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khoshtinat--mohadeseh
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Detecting and Mitigating Gender Bias in Language Models
, M.Sc. Thesis Sharif University of Technology ; Beigy, Hamid (Supervisor)
Abstract
Recent advancements in deep learning methods have led to significant progress in Language Models. However, training these models on vast amounts of real-world and internet data has resulted in gender bias. Given the increasing application of these models, identifying and mitigating this bias is of particular importance. Previous efforts to address this issue often required extensive datasets, long training times, and heavy hardware resources, which also led to the forgetting of the model’s prior knowledge. Furthermore, existing evaluation metrics only assessed bias across the entire dataset and did not consider different topics separately. Therefore, the dependency of these metrics on...
Investigating the Cosmic Web with the One-point Letter Function Statistics in the Presence of Massive Neutrinos
, Ph.D. Dissertation Sharif University of Technology ; Baghram, Shant (Supervisor)
Abstract
The standard model of cosmology—the ΛCDM model, successfully predicted almost all the observations from the Cosmic Microwave Background and the Large-Scale Structure surveys. However, as the observational data sets become more accurate and finer on small scales, the deviations between the predicted and observed quantities increase. In addition to the tensions arising from observational data, fundamental questions about the nature of the dark sector of the Universe have given rise to a rich literature around the possible extension of the ΛCDM, to mention a few, the decided massive neutrino inclusion, the interacting and/or clustering dark energy, and deviation from Gaussian initial condition....