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ALT: An Automatic System for Long Tail Scenario Modeling

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arxiv 2305.11390 v1 pith:WU27TCWV submitted 2023-05-19 cs.LG cs.AI

ALT: An Automatic System for Long Tail Scenario Modeling

classification cs.LG cs.AI
keywords systemautomaticproblemessentiallearninglongmodelmodeling
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In this paper, we consider the problem of long tail scenario modeling with budget limitation, i.e., insufficient human resources for model training stage and limited time and computing resources for model inference stage. This problem is widely encountered in various applications, yet has received deficient attention so far. We present an automatic system named ALT to deal with this problem. Several efforts are taken to improve the algorithms used in our system, such as employing various automatic machine learning related techniques, adopting the meta learning philosophy, and proposing an essential budget-limited neural architecture search method, etc. Moreover, to build the system, many optimizations are performed from a systematic perspective, and essential modules are armed, making the system more feasible and efficient. We perform abundant experiments to validate the effectiveness of our system and demonstrate the usefulness of the critical modules in our system. Moreover, online results are provided, which fully verified the efficacy of our system.

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