Learn Before
Machine Learning Dataset Quality
The success of a machine learning model heavily depends on having the right data, as encapsulated by the principle 'garbage in, garbage out.' If a dataset contains mistakes, features that do not predict the target, or reflects societal prejudices by under-representing certain groups, the learning process will fail or produce biased, harmful results.
0
1
Tags
D2L
Dive into Deep Learning @ D2L
Related
Characteristics of a dataset
Sample Datasets
The first step to analyze a dataset:
Wolfram's four classes of empirical data
Data Distributions
Supervised Learning
Machine Learning Model
Data Quality
Relational Database
Deep Learning Data Types
Data Processing Bottleneck
Machine Learning Dataset Quality
Machine Learning Example
CSV File
Data Batch
Training vs. Validation Data Reading Order