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AutoSmart: An Efficient and Automatic Machine Learning framework for Temporal Relational Data

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arxiv 2109.04115 v1 pith:JM3DFVCN submitted 2021-09-09 cs.LG

AutoSmart: An Efficient and Automatic Machine Learning framework for Temporal Relational Data

classification cs.LG
keywords dataautomaticframeworklearningmachinerelationalsolutiontemporal
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Temporal relational data, perhaps the most commonly used data type in industrial machine learning applications, needs labor-intensive feature engineering and data analyzing for giving precise model predictions. An automatic machine learning framework is needed to ease the manual efforts in fine-tuning the models so that the experts can focus more on other problems that really need humans' engagement such as problem definition, deployment, and business services. However, there are three main challenges for building automatic solutions for temporal relational data: 1) how to effectively and automatically mining useful information from the multiple tables and the relations from them? 2) how to be self-adjustable to control the time and memory consumption within a certain budget? and 3) how to give generic solutions to a wide range of tasks? In this work, we propose our solution that successfully addresses the above issues in an end-to-end automatic way. The proposed framework, AutoSmart, is the winning solution to the KDD Cup 2019 of the AutoML Track, which is one of the largest AutoML competition to date (860 teams with around 4,955 submissions). The framework includes automatic data processing, table merging, feature engineering, and model tuning, with a time\&memory controller for efficiently and automatically formulating the models. The proposed framework outperforms the baseline solution significantly on several datasets in various domains.

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