LGMLNov 8, 2018

A Survey on Data Collection for Machine Learning: a Big Data -- AI Integration Perspective

arXiv:1811.03402v2802 citations
Originality Synthesis-oriented
AI Analysis

It addresses the critical issue of data collection for machine learning practitioners, especially in deep learning applications, but is incremental as it synthesizes existing research.

This survey tackles the bottleneck of data collection in machine learning by comprehensively studying it from a data management perspective, covering data acquisition, labeling, and improvement, and providing guidelines and research challenges.

Data collection is a major bottleneck in machine learning and an active research topic in multiple communities. There are largely two reasons data collection has recently become a critical issue. First, as machine learning is becoming more widely-used, we are seeing new applications that do not necessarily have enough labeled data. Second, unlike traditional machine learning, deep learning techniques automatically generate features, which saves feature engineering costs, but in return may require larger amounts of labeled data. Interestingly, recent research in data collection comes not only from the machine learning, natural language, and computer vision communities, but also from the data management community due to the importance of handling large amounts of data. In this survey, we perform a comprehensive study of data collection from a data management point of view. Data collection largely consists of data acquisition, data labeling, and improvement of existing data or models. We provide a research landscape of these operations, provide guidelines on which technique to use when, and identify interesting research challenges. The integration of machine learning and data management for data collection is part of a larger trend of Big data and Artificial Intelligence (AI) integration and opens many opportunities for new research.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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