LGHCJul 15, 2023

Visual Analytics For Machine Learning: A Data Perspective Survey

arXiv:2307.07712v144 citationsh-index: 49
Originality Synthesis-oriented
AI Analysis

This survey organizes the growing field of VIS4ML from a data perspective, aiding researchers and practitioners in navigating existing works and guiding future developments.

The authors conducted a systematic survey of visualization for machine learning (VIS4ML) works, focusing on data-centric tasks to understand, diagnose, and refine ML models, analyzing 143 papers to identify research trends and future directions.

The past decade has witnessed a plethora of works that leverage the power of visualization (VIS) to interpret machine learning (ML) models. The corresponding research topic, VIS4ML, keeps growing at a fast pace. To better organize the enormous works and shed light on the developing trend of VIS4ML, we provide a systematic review of these works through this survey. Since data quality greatly impacts the performance of ML models, our survey focuses specifically on summarizing VIS4ML works from the data perspective. First, we categorize the common data handled by ML models into five types, explain the unique features of each type, and highlight the corresponding ML models that are good at learning from them. Second, from the large number of VIS4ML works, we tease out six tasks that operate on these types of data (i.e., data-centric tasks) at different stages of the ML pipeline to understand, diagnose, and refine ML models. Lastly, by studying the distribution of 143 surveyed papers across the five data types, six data-centric tasks, and their intersections, we analyze the prospective research directions and envision future research trends.

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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