Semantics Alignment via Split Learning for Resilient Multi-User Semantic Communication

  • Choi, Jinhyuk
  • Park, Jihong
  • Ko, Seung-Woo
  • Choi, Jinho
  • Bennis, Mehdi
  • 외 1명
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초록

Recent studies on semantic communication commonly rely on neural network (NN) based transceivers such as deep joint source and channel coding (DeepJSCC). Unlike traditional transceivers, these neural transceivers are trainable using actual source data and channels, enabling them to extract and communicate semantics. On the flip side, each neural transceiver is inherently biased towards specific source data and channels, making different transceivers difficult to understand intended semantics, particularly upon their initial encounter. To align semantics over multiple neural transceivers, we propose a distributed learning based solution, which leverages split learning (SL) and partial NN fine-tuning techniques. In this method, referred to as SL with layer freezing (SLF), each encoder downloads a misaligned decoder, and locally fine-tunes a fraction of these encoder-decoder NN layers. By adjusting this fraction, SLF controls computing and communication costs. Simulation results confirm the effectiveness of SLF in aligning semantics under different source data and channel dissimilarities, in terms of classification accuracy, reconstruction errors, and recovery time for comprehending intended semantics from misalignment.

키워드

SemanticsTransceiversTask analysisArtificial neural networksDecodingTrainingError probabilityDeepJSCCfine-tuningneural transceiversemantic communicationsplit learning
제목
Semantics Alignment via Split Learning for Resilient Multi-User Semantic Communication
저자
Choi, JinhyukPark, JihongKo, Seung-WooChoi, JinhoBennis, MehdiKim, Seong-Lyun
DOI
10.1109/TVT.2024.3410380
발행일
2024-10
유형
Article
저널명
IEEE Transactions on Vehicular Technology
73
10
페이지
15815 ~ 15819