To assist in the development of machine learning methods for automated classification of spectroscopic data, we have generated a universal synthetic dataset that can be used for model validation. This dataset contains artificial spectra designed to represent experimental measurements from techniques including X-ray diffraction, nuclear magnetic resonance, and Raman spectroscopy. The dataset generation process features customizable parameters, such as scan length and peak count, which can be adjusted to fit the problem at hand. As an initial benchmark, we simulated a dataset containing 35,000 spectra based on 500 unique classes. To automate the classification of this data, eight different machine learning architectures were evaluated. From t...
Abstract. This paper presents a software package that allows chemists to analyze spectroscopy data u...
Identifying chemical compounds is essential in several areas of science and engineering. Laser-based...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
AN ABSTRACT OF THE THESIS OFChristopher T. Mandrell, for the Master of Science degree in Physics, pr...
Motivation: Common contemporary practice within the nuclear magnetic resonance (NMR) metabolomics co...
Treatment of spectral information is an essential tool for the examination of various cultural herit...
Raman spectra are examples of high dimensional data that can often be limited in the number of sampl...
A doctoral dissertation completed for the degree of Doctor of Science (Technology) to be defended wi...
Motivation: Common contemporary practice within the nuclear magnetic resonance (NMR) metabolomics co...
Machine learning has become more and more popular in computational chemistry, as well as in the impo...
Photometric redshift estimation algorithms are often based on representative data from observational...
The automated identification and quantification of illicit materials using Raman spectroscopy is of ...
Data volumes collected in many scientific fields have long exceeded the capacity of human comprehens...
Python code and data for the submission "Machine Learning Enhanced Spectroscopic Analysis: Towards A...
The analysis of infrared spectroscopy of substances is a non-invasive measurement tech nique that ca...
Abstract. This paper presents a software package that allows chemists to analyze spectroscopy data u...
Identifying chemical compounds is essential in several areas of science and engineering. Laser-based...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
AN ABSTRACT OF THE THESIS OFChristopher T. Mandrell, for the Master of Science degree in Physics, pr...
Motivation: Common contemporary practice within the nuclear magnetic resonance (NMR) metabolomics co...
Treatment of spectral information is an essential tool for the examination of various cultural herit...
Raman spectra are examples of high dimensional data that can often be limited in the number of sampl...
A doctoral dissertation completed for the degree of Doctor of Science (Technology) to be defended wi...
Motivation: Common contemporary practice within the nuclear magnetic resonance (NMR) metabolomics co...
Machine learning has become more and more popular in computational chemistry, as well as in the impo...
Photometric redshift estimation algorithms are often based on representative data from observational...
The automated identification and quantification of illicit materials using Raman spectroscopy is of ...
Data volumes collected in many scientific fields have long exceeded the capacity of human comprehens...
Python code and data for the submission "Machine Learning Enhanced Spectroscopic Analysis: Towards A...
The analysis of infrared spectroscopy of substances is a non-invasive measurement tech nique that ca...
Abstract. This paper presents a software package that allows chemists to analyze spectroscopy data u...
Identifying chemical compounds is essential in several areas of science and engineering. Laser-based...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...