NASA Technical Reports Server (NTRS) 20220003102: MLtool: Universal Supervised Machine Learning Tool To Model Tabulated Data MLtool Python Code - Info and Reading Options
By NASA Technical Reports Server (NTRS)
"NASA Technical Reports Server (NTRS) 20220003102: MLtool: Universal Supervised Machine Learning Tool To Model Tabulated Data MLtool Python Code" and the language of the book is English.
“NASA Technical Reports Server (NTRS) 20220003102: MLtool: Universal Supervised Machine Learning Tool To Model Tabulated Data MLtool Python Code” Metadata:
- Title: ➤ NASA Technical Reports Server (NTRS) 20220003102: MLtool: Universal Supervised Machine Learning Tool To Model Tabulated Data MLtool Python Code
- Author: ➤ NASA Technical Reports Server (NTRS)
- Language: English
Edition Identifiers:
- Internet Archive ID: NASA_NTRS_Archive_20220003102
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"NASA Technical Reports Server (NTRS) 20220003102: MLtool: Universal Supervised Machine Learning Tool To Model Tabulated Data MLtool Python Code" Description:
The Internet Archive:
Machine Learning (ML) is a subfield of Artificial Intelligence that gives computers the ability to learn from past data without being explicitly programmed. The predictive capabilities of ML models have already been used to facilitate several scientific breakthroughs. However, the practical application of ML is often limited due to the gaps in technical knowledge of its users. The common issue faced by many scientific researchers is the inability to choose the appropriate ML pipelines that are needed to treat real-world data, which is often sparse and noisy. To solve this problem, we have developed an automated Machine Learning tool (MLtool) that includes a set of ML algorithms and approaches to aid scientific researchers. The current version of MLtool is implemented as an object-oriented Python code that is easily extensible. It includes 44 different regression algorithms used to model data. MLtool helps users select the best model for their data, based on the scoring metrics used. Besides regression algorithms, MLtool also includes a suite of pre- and post-processing techniques such as missing value imputation, categorical variable encoding, input feature normalization, uncertainty quantification, exploratory data analysis (EDA), etc. MLtool was tested on several publicly available multi-dimensional data sets and was found capable of making accurate predictions.
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- Added Date: 2023-05-30 04:04:33
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