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Detecting-Machine-Generated-Text
Detecting-Machine-Generated-Text PublicThe findings of this research reveal several intriguing disparities between human and AI text generation. I demonstrated that these differences could be successfully utilized by classifiers to dist…
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Watermarking-Algorithm-Analysis-on-BART-Model-using-CNN-Dataset
Watermarking-Algorithm-Analysis-on-BART-Model-using-CNN-Dataset PublicJupyter Notebook 2
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Predicting-YouTube-Dislikes-using-Machine-Learning
Predicting-YouTube-Dislikes-using-Machine-Learning PublicI used Catboost for training a model on the numerical features of every YouTube video (e.g., the number of views, comments, likes, etc.) along with sentiment analysis of the video descriptions and …
Jupyter Notebook 9
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Automated-Design-of-Symmetric-Autoencoders-Using-Genetic-Algorithms
Automated-Design-of-Symmetric-Autoencoders-Using-Genetic-Algorithms PublicThis project presents a novel approach for optimizing the architecture of symmetric, undercomplete autoencoders for dimensionality reduction using a genetic algorithm.
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Word-Clouds-With-Sentiment-Analysis-of-the-Most-Recent-Tweets
Word-Clouds-With-Sentiment-Analysis-of-the-Most-Recent-Tweets PublicDownloaded tweets from the most popular news agencies and extract keywords from them. In the next steps, I plotted a word cloud and did a sentiment analysis for tweets that have the keywords.
Jupyter Notebook 5
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