Results for 'Bolanle Oyundoyin'

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  1. Interpersonal Communication Skills and Proactive Stance to Life’s Puzzles among Children: A Review.Bolanle Oyundoyin, Udeme Samuel Jacob, Temiloluwa Oyundoyin & Oluchi Onasanya - 2023 - International Journal of Home Economics, Hospitality and Allied Research 2 (2):140-148.
    This research article dealt with interpersonal communication skills among children and proactive stance to life’s puzzles. A review of related literature was performed to examine interpersonal communication, interpersonal communication skills, interpersonal communication and a proactive stance in conflict resolution, and the development of communication skills in children in a puzzled world. The study noted that children should be allowed and guided appropriately to express themselves clearly and assertively; parents should follow up on their children regularly and should build on teachers' (...)
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  2. Encoder-Decoder Based Long Short-Term Memory (LSTM) Model for Video Captioning.Adewale Sikiru, Tosin Ige & Bolanle Matti Hafiz - forthcoming - Proceedings of the IEEE:1-6.
    This work demonstrates the implementation and use of an encoder-decoder model to perform a many-to-many mapping of video data to text captions. The many-to-many mapping occurs via an input temporal sequence of video frames to an output sequence of words to form a caption sentence. Data preprocessing, model construction, and model training are discussed. Caption correctness is evaluated using 2-gram BLEU scores across the different splits of the dataset. Specific examples of output captions were shown to demonstrate model generality over (...)
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  3. Adversarial Sampling for Fairness Testing in Deep Neural Network.Tosin Ige, William Marfo, Justin Tonkinson, Sikiru Adewale & Bolanle Hafiz Matti - 2023 - International Journal of Advanced Computer Science and Applications 14 (2).
    In this research, we focus on the usage of adversarial sampling to test for the fairness in the prediction of deep neural network model across different classes of image in a given dataset. While several framework had been proposed to ensure robustness of machine learning model against adversarial attack, some of which includes adversarial training algorithm. There is still the pitfall that adversarial training algorithm tends to cause disparity in accuracy and robustness among different group. Our research is aimed at (...)
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