Unsupervised Meta Learning for One Shot Title Compression in Voice Commerce
Snehasish Mukherjee

TL;DR
This paper introduces an unsupervised meta learning approach for one-shot product title compression in voice commerce, enabling dynamic, category-transferable compression models trained with minimal data.
Contribution
It proposes a novel unsupervised meta training framework with a task generation algorithm and a two-model meta learner for effective one-shot title compression.
Findings
Achieves an F1 score of 0.8412, surpassing baselines by 25 points.
Demonstrates effective transfer to new categories with only one example.
Outperforms non-parametric approaches in experiments.
Abstract
Product title compression for voice and mobile commerce is a well studied problem with several supervised models proposed so far. However these models have 2 major limitations; they are not designed to generate compressions dynamically based on cues at inference time, and they do not transfer well to different categories at test time. To address these shortcomings we model title compression as a meta learning problem where we ask can we learn a title compression model given only 1 example compression? We adopt an unsupervised approach to meta training by proposing an automatic task generation algorithm that models the observed label generation process as the outcome of 4 unobserved processes. We create parameterized approximations to each of these 4 latent processes to get a principled way of generating random compression rules, which are treated as different tasks. For our main meta…
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Taxonomy
TopicsSpeech Recognition and Synthesis · Music and Audio Processing · Natural Language Processing Techniques
