Given the rise of AI and the advent of online collaboration opportunities (e.g., social media, crowdsourcing), emerging research has started to investigate the integration of AI and human intelligence, especially in a collaborative social context. This creates unprecedented challenges and opportunities in the field of Social Intelligence (SI), where the goal is to explore the collective intelligence of both humans and machines by understanding their complementary strengths and interactions in the social space.

In this book, a set of novel human-centered AI techniques are presented to address the challenges of social intelligence applications, including multimodal approaches, robust and generalizable frameworks, and socially empowered explainable AI designs. The book then presents several human-AI collaborative learning frameworks that jointly integrate the strengths of crowd wisdom and AI to address the limitations inherent in standalone solutions. The book also emphasizes pressing societal issues in the realm of social intelligence, such as fairness, bias, and privacy. Real-world case studies from different applications in social intelligence are presented to demonstrate the effectiveness of the proposed solutions in achieving substantial performance gains in various aspects, such as prediction accuracy, model generalizability and explainability, algorithmic fairness, and system robustness.

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color: black;">Given the rise of AI and the advent of online collaboration opportunities (e.g., social media, crowdsourcing), emerging research has started to investigate the integration of AI and human intelligence, especially in a collaborative social context.
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Chapter 1: Introduction.- 1.1 Overview.- 1.2 Motivation and Challenges.- 1.3 Contributions.- Chapter 2: Social Intelligence Applications and Backgrounds.- 2.1 Social Intelligence: the emergence of human intelligence and AI.- 2.2 Enabling Technologies for Social Intelligence.- 2.3 Interdisciplinary Nature of Social Intelligence.- 2.4 Emerging Social Intelligence Applications.- Chapter 3: Data Heterogeneity.- 3.1 The Data Heterogeneity Problem in Social Intelligence.- 3.2 A Multimodal Approach: DuoGen and ContrastFaux.- 3.4 Real-world Case Studies.- 3.5 Discussion.- Chapter 4: Data Sparsity and Model Generality.- 4.1 The Data Sparsity and Model Generality Problem in Social Intelligence.- 4.2 Robust and General Social Intelligence: CrowdAdapt and CollabGeneral.- 4.3 Real-world Case Studies.- 4.4 Discussion.- Chapter 5: Explainable AI (XAI) in Social Intelligence.- 4.1 A Collaborative Explanation for AI.- 4.2 Social XAI: CrowdGraph and CEA-COVID.- 4.3 Real-world Case Studies.- 4.4 Discussion.- Chapter 6: Fusing Crowd Wisdom and AI.- 6.1 Integrating Crowd-based Human Intelligence and AI.- 6.2 A Crowd-AI Co-Design: CrowdNAS and CrowdHPO.- 6.4 Real-world Case Studies.- 6.5 Discussion.- Chapter 7: Fairness and Bias Issue.- 7.1 The Fairness and Bias Issue in Social Intelligence.- 7.2 Fair Social AI Solution: FairCrowd and DebiasEdu.- 7.3 Real-world Case Studies.- 7.4 Discussion.- Chapter 8: Privacy Issue.- 8.1 Understanding Privacy in Social Intelligence.- 8.2 Privacy-aware Crowd-AI Approach: CoviDKG and FaceCrowd.- 8.3 Real-world Case Studies.- 8.4 Discussion.- Chapter 9: Further Readings.-  9.1 Human-centered AI.- 9.2 AI for Social Good.- 9.3 Fairness and Privacy in Social Intelligence.- 9.4 Ethics and Policies in Social Intelligence.- Chapter 10: Conclusions and Remaining Challenges.

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Given the rise of AI and the advent of online collaboration opportunities (e.g., social media, crowdsourcing), emerging research has started to investigate the integration of AI and human intelligence, especially in a collaborative social context. This creates unprecedented challenges and opportunities in the field of Social Intelligence (SI), where the goal is to explore the collective intelligence of both humans and machines by understanding their complementary strengths and interactions in the social space.

In this book, a set of novel human-centered AI techniques are presented to address the challenges of social intelligence applications, including multimodal approaches, robust and generalizable frameworks, and socially empowered explainable AI designs. The book then presents several human-AI collaborative learning frameworks that jointly integrate the strengths of crowd wisdom and AI to address the limitations inherent in standalone solutions. The book also emphasizes pressing societal issues in the realm of social intelligence, such as fairness, bias, and privacy. Real-world case studies from different applications in social intelligence are presented to demonstrate the effectiveness of the proposed solutions in achieving substantial performance gains in various aspects, such as prediction accuracy, model generalizability and explainability, algorithmic fairness, and system robustness.

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Novel systems and analytical foundations for Social Intelligence Novel ideas to jointly model human intelligence and AI and integrate them in the social space A new perspective of human-centered AI design and human-AI collective intelligence
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Produktdetaljer

ISBN
9783031900792
Publisert
2025-06-29
Utgiver
Vendor
Springer International Publishing AG
Høyde
235 mm
Bredde
155 mm
Aldersnivå
Research, P, UP, 06, 05
Språk
Product language
Engelsk
Format
Product format
Innbundet

Biographical note

Dong Wang: Dong Wang is an associate professor in School of Information Sciences and Siebel School of Computing and Data Science (affiliated) at the University of Illinois at Urbana Champaign (UIUC). His research interests lie in social sensing, computing, and intelligence, human-centered AI, and big data analytics. Dong Wang has published over 200 technical papers in peer reviewed conferences and journals. His work has been applied in a wide range of real-world applications such as misinformation detection, social network analysis, crowd-based disaster response, intelligent transportation, urban planning, and environment monitoring.  His research on social sensing, computing, and intelligence resulted in software tools that found applications in academia, industry, and government research labs. He also authored three books: “Social Intelligence” to be published by Springer in 2025, “Social Edge Computing” published by Springer in 2023, and “Social Sensing” published by Elsevier in 2015. He is the recipient of NSF CAREER Award, Google Faculty Research Award, ARO Young Investigator Program (YIP), the Best Paper Award of 2022 ACM/IEEE International Conference on Advances in Social Networks Analysis and Mining (ASONAM), the Best Paper Award of 16th IEEE Real-Time and Embedded Technology and Applications Symposium (RTAS) and the Best Paper Honorable Mention of 8th IEEE SmartComp. He serves as an associate editor of IEEE Transactions on Big Data, Frontiers in Big Data, and Social Network and Analysis Journal (SNAM). He is also an IEEE Senior Member and ACM and AAAI Member.

 Lanyu Shang: Lanyu Shang is an assistant professor in Computer Science at the Loyola Marymount University. She earned her Ph.D. in information sciences from the University of Illinois Urbana-Champaign. Prior to this, she received an M.S. in Data Science from New York University and a B.S. in Applied Mathematics from the University of California, Los Angeles. Her research interest lies in human-centric AI, human-AI collaboration, social media analysis, AI for social good, and applied AI. Her work has been published in top venues in data mining and machine learning/AI, such as The WebConf, ICWSM, AAAI, IJCAI, and IEEE Big Data. She is also the recipient of the Best Paper Award at ACM/IEEE ASONAM 2022, the Best Paper Honorable Mention at IEEE SmartComp 2022, the Outstanding Graduate Student Teaching Award from the University of Notre Dame, and the N2Women Young Researcher Fellowship. 

Yang Zhang: Yang Zhang is a Teaching Assistant Professor at the School of Information Sciences at the University of Illinois Urbana-Champaign (UIUC) and a senior researcher at UIUC’s Social Sensing and Intelligence Lab. He is also a faculty affiliate of Illinois Informatics at UIUC. Previously, he was a Postdoctoral Research Associate at UIUC and a W. J. Cody Research Associate at Argonne National Laboratory. Yang earned his Ph.D. in Computer Science & Engineering from the University of Notre Dame, an M.S. in Data Science from Indiana University Bloomington, and a B.S. in Software Engineering from Wuhan University. His research focuses on human-centered AI, human-AI collaboration, deep learning, and generative AI. He has authored over 80 peer-reviewed conference and journal papers published in top venues such as ACM CSCW, ACM Web Conference, AAAI, IJCAI, and IEEE BigData. His work has been recognized with prestigious honors, including the Outstanding Graduate Research Award from the University of Notre Dame and the W. J. Cody Research Associateship at Argonne National Laboratory.