2020
DOI: 10.1186/s13638-020-01697-2
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Learning deep networks with crowdsourcing for relevance evaluation

Abstract: In this paper, we propose a novel relevance evaluation method using labels collected from crowdsourcing. The proposed method not only predicts the relevance between query texts and responses in information retrieval systems but also performs the label aggregation tasks simultaneously. It first merges two kinds of heterogeneous data (i.e., image and query text) and constructs a CNN-like deep neural network. Then, on the top of its softmax layer, an additional layer was built to model the crowd workers. Finally,… Show more

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Cited by 4 publications
(4 citation statements)
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References 39 publications
(39 reference statements)
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“…Another method is crowdsourcing, where experts perform small tasks to address difficult problems. There are many applications of this approach, for example, a query-oriented system for data cleaning with oracle crowds [5] or a technique that improves the quality of labels by repeatedly labeling each sample and creating integrated labels [34]. Another technique is metamorphic testing, originally developed to evaluate software quality and verify relations among a group of test outputs with corresponding test inputs [36].…”
Section: Related Workmentioning
confidence: 99%
“…Another method is crowdsourcing, where experts perform small tasks to address difficult problems. There are many applications of this approach, for example, a query-oriented system for data cleaning with oracle crowds [5] or a technique that improves the quality of labels by repeatedly labeling each sample and creating integrated labels [34]. Another technique is metamorphic testing, originally developed to evaluate software quality and verify relations among a group of test outputs with corresponding test inputs [36].…”
Section: Related Workmentioning
confidence: 99%
“…Among various types of CAPTCHA, image annotation ones could capture a remarkable attention so that the leader in the field, reCAPTCHA, is leveraging this mechanism. From another perspective, the need for annotated images is not a decreasing one, since, as an example, machine (deep) learning algorithms require such knowledge for the training phase and/or other tasks (Vaughan, 2017;Russakovsky et al, 2015;Wu et al, 2020) as well as ground truth to evaluate models. Moreover, the CAPTCHA-based image annotation mechanics can be inspirational for designing innovative image annotation and segmentation frameworks, such as the recent work introduced in (Dang et al, 2022), Vessel-CAPTCHA, aimed to segment and annotate 3D brain vessel images by using a CAPTCHA-like mechanism.…”
Section: Research Motivationsmentioning
confidence: 99%
“…From another perspective, the need for annotated images is not a decreasing one, since, as an example, machine (deep) learning algorithms require such knowledge for the training phase and/or other tasks (Vaughan, 2017; Russakovsky et al. , 2015; Wu et al. , 2020) as well as ground truth to evaluate models.…”
Section: Research Motivationsmentioning
confidence: 99%
“…It is trained on highly configured computers by using a large number of data labels, which are not only fast to test but also perform well and are easy to deploy and apply [48]. However, the relationship between different datasets in deep learning methods and different network architecture designs and network generalization capabilities is still being explored by a large number of researchers to find out what the essence [49][50][51]. For different data objects, such as apple images, the relationships between how much data to use, what type of data to use, and which network architecture to use will have acceptable generalization capabilities are still unclear, and their interpretability needs further research in progress.…”
Section: Further Research Perspectivesmentioning
confidence: 99%