates against human metapneumovirus. Our methodology included protein modeling, stability assessment, molecular docking, molecular simulation, analysis of non-covalent interactions, bioavailability, carcinogenicity, and pharmacokinetic profiling. We pinpointed four plant-derived bio-compounds as antiviral candidates. Among the compounds, apigenin showed the highest binding affinity, with values of − 8.0 kcal/mol for the hMPV-F protein and − 7.6 kcal/mol for the hMPV-N protein. Molecular dynamic simulations and further analyses confirmed that the protein-ligand docked complexes exhibited acceptable stability compared to two standard antiviral drugs. Additionally, these four compounds yielded satisfactory outcomes in bioavailability, drug-likeness, and ADME-Tox (absorption, distribution, metabolism, excretion, and toxicity) and STopTox analyses. This study highlights the potential of apigenin and xanthoangelol E as an initial antiviral candidate, underscoring the necessity for wet-lab evaluation, preclinical and clinical trials against human metapneumovirus infection.

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