context-mover-distance-and-barycenters

Context modeler

A framework for building unsupervised representations of entities by modeling their contexts as probability distributions

Code accompanying our paper at AISTATS 2020

GitHub

21 stars
2 watching
1 forks
Language: Python
last commit: almost 4 years ago

Related projects:

Repository Description Stars
mop/bier This project implements a deep metric learning framework using an adversarial auxiliary loss to improve robustness. 39
wasidennis/adaptsegnet This project implements a deep learning-based approach to adapt semantic segmentation models from one domain to another. 849
sidak/otfusion Model fusion via optimal transport to combine performance of multiple machine learning models 135
sidroberts/phalcon-boundmodels Automates model generation based on dispatcher parameters in the Phalcon framework. 4
ykamikawa/tf-keras-segnet An implementation of SegNet architecture for semantic segmentation using tensorflow and keras. 178
culiver/space A framework for evaluating contribution of individual clients in federated learning systems. 6
hellochick/semantic-segmentation-tensorflow Implementation of semantic segmentation models on two datasets using TensorFlow 84
movingpandas/movingpandas An open-source Python library for analyzing movement data using spatial and temporal methods 1,234
larsmans/seqlearn A toolkit for building sequence classification models in Python 688
benedekrozemberczki/shapley An open-source Python library for evaluating and explaining the contribution of individual classifiers in machine learning ensembles. 218
eaigner/shield A flexible Bayesian text classifier with backend storage support 158
martinkersner/py-img-seg-eval A Python package providing metrics and tools for evaluating image segmentation models 282
nmrksic/counter-fitting A tool for modifying word vectors to conform to linguistic constraints 144
mkusner/wmd Calculates a measure of document similarity based on word embeddings 538
hellochick/pspnet-tensorflow A TensorFlow-based implementation of a semantic segmentation network for image classification tasks 326