Machine learning applications can benefit greatly from vast amounts of data, provided that reliable labels are available. Mobilizing crowds to annotate the unlabeled data is a common solution. Although the labels provided by the crowd are subjective and noisy, the wisdom of crowds can be captured by a variety of techniques. Finding the mean or finding the median of a sample׳s annotations are widely used approaches for finding the consensus label of that sample. Improving consensus extraction from noisy labels is a very popular topic, the main focus being binary label data. In this paper, we focus on crowd consensus estimation of continuous labels, which is also adaptable to ordinal or binary labels. Our approach is designed to work on situa...
International audienceLarge-scale annotated corpora have yielded impressive performance improvements...
The creation of golden standard datasets is a costly business. Optimally more than one judgment per ...
Crowdsourcing has revolutionised the way tasks can be completed but the process is frequently ineffi...
Real-world data for classification is often labeled by multiple annotators. For analyzing such data,...
With the advent of crowdsourcing services it has become quite cheap and reason-ably effective to get...
© 2019 Dr. Yuan LiThis thesis explores aggregation methods for crowdsourced annotations. Crowdsourci...
Crowdsourcing is widely used nowadays in machine learning for data labeling. Although in the traditi...
Crowdsourcing is a popular cheap alternative in machine learning for gathering information from a se...
Labeling large datasets has become faster, cheaper, and easier with the advent of crowdsourcing ser...
This paper presents an aggregation approach that learns a regression model from crowdsourced annotat...
Distributing labeling tasks among hundreds or thousands of annotators is an increasingly important m...
Received xxxxxxxx xx, xxxx; accepted xxxxxxxx xx, xxxx Abstract Crowdsourcing has been an effective ...
We propose novel algorithms for the problem of crowd- sourcing binary labels. Such binary labeling t...
With the proliferation of social media, gathering data has became cheaper and easier than before. Ho...
Over the last few years, deep learning has revolutionized the field of machine learning by dramatica...
International audienceLarge-scale annotated corpora have yielded impressive performance improvements...
The creation of golden standard datasets is a costly business. Optimally more than one judgment per ...
Crowdsourcing has revolutionised the way tasks can be completed but the process is frequently ineffi...
Real-world data for classification is often labeled by multiple annotators. For analyzing such data,...
With the advent of crowdsourcing services it has become quite cheap and reason-ably effective to get...
© 2019 Dr. Yuan LiThis thesis explores aggregation methods for crowdsourced annotations. Crowdsourci...
Crowdsourcing is widely used nowadays in machine learning for data labeling. Although in the traditi...
Crowdsourcing is a popular cheap alternative in machine learning for gathering information from a se...
Labeling large datasets has become faster, cheaper, and easier with the advent of crowdsourcing ser...
This paper presents an aggregation approach that learns a regression model from crowdsourced annotat...
Distributing labeling tasks among hundreds or thousands of annotators is an increasingly important m...
Received xxxxxxxx xx, xxxx; accepted xxxxxxxx xx, xxxx Abstract Crowdsourcing has been an effective ...
We propose novel algorithms for the problem of crowd- sourcing binary labels. Such binary labeling t...
With the proliferation of social media, gathering data has became cheaper and easier than before. Ho...
Over the last few years, deep learning has revolutionized the field of machine learning by dramatica...
International audienceLarge-scale annotated corpora have yielded impressive performance improvements...
The creation of golden standard datasets is a costly business. Optimally more than one judgment per ...
Crowdsourcing has revolutionised the way tasks can be completed but the process is frequently ineffi...