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dc.contributor.authorRaghuram, Jayaram
dc.contributor.authorZeng, Yijing
dc.contributor.authorGarcia Marti, Dolores 
dc.contributor.authorRuiz, Rafael 
dc.contributor.authorJha, Somesh
dc.contributor.authorWidmer, Joerg 
dc.contributor.authorBanerjee, Suman 
dc.date.accessioned2023-07-14T09:58:12Z
dc.date.available2023-07-14T09:58:12Z
dc.date.issued2023-05-01
dc.identifier.urihttps://hdl.handle.net/20.500.12761/1726
dc.description.abstractThe problem of end-to-end learning of a communication system using an autoencoder – consisting of an encoder, channel, and decoder modeled using neural networks – has recently been shown to be an effective approach. A challenge faced in the practical adoption of this learning approach is that under changing channel conditions (e.g. a wireless link), it requires frequent retraining of the autoencoder in order to maintain a low decoding error rate. Since retraining is both time consuming and requires a large number of samples, it becomes impractical when the channel distribution is changing quickly. We propose to address this problem using a fast and sample-efficient (few-shot) domain adaptation method that does not change the encoder and decoder networks. Different from conventional training-time unsupervised or semi-supervised domain adaptation, here we have a trained autoencoder from a source distribution that we want to adapt (at test time) to a target distribution using only a small labeled dataset, and no unlabeled data. We focus on a generative channel model based on the Gaussian mixture density network (MDN), and propose a regularized, parameter-efficient adaptation of the MDN using a set of affine transformations. The learned affine transformations are then used to design an optimal transformation at the decoder input to compensate for the distribution shift, and effectively present to the decoder inputs close to the source distribution. Experiments on many simulated distribution changes common to the wireless setting, and a real mmWave FPGA testbed demonstrate the effectiveness of our method at adaptation using very few target domain samples.es
dc.description.sponsorshipMinisterio de Asuntos Económicos y Transformación Digitales
dc.description.sponsorshipMinisterio de Asuntos Económicos y Transformación Digitales
dc.description.sponsorshipComunidad de Madrides
dc.language.isoenges
dc.titleFew-Shot Domain Adaptation for End-to-End Communicationes
dc.typeconference objectes
dc.conference.date1-5 May 2023es
dc.conference.placeKigali, Rwandaes
dc.conference.titleInternational Conference on Learning Representations*
dc.event.typeconferencees
dc.pres.typepaperes
dc.rights.accessRightsopen accesses
dc.acronymICLR*
dc.rankA**
dc.relation.projectNameRISC-6G (Reconfigurable Intelligent Surfaces and Low-power Technologies for Communication and Sensing in 6G Mobile Networks)es
dc.relation.projectNameMAP-6G (Machine Learning-based Privacy Preserving Analytics for 6G Mobile Networks)es
dc.relation.projectNameCONTACT-CM (Contact Tracing with 5G and Beyond Networks)es
dc.description.refereedTRUEes
dc.description.statuspubes


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