Many research domains use data elicited from ‘citizen scientists’ when a direct measure of a process is expensive or infeasible. However, participants may report incorrect estimates or classifications due to their lack of skill. We demonstrate how Bayesian hierarchical models can be used to learn about latent variables of interest, while accounting for the participants’ abilities. The model is described in the context of an ecological application that involves crowdsourced classifications of georeferenced coral-reef images from the Great Barrier Reef, Australia. The latent variable of interest is the proportion of coral cover, which is a common indicator of coral reef health. The participants’ abilities are expressed in terms of sensitivity...
Machine Learning is widely used for mining collections, such as images, sounds, or texts, by classif...
Large compilations of heterogeneous environmental observations are increasingly available as public ...
Ecologists use classifications of individuals in categories to understand composition of populations...
Many research domains use data elicited from ‘citizen scientists’ when a direct measure of a process...
Citizen science projects have become increasingly popular in many fields, including ecology. However...
Volunteer citizen scientists are an invaluable resource for classifying large numbers of images that...
Networks of citizen scientists (CS) have the potential to observe biodiversity and species distribut...
Generalisation and uncertainty in ecological data are hugely problematic for environmental monitorin...
© 2018 Citizen Science, traditionally known as the engagement of amateur participants in research, i...
Public participation in scientific activities, often called citizen science, offers a possibility to...
We present an incremental Bayesian model which resolves key issues of crowd size and data quality fo...
Increased human population growth threatens the ecological functioning and goods and services provid...
Predictive biodiversity distribution models (BDM) are useful for understanding the structure and fun...
Predictive biodiversity distribution models (BDM) are useful for understanding the structure and fun...
We present an incremental Bayesian model that resolves key issues of crowd size and data quality for...
Machine Learning is widely used for mining collections, such as images, sounds, or texts, by classif...
Large compilations of heterogeneous environmental observations are increasingly available as public ...
Ecologists use classifications of individuals in categories to understand composition of populations...
Many research domains use data elicited from ‘citizen scientists’ when a direct measure of a process...
Citizen science projects have become increasingly popular in many fields, including ecology. However...
Volunteer citizen scientists are an invaluable resource for classifying large numbers of images that...
Networks of citizen scientists (CS) have the potential to observe biodiversity and species distribut...
Generalisation and uncertainty in ecological data are hugely problematic for environmental monitorin...
© 2018 Citizen Science, traditionally known as the engagement of amateur participants in research, i...
Public participation in scientific activities, often called citizen science, offers a possibility to...
We present an incremental Bayesian model which resolves key issues of crowd size and data quality fo...
Increased human population growth threatens the ecological functioning and goods and services provid...
Predictive biodiversity distribution models (BDM) are useful for understanding the structure and fun...
Predictive biodiversity distribution models (BDM) are useful for understanding the structure and fun...
We present an incremental Bayesian model that resolves key issues of crowd size and data quality for...
Machine Learning is widely used for mining collections, such as images, sounds, or texts, by classif...
Large compilations of heterogeneous environmental observations are increasingly available as public ...
Ecologists use classifications of individuals in categories to understand composition of populations...