Weakly supervised learning via statistical sufficiency

dc.contributor.authorPatrini, Giorgioen_AU
dc.date.accessioned2017-05-29T01:57:23Z
dc.date.available2017-05-29T01:57:23Z
dc.date.issued2016
dc.description.abstractThe Thesis introduces a novel algorithmic framework for weakly supervised learn- ing, namely, for any any problem in between supervised and unsupervised learning, from the labels standpoint. Weak supervision is the reality in many applications of machine learning where training is performed with partially missing, aggregated- level and/or noisy labels. The approach is grounded on the concept of statistical suf- ficiency and its transposition to loss functions. Our solution is problem-agnostic yet constructive as it boils down to a simple two-steps procedure. First, estimate a suffi- cient statistic for the labels from weak supervision. Second, plug the estimate into a (newly defined) linear-odd loss function and learn the model by any gradient-based solver, with a simple adaptation. We apply the same approach to several challeng- ing learning problems: (i) learning from label proportions, (ii) learning with noisy labels for both linear classifiers and deep neural networks, and (iii) learning from feature-wise distributed datasets where the entity matching function is unknown.en_AU
dc.identifier.otherb43751945
dc.identifier.urihttp://hdl.handle.net/1885/117067
dc.language.isoenen_AU
dc.subjectmachine learningen_AU
dc.subjectweakly supervised learningen_AU
dc.subjectsufficient statisticsen_AU
dc.subjectlearning theoryen_AU
dc.subjectnoisy labelen_AU
dc.subjectdeep learningen_AU
dc.titleWeakly supervised learning via statistical sufficiencyen_AU
dc.typeThesis (PhD)en_AU
dcterms.valid2017en_AU
local.contributor.affiliationANU College of Engineering & Computer Science, The Australian National Universityen_AU
local.contributor.authoremailgiorgio.patrini@anu.edu.auen_AU
local.contributor.supervisorNock, Richard
local.contributor.supervisorcontactrichard.nock@data61.csiro.auen_AU
local.description.notesthe author deposited 29/05/17en_AU
local.identifier.doi10.25911/5d723bc2607e3
local.mintdoimint
local.type.degreeDoctor of Philosophy (PhD)en_AU

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