2014
DOI: 10.1890/es13-00359.1
|View full text |Cite
|
Sign up to set email alerts
|

Harnessing the power of big data: infusing the scientific method with machine learning to transform ecology

Abstract: Abstract. Most efforts to harness the power of big data for ecology and environmental sciences focus on data and metadata sharing, standardization, and accuracy. However, many scientists have not accepted the data deluge as an integral part of their research because the current scientific method is not scalable to large, complex datasets. Here, we explain how integrating a data-intensive, machine learning approach with a hypothesis-driven, mechanistic approach can lead to a novel knowledge, learning, analysis … Show more

Help me understand this report

Search citation statements

Order By: Relevance

Paper Sections

Select...
1
1
1

Citation Types

0
98
0
1

Year Published

2016
2016
2021
2021

Publication Types

Select...
8
1

Relationship

0
9

Authors

Journals

citations
Cited by 137 publications
(99 citation statements)
references
References 41 publications
0
98
0
1
Order By: Relevance
“…Previous discussions about working with "big" ecological data have focused largely on cyber-infrastructure capabilities, data management (Michener and Jones, 2012;Gilbert et al, 2014), and the need for datadriven approaches (Kelling et al, 2009). While novel analytical techniques such as machine learning and crowd-sourcing for processing large and complex ecological data sets are increasingly reported in the terrestrial literature (Kelling et al, 2013;Peters et al, 2014), marine examples are limited (Wiley et al, 2003;Dugan et al, 2013;Millie et al, 2013;Shamir et al, 2014). Given this paucity and the need to use "big" biological oceanography and marine ecology data for rapid assessment of ocean health and adaptive management of ecosystems, we present here an evolution of approaches applied to the problem of efficiently classifying tens of millions of images of individual plankters generated by ISIIS.…”
mentioning
confidence: 99%
“…Previous discussions about working with "big" ecological data have focused largely on cyber-infrastructure capabilities, data management (Michener and Jones, 2012;Gilbert et al, 2014), and the need for datadriven approaches (Kelling et al, 2009). While novel analytical techniques such as machine learning and crowd-sourcing for processing large and complex ecological data sets are increasingly reported in the terrestrial literature (Kelling et al, 2013;Peters et al, 2014), marine examples are limited (Wiley et al, 2003;Dugan et al, 2013;Millie et al, 2013;Shamir et al, 2014). Given this paucity and the need to use "big" biological oceanography and marine ecology data for rapid assessment of ocean health and adaptive management of ecosystems, we present here an evolution of approaches applied to the problem of efficiently classifying tens of millions of images of individual plankters generated by ISIIS.…”
mentioning
confidence: 99%
“…) and for integrated, iterative approaches to data modeling with learning (Peters et al . ) has more recently been discussed. In an international context, challenges to data sharing include unequal distribution among networks of information management expertise, user‐friendly tools, and resources (Vanderbilt et al .…”
Section: Design Principles For Seosmentioning
confidence: 99%
“…The lack of accessibility of publications and technical content (e.g., located behind paywalls of publishers or professional societies) is a major impediment to text mining [Peters et al, 2014;Shemilt et al, 2014]. Text and data-mining (TDM) for non-commercial research purposes is explicitly allowed under UK copyright law if the researcher has lawful access (i.e., through a subscription or license) to the material (https://www.jisc.ac.uk/guides/text-and-data-mining-copyright-exception).…”
Section: Future Directions For Swm-related Kmmentioning
confidence: 99%