LIV: Learning, Inference, & Vision Group
Principal Investigator: Erik Sudderth, UC Irvine Computer Science · CV
LIV group members of the HPI Research Center in Machine Learning and Data Science at UC Irvine at a Sept. 2023 retreat in Rheinsberg, Germany.
LIV group and alumni at the December 2017 Conference on Neural Information Processing Systems in Long Beach, CA.
LIV Group Members
LIV Alumni: PhD Theses
- Soumya Ghosh, IBM Research.
2015 Brown PhD: Bayesian Nonparametric Discovery of Layers and Parts from Scenes and Objects.
- Gabriel Hope, Visiting Assistant Professor, Harvey Mudd College.
2023 UC Irvine PhD: Prediction-Constrained Latent Variable Models.
- Michael Hughes, Assistant Prof. of Computer Science at Tufts University.
2016 Brown PhD: Reliable and Scalable Variational Inference for Nonparametric Mixtures, Topics, and Sequences.
- Geng Ji, Facebook AI.
2019 UC Irvine PhD: Efficient Variational Inference for Hierarchical Models of Images, Text, and Networks.
- Daeil Kim, founder of AI. Reverie.
2017 Brown PhD: Scalable Bayesian Nonparametric Models for Networks and Documents.
- Jason Pacheco, Assistant Prof. of Computer Science at Univ. of Arizona.
2016 Brown PhD: Variational Approximations with Diverse Applications.
- Zhile Ren, applied research scientist at Apple.
2018 Brown PhD: Semantic Three-Dimensional Understanding of Dynamic Scenes.
LIV Alumni: Masters & Undergraduate Research
- Madina Abdrakhmanova, MS 2019: Prediction Constrained Factor Analysis.
- Samuel Ainsworth, ScB 2016.
- Michael Bryant, ScM 2012: Truly Nonparametric Online Variational Inference for Hierarchical Dirichlet Processes.
- Soravit Changpinyo, ScB 2012 (honors): Learning Image Attributes using the Indian Buffet Process.
- Xiaoyin Chen, BS 2021: Learning Consistent Deep Generative Models from Sparse Data via Prediction Constraints.
- Rajkumar Kothapa, ScM 2011: Max-Product Particle Belief Propagation.
- Andrew Miller, ScM 2010: Image and Audio Annotation: Approximate Inference in Dense Conditional Random Fields.
- Daniel Milstein, ScB 2015, ScM 2017: Multiscale Semi-Markov Dynamics for Intracortical Brain-Computer Interfaces.
- Mengrui Ni, ScM 2015: Variational Inference for Beta-Bernoulli Dirichlet Process Mixture Models.
- Carl Olsson, ScM 2016: Scene Category Context for 3D Object Detection with RGBD Cameras.
- Sonia Phene, ScB 2015 (honors): Parallelization of Variational Inference for Bayesian Nonparametric Topic Models.
- Roshan Rao, ScB 2017 (honors): Protein Structure Prediction from Low-Resolution Electron Density Data using Particle Belief Propagation.
- Jake Soloff, ScB 2016.
- William Stephenson, ScB 2015 (honors): Variational Inference for Hierarchical Dirichlet Process Based Nonparametric Models.
- Donglai Wei, ScB 2011.
- Leah Weiner, ScM 2017.