Data Collection and Quality Challenges in Deep Learning: A Data-Centric AI Perspective

12/13/2021
by   Steven Euijong Whang, et al.
0

Software 2.0 is a fundamental shift in software engineering where machine learning becomes the new software, powered by big data and computing infrastructure. As a result, software engineering needs to be re-thought where data becomes a first-class citizen on par with code. One striking observation is that 80-90 Without good data, even the best machine learning algorithms cannot perform well. As a result, data-centric AI practices are now becoming mainstream. Unfortunately, many datasets in the real world are small, dirty, biased, and even poisoned. In this survey, we study the research landscape for data collection and data quality primarily for deep learning applications. Data collection is important because there is lesser need for feature engineering for recent deep learning approaches, but instead more need for large amounts of data. For data quality, we study data validation and data cleaning techniques. Even if the data cannot be fully cleaned, we can still cope with imperfect data during model training where using robust model training techniques. In addition, while bias and fairness have been less studied in traditional data management research, these issues become essential topics in modern machine learning applications. We thus study fairness measures and unfairness mitigation techniques that can be applied before, during, or after model training. We believe that the data management community is well poised to solve problems in these directions.

READ FULL TEXT

page 12

page 15

research
11/08/2018

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

Data collection is a major bottleneck in machine learning and an active ...
research
04/22/2019

Data Cleaning for Accurate, Fair, and Robust Models: A Big Data - AI Integration Approach

The wide use of machine learning is fundamentally changing the software ...
research
10/28/2022

Addressing Bias in Face Detectors using Decentralised Data collection with incentives

Recent developments in machine learning have shown that successful model...
research
12/29/2022

Condensed Representation of Machine Learning Data

Training of a Machine Learning model requires sufficient data. The suffi...
research
01/15/2021

Responsible AI Challenges in End-to-end Machine Learning

Responsible AI is becoming critical as AI is widely used in our everyday...
research
08/22/2023

Collect, Measure, Repeat: Reliability Factors for Responsible AI Data Collection

The rapid entry of machine learning approaches in our daily activities a...
research
03/10/2020

Slice Tuner: A Selective Data Collection Framework for Accurate and Fair Machine Learning Models

As machine learning becomes democratized in the era of Software 2.0, one...

Please sign up or login with your details

Forgot password? Click here to reset