The supervised learning-based recommendation models, whose infrastructures are sufficient training samples with high quality, have been widely applied in many domains. In the era of big data with the explosive growth of data volume, training samples should be labelled timely and accurately to guarantee the excellent recommendation performance of supervised learning-based models. Machine annotation cannot complete the tasks of labelling training samples with high quality because of limited machine intelligence. Although expert annotation can achieve a high accuracy, it requires a long time as well as more resources. As a new way of human intelligence to participate in machine computing, crowdsourcing annotation makes up for shortages of mach...
Crowdsourcing platforms offer a practical solution to the problem of afford-ably annotating large da...
This paper presents an aggregation approach that learns a regression model from crowdsourced annotat...
This paper studies the active learning problem in crowdsourcing settings, where multiple imperfect a...
With crowdsourcing systems, labels can be obtained with low cost, which facilitates the creation of ...
Crowdsourcing is a popular cheap alternative in machine learning for gathering information from a se...
The success of deep learning in image recognition is substantially driven by large-scale, well-curat...
Crowdsourcing is widely used nowadays in machine learning for data labeling. Although in the traditi...
With the advent of crowdsourcing services it has become quite cheap and reason-ably effective to get...
International audienceLarge-scale annotated corpora have yielded impressive performance improvements...
With the proliferation of social media, gathering data has became cheaper and easier than before. Ho...
Crowdsourcing services like Amazon’s Mechan-ical Turk have facilitated and greatly expedited the man...
Labeling large datasets has become faster, cheaper, and easier with the advent of crowdsourcing ser...
Machine learning applications can benefit greatly from vast amounts of data, provided that reliable ...
This paper presents Scalpel-CD, a first-of-its-kind system that leverages both human and machine int...
Although supervised learning requires a labeled dataset, obtaining labels from experts is generally ...
Crowdsourcing platforms offer a practical solution to the problem of afford-ably annotating large da...
This paper presents an aggregation approach that learns a regression model from crowdsourced annotat...
This paper studies the active learning problem in crowdsourcing settings, where multiple imperfect a...
With crowdsourcing systems, labels can be obtained with low cost, which facilitates the creation of ...
Crowdsourcing is a popular cheap alternative in machine learning for gathering information from a se...
The success of deep learning in image recognition is substantially driven by large-scale, well-curat...
Crowdsourcing is widely used nowadays in machine learning for data labeling. Although in the traditi...
With the advent of crowdsourcing services it has become quite cheap and reason-ably effective to get...
International audienceLarge-scale annotated corpora have yielded impressive performance improvements...
With the proliferation of social media, gathering data has became cheaper and easier than before. Ho...
Crowdsourcing services like Amazon’s Mechan-ical Turk have facilitated and greatly expedited the man...
Labeling large datasets has become faster, cheaper, and easier with the advent of crowdsourcing ser...
Machine learning applications can benefit greatly from vast amounts of data, provided that reliable ...
This paper presents Scalpel-CD, a first-of-its-kind system that leverages both human and machine int...
Although supervised learning requires a labeled dataset, obtaining labels from experts is generally ...
Crowdsourcing platforms offer a practical solution to the problem of afford-ably annotating large da...
This paper presents an aggregation approach that learns a regression model from crowdsourced annotat...
This paper studies the active learning problem in crowdsourcing settings, where multiple imperfect a...