AAAI Workshop on Artificial Intelligence with Biased or Scarce Data (AIBSD) / / Kuan-Chuan Peng, Ziyan Wu.
This book is a collection of the accepted papers presented at the Workshop on Artificial Intelligence with Biased or Scarce Data (AIBSD) in conjunction with the 36th AAAI Conference on Artificial Intelligence 2022. During AIBSD 2022, the attendees addressed the existing issues of data bias and scarc...
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Place / Publishing House: | Basel : : MDPI - Multidisciplinary Digital Publishing Institute,, 2022. |
Year of Publication: | 2022 |
Language: | English |
Physical Description: | 1 electronic resource (186 p.) |
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Peng, Kuan-Chuan, author. AAAI Workshop on Artificial Intelligence with Biased or Scarce Data (AIBSD) / Kuan-Chuan Peng, Ziyan Wu. AAAI Workshop on Artificial Intelligence with Biased or Scarce Data Basel : MDPI - Multidisciplinary Digital Publishing Institute, 2022. 1 electronic resource (186 p.) text txt rdacontent computer c rdamedia online resource cr rdacarrier This book is a collection of the accepted papers presented at the Workshop on Artificial Intelligence with Biased or Scarce Data (AIBSD) in conjunction with the 36th AAAI Conference on Artificial Intelligence 2022. During AIBSD 2022, the attendees addressed the existing issues of data bias and scarcity in Artificial Intelligence and discussed potential solutions in real-world scenarios. A set of papers presented at AIBSD 2022 is selected for further publication and included in this book. English Description based on publisher supplied metadata and other sources. About the Editors -- Statement of Peer Review -- Electricity Consumption Forecasting for Out-of-Distribution Time-of-Use Tariffs -- Measuring Embedded Human-Like Biases in Face Recognition Models -- Measuring Gender Bias in Contextualized Embeddings -- The Details Matter: Preventing Class Collapsein Supervised Contrastive Learning -- DAP-SDD: Distribution-Aware Pseudo Labeling for Small Defect Detection -- Quantifying Bias in a Face -- Verification System -- Super-Resolution for Brain MR Images from a Significantly Small Amount of Training Data -- Dual Complementary Prototype Learning for Few-Shot Segmentation -- Extracting Salient Facts from Company Reviews with Scarce Labels -- Long-Tail Zero and Few-Shot Learning via Contrastive Pretraining on and for Small Data -- Age Should Not Matter: -- Towards More Accurate Pedestrian Detection via Self-Training. Technology: general issues. bicssc Artificial intelligence Congresses. History of engineering & technology. bicssc permutation equivariance optimization gender bias fairness face-recognition models facial attributes social bias bias detection natural language processing temporal bias forecasting contrastive learning supervised contrastive learning transfer learning robustness noisy labels coresets deep learning contextualized embeddings out-of-distribution generalization 3-0365-4681-2 3-0365-4682-0 Wu, Ziyan, author. |
language |
English |
format |
eBook |
author |
Peng, Kuan-Chuan, Wu, Ziyan, |
spellingShingle |
Peng, Kuan-Chuan, Wu, Ziyan, AAAI Workshop on Artificial Intelligence with Biased or Scarce Data (AIBSD) / About the Editors -- Statement of Peer Review -- Electricity Consumption Forecasting for Out-of-Distribution Time-of-Use Tariffs -- Measuring Embedded Human-Like Biases in Face Recognition Models -- Measuring Gender Bias in Contextualized Embeddings -- The Details Matter: Preventing Class Collapsein Supervised Contrastive Learning -- DAP-SDD: Distribution-Aware Pseudo Labeling for Small Defect Detection -- Quantifying Bias in a Face -- Verification System -- Super-Resolution for Brain MR Images from a Significantly Small Amount of Training Data -- Dual Complementary Prototype Learning for Few-Shot Segmentation -- Extracting Salient Facts from Company Reviews with Scarce Labels -- Long-Tail Zero and Few-Shot Learning via Contrastive Pretraining on and for Small Data -- Age Should Not Matter: -- Towards More Accurate Pedestrian Detection via Self-Training. |
author_facet |
Peng, Kuan-Chuan, Wu, Ziyan, Wu, Ziyan, |
author_variant |
k c p kcp z w zw |
author_role |
VerfasserIn VerfasserIn |
author2 |
Wu, Ziyan, |
author2_role |
TeilnehmendeR |
author_sort |
Peng, Kuan-Chuan, |
title |
AAAI Workshop on Artificial Intelligence with Biased or Scarce Data (AIBSD) / |
title_full |
AAAI Workshop on Artificial Intelligence with Biased or Scarce Data (AIBSD) / Kuan-Chuan Peng, Ziyan Wu. |
title_fullStr |
AAAI Workshop on Artificial Intelligence with Biased or Scarce Data (AIBSD) / Kuan-Chuan Peng, Ziyan Wu. |
title_full_unstemmed |
AAAI Workshop on Artificial Intelligence with Biased or Scarce Data (AIBSD) / Kuan-Chuan Peng, Ziyan Wu. |
title_auth |
AAAI Workshop on Artificial Intelligence with Biased or Scarce Data (AIBSD) / |
title_alt |
AAAI Workshop on Artificial Intelligence with Biased or Scarce Data |
title_new |
AAAI Workshop on Artificial Intelligence with Biased or Scarce Data (AIBSD) / |
title_sort |
aaai workshop on artificial intelligence with biased or scarce data (aibsd) / |
publisher |
MDPI - Multidisciplinary Digital Publishing Institute, |
publishDate |
2022 |
physical |
1 electronic resource (186 p.) |
contents |
About the Editors -- Statement of Peer Review -- Electricity Consumption Forecasting for Out-of-Distribution Time-of-Use Tariffs -- Measuring Embedded Human-Like Biases in Face Recognition Models -- Measuring Gender Bias in Contextualized Embeddings -- The Details Matter: Preventing Class Collapsein Supervised Contrastive Learning -- DAP-SDD: Distribution-Aware Pseudo Labeling for Small Defect Detection -- Quantifying Bias in a Face -- Verification System -- Super-Resolution for Brain MR Images from a Significantly Small Amount of Training Data -- Dual Complementary Prototype Learning for Few-Shot Segmentation -- Extracting Salient Facts from Company Reviews with Scarce Labels -- Long-Tail Zero and Few-Shot Learning via Contrastive Pretraining on and for Small Data -- Age Should Not Matter: -- Towards More Accurate Pedestrian Detection via Self-Training. |
isbn |
3-0365-4681-2 3-0365-4682-0 |
callnumber-first |
Q - Science |
callnumber-subject |
Q - General Science |
callnumber-label |
Q334 |
callnumber-sort |
Q 3334 P464 42022 |
genre_facet |
Congresses. |
illustrated |
Not Illustrated |
dewey-hundreds |
000 - Computer science, information & general works |
dewey-tens |
000 - Computer science, knowledge & systems |
dewey-ones |
006 - Special computer methods |
dewey-full |
006.3 |
dewey-sort |
16.3 |
dewey-raw |
006.3 |
dewey-search |
006.3 |
work_keys_str_mv |
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AAAI Workshop on Artificial Intelligence with Biased or Scarce Data (AIBSD) / |
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