==== Master's Project: Structural Intrinsic Dimensionality ==== == Diffusion for Machine Learning == **Supervision**: Stephane Marchand-Maillet **Date of proposal**: November 2023 High dimensional data makes learning and analysis difficult due to the Curse of Dimensionality. Here, we are interested in estimating the Local Intrinsic Dimensionality of the data to inform subsequent Machine Learning operations. Structural Intrinsic Dimensionality estimation uses random diffusion over neighborhood graphs so as to capture the structure of these neighborhoods. The project consists in extending the results from Marchand-Maillet, S., Pedreira, O., & Chavez, E. (2021). Structural Intrinsic Dimensionality. In Similarity Search and Applications - 14th International Conference (SISAP2021), Dortmund, DE - online. in relation to the corresponding [[https://data.snf.ch/grants/grant/207509|SNF project]] If interested please contact [[stephane.marchand-maillet@unige.ch|me]].