Machine Learning

 

Struct-MMSB: Mixed Membership Stochastic Blockmodels with Interpretable Structured Priors

Introduction Modeling the complex and intricate interactions existing within a community is an important network science problem that has gained

  

A3SL: Learning Interpretable Relational Structures of Hinge-loss Markov Random Fields

Introduction Machine-learning models that possess superior interpretability and ease of specification without compromising modeling power have the potential to positively

 

Ensemble Regression Models for Short-term Prediction of Confirmed COVID-19 Cases

Introduction COVID-19 is a major global pandemic that has impacted the lives of people  around the world. In spite of 

Water Pump Cover Image
  

Predictive Analytics for Smart Water Management in Developing Regions

Introduction Water availability and management is an important problem plaguing many developing and under-developed countries. Many factors including geographic, political,

Water Meter
  

SWaP: Probabilistic Graphical and Deep Learning Models for Water Consumption Prediction

Introduction With climate change exacerbating extreme weather conditions including droughts and famines, understanding and predicting human water consumption is critical

Non-Emergency Work
  

NYCER: A Non-Emergency Response Predictor for NYC using Sparse Gaussian Conditional Random Fields (GCRFs)

Introduction Cities have limited resources that must be used efficiently to maintain their smooth operation. To ensure smooth operation of