TY - JOUR
T1 - Automatic data acquisition for deep learning
AU - Liu, Jiabin
AU - Zhu, Fu
AU - Chai, Chengliang
AU - Luo, Yuyu
AU - Tang, Nan
N1 - Publisher Copyright:
© The authors.
PY - 2021
Y1 - 2021
N2 - Deep learning (DL) has widespread applications and has revolutionized many industries. Although automated machine learning (AutoML) can help us away from coding for DL models, the acquisition of lots of high-quality data for model training remains a main bottleneck for many DL projects, simply because it requires high human cost. Despite many works on weak supervision (i.e., adding weak labels to seen data) and data augmentation (i.e., generating more data based on seen data), automatically acquiring training data, via smartly searching a pool of training data collected from open ML benchmarks and data markets, is not explored. In this demonstration, we demonstrate a new system, automatic data acquisition (AutoData), which automatically searches training data from a heterogeneous data repository and interacts with AutoML. It faces two main challenges. (1) How to search high-quality data from a large repository for a given DL task? (2) How does AutoData interact with AutoML to guide the search? To address these challenges, we propose a reinforcement learning (RL)-based framework in AutoData to guide the iterative search process. AutoData encodes current training data and feedbacks of AutoML, learns a policy to search fresh data, and trains in iterations. We demonstrate with two real-life scenarios, image classification and relational data prediction, showing that AutoData can select high-quality data to improve the model.
AB - Deep learning (DL) has widespread applications and has revolutionized many industries. Although automated machine learning (AutoML) can help us away from coding for DL models, the acquisition of lots of high-quality data for model training remains a main bottleneck for many DL projects, simply because it requires high human cost. Despite many works on weak supervision (i.e., adding weak labels to seen data) and data augmentation (i.e., generating more data based on seen data), automatically acquiring training data, via smartly searching a pool of training data collected from open ML benchmarks and data markets, is not explored. In this demonstration, we demonstrate a new system, automatic data acquisition (AutoData), which automatically searches training data from a heterogeneous data repository and interacts with AutoML. It faces two main challenges. (1) How to search high-quality data from a large repository for a given DL task? (2) How does AutoData interact with AutoML to guide the search? To address these challenges, we propose a reinforcement learning (RL)-based framework in AutoData to guide the iterative search process. AutoData encodes current training data and feedbacks of AutoML, learns a policy to search fresh data, and trains in iterations. We demonstrate with two real-life scenarios, image classification and relational data prediction, showing that AutoData can select high-quality data to improve the model.
UR - http://www.scopus.com/inward/record.url?scp=85119996142&partnerID=8YFLogxK
U2 - 10.14778/3476311.3476333
DO - 10.14778/3476311.3476333
M3 - Conference article
AN - SCOPUS:85119996142
SN - 2150-8097
VL - 14
SP - 2739
EP - 2742
JO - Proceedings of the VLDB Endowment
JF - Proceedings of the VLDB Endowment
IS - 12
T2 - 47th International Conference on Very Large Data Bases, VLDB 2021
Y2 - 16 August 2021 through 20 August 2021
ER -