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Deep Multiple-Instance Learning Techniques

This repository contains notesbooks and code files which may be used to replicate the results from mil-benchmarks: Standardized Evaluation of Deep Multiple-Instance Learning Techniques.

Notebooks

Notebook Purpose
00-mnist-generator Generates Zero dataset
01-fashion-generator Generates Handbag dataset
02-outfit-generator Generates Outfit dataset
03-mnist-cnn Trains baseline model on Fashion and MNIST
04-dense-mil Trains Fully-Connect MIL model
05a-max-pool-mil Trains Max Pool MIL model
05b-max-pool+dense-mil Trains Max Pool + Fully-Connected MIL model
07-noisy-and-mil Trains Noisy-And MIL model
08-noisy-data Trains Noisy-And with label noise

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Multiple Instance Learning Term Project

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