Timely Communications for Remote Inference
Md Kamran Chowdhury Shisher, Yin Sun, I-Hong Hou

TL;DR
This paper investigates how data freshness affects remote inference accuracy, revealing non-monotonic relationships and proposing optimal scheduling policies for feature transmission to improve inference performance.
Contribution
It introduces a general selection-from-buffer model, analyzes the impact of data freshness on inference, and develops asymptotically optimal scheduling policies for multi-source systems.
Findings
Inference error can be non-monotonic with Age of Information.
Proposed scheduling policies outperform existing methods.
Optimal policies are derived for single and multi-source systems.
Abstract
In this paper, we analyze the impact of data freshness on remote inference systems, where a pre-trained neural network blue infers a time-varying target (e.g., the locations of vehicles and pedestrians) based on features (e.g., video frames) observed at a sensing node (e.g., a camera). One might expect that the performance of a remote inference system degrades monotonically as the feature becomes stale. Using an information-theoretic analysis, we show that this is true if the feature and target data sequence can be closely approximated as a Markov chain, whereas it is not true if the data sequence is far from being Markovian. Hence, the inference error is a function of Age of Information (AoI), where the function could be non-monotonic. To minimize the inference error in real-time, we propose a new "selection-from-buffer" model for sending the features, which is more general than the…
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