Latency-Distortion Tradeoffs in Communicating Classification Results over Noisy Channels
Noel Teku, Sudarshan Adiga, Ravi Tandon

TL;DR
This paper investigates the trade-off between latency and distortion when transmitting classifier decisions over noisy channels, proposing quantization techniques and analyzing their effects on communication efficiency in time-sensitive applications.
Contribution
It introduces a comprehensive framework analyzing latency-distortion trade-offs using various quantization methods and highlights the importance of joint design for optimal performance.
Findings
Sparse lattice quantization minimizes latency for high-dimensional vectors.
Joint source-channel design is crucial for balancing latency and distortion.
Results are validated on AWGN and fading channels.
Abstract
In this work, the problem of communicating decisions of a classifier over a noisy channel is considered. With machine learning based models being used in variety of time-sensitive applications, transmission of these decisions in a reliable and timely manner is of significant importance. To this end, we study the scenario where a probability vector (representing the decisions of a classifier) at the transmitter, needs to be transmitted over a noisy channel. Assuming that the distortion between the original probability vector and the reconstructed one at the receiver is measured via f-divergence, we study the trade-off between transmission latency and the distortion. We completely analyze this trade-off using uniform, lattice, and sparse lattice-based quantization techniques to encode the probability vector by first characterizing bit budgets for each technique given a requirement on the…
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Taxonomy
TopicsNeural Networks and Applications
