Crowdsourcing has been proven to be an effective and efficient tool to annotate large data-sets. User annotations are often noisy, so methods to combine the annotations to produce reliable estimates of the ground truth are necessary. We claim that considering the existence of clusters of users in this combination step can improve the performance. This is especially important in early stages of crowdsourcing implementations, where the number of annotations is low. At this stage there is not enough information to accurately estimate the bias introduced by each annotator separately, so we have to resort to models that consider the statistical links among them. In addition, finding these clusters is interesting in itself as knowing the behavior...
A key problem in crowdsourcing is the aggregation of judgments of proportions. For example, workers ...
The analysis of crowdsourced annotations in natural language processing is concerned with identifyin...
© 2018, The Author(s). The aggregation of k-ary preferences is a novel ranking problem that plays an...
Crowdsourcing has been proven to be an effective and efficient tool to annotate large data-sets. Use...
Crowdsourcing has been proven to be an effective and efficient tool to annotate large datasets. User...
© 2019 Dr. Yuan LiThis thesis explores aggregation methods for crowdsourced annotations. Crowdsourci...
Crowdsourcing has revolutionised the way tasks can be completed but the process is frequently ineffi...
Biased labelers are a systemic problem in crowdsourcing, and a comprehensive toolbox for handling th...
Crowd-sourcing is a cheap and popular means of creating training and evaluation datasets for machine...
A key challenge in crowdsourcing is inferring the ground truth from noisy and unreliable data. To do...
International audienceRelying on a single imperfect human annotator is not recommended in real crowd...
We present a clustered personal classifier method (CPC method) that jointly estimates a classifier a...
Crowdsourcing has emerged as a core component of data science pipelines. From collected noisy worker...
This paper presents an aggregation approach that learns a regression model from crowdsourced annotat...
A crowdsourcing experiment in which viewers (the “crowd”) of a British Broadcasting Corporation (BBC...
A key problem in crowdsourcing is the aggregation of judgments of proportions. For example, workers ...
The analysis of crowdsourced annotations in natural language processing is concerned with identifyin...
© 2018, The Author(s). The aggregation of k-ary preferences is a novel ranking problem that plays an...
Crowdsourcing has been proven to be an effective and efficient tool to annotate large data-sets. Use...
Crowdsourcing has been proven to be an effective and efficient tool to annotate large datasets. User...
© 2019 Dr. Yuan LiThis thesis explores aggregation methods for crowdsourced annotations. Crowdsourci...
Crowdsourcing has revolutionised the way tasks can be completed but the process is frequently ineffi...
Biased labelers are a systemic problem in crowdsourcing, and a comprehensive toolbox for handling th...
Crowd-sourcing is a cheap and popular means of creating training and evaluation datasets for machine...
A key challenge in crowdsourcing is inferring the ground truth from noisy and unreliable data. To do...
International audienceRelying on a single imperfect human annotator is not recommended in real crowd...
We present a clustered personal classifier method (CPC method) that jointly estimates a classifier a...
Crowdsourcing has emerged as a core component of data science pipelines. From collected noisy worker...
This paper presents an aggregation approach that learns a regression model from crowdsourced annotat...
A crowdsourcing experiment in which viewers (the “crowd”) of a British Broadcasting Corporation (BBC...
A key problem in crowdsourcing is the aggregation of judgments of proportions. For example, workers ...
The analysis of crowdsourced annotations in natural language processing is concerned with identifyin...
© 2018, The Author(s). The aggregation of k-ary preferences is a novel ranking problem that plays an...