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Identifying plant wax inputs in lake sediments using machine learning
M.D. Peaple
, J.E. Tierney
, D. McGee
, T.K. Lowenstein
, T. Bhattacharya
, S.J. Feakins
Continental Scientific Drilling Facility
Research output
:
Contribution to journal
›
Article
›
peer-review
21
Scopus citations
Overview
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Keyphrases
Machine Learning
100%
Lake Sediments
100%
Plant Wax
100%
Macrophytes
80%
Desert Plants
60%
Kenya
40%
Machine Learning Techniques
40%
Plant Community
40%
Chain Length Distribution
40%
Abundance Distribution
40%
Lake Salinity
40%
Modern Plants
40%
Archaeol
40%
Caldarchaeol
40%
Vegetation Identification
40%
Ecometrics
40%
Identification Model
40%
Woodland
20%
Classification Accuracy
20%
Plant Distribution
20%
Sediment Core
20%
Ponds
20%
Plant Type
20%
Type Distribution
20%
Vegetation Type
20%
Published Data
20%
Machine Learning Models
20%
Homologous Series
20%
Conifer Forest
20%
N-alkanes
20%
Complex Information
20%
Xeric
20%
Compound Classes
20%
Lacustrine Sediments
20%
Mojave Desert
20%
SLAPP
20%
San Bernardino Mountains
20%
Alkanoic Acids
20%
Given Information
20%
Searle
20%
Linear Mixing Model
20%
Hyperarid
20%
Agricultural and Biological Sciences
Plant Wax
100%
Learning System
100%
Machine Learning
100%
Macrophyte
80%
Plant Community
40%
Lacustrine Sediments
20%
Vegetation Type
20%