Datasets
Standard Dataset
Brain-computer interface-based
- Citation Author(s):
- Submitted by:
- Peng Li
- Last updated:
- Thu, 07/13/2023 - 02:28
- DOI:
- 10.21227/gkfx-h637
- Data Format:
- License:
- Categories:
- Keywords:
Abstract
This article provides an introduction to the field of datasets, including their types, characteristics, and applications. Datasets refer to collections of data that have been organized for specific purposes. They can come in various forms, including structured data, unstructured data, and semi-structured data. Each type of dataset has its own unique characteristics and uses. For example, structured data typically includes datasets that have been organized into tables and rows, such as spreadsheets or databases, while unstructured data typically includes text, images, and videos. Semi-structured data, on the other hand, combines elements of structured and unstructured data and typically includes datasets that have some organization but are not in a traditional table format. Applications of datasets span a wide range of fields, including machine learning, artificial intelligence, marketing, social science research, and more. By understanding the different types of datasets and their characteristics, users can choose the appropriate datasets for their specific projects and goals.
This article provides an introduction to the field of datasets, including their types, characteristics, and applications. Datasets refer to collections of data that have been organized for specific purposes. They can come in various forms, including structured data, unstructured data, and semi-structured data. Each type of dataset has its own unique characteristics and uses. For example, structured data typically includes datasets that have been organized into tables and rows, such as spreadsheets or databases, while unstructured data typically includes text, images, and videos. Semi-structured data, on the other hand, combines elements of structured and unstructured data and typically includes datasets that have some organization but are not in a traditional table format. Applications of datasets span a wide range of fields, including machine learning, artificial intelligence, marketing, social science research, and more. By understanding the different types of datasets and their characteristics, users can choose the appropriate datasets for their specific projects and goals.
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