Frameworks for Collective Intelligence

  title={Frameworks for Collective Intelligence},
  author={Shweta Suran and Vishwajeet Pattanaik and Dirk Draheim},
  journal={ACM Computing Surveys (CSUR)},
  pages={1 - 36}
Over the last few years, Collective Intelligence (CI) platforms have become a vital resource for learning, problem solving, decision-making, and predictions. This rising interest in the topic has to led to the development of several models and frameworks available in published literature. Unfortunately, most of these models are built around domain-specific requirements, i.e., they are often based on the intuitions of their domain experts and developers. This has created a gap in our knowledge… 

A descriptive analysis of collective intelligence publications since 2000, and the emerging influence of artificial intelligence

It is shown that while the annual number of CI-only publications has remained steady since 2015, AI+CI research has continued to increase, and Publications in the crossover of AI+ CI are growing at a faster rate than CI- only papers but show less topical and disciplinary breadth.

Collective Intelligence Systems from an Organizational Perspective

This talk considers Collective Intelligence (CI) systems from an organizational perspective, reviewing the state-of-the art of CI frameworks and coming up with a generalized framework that serves as a basis for further investigations.

Enabling Sensemaking and Trust in Communities: An Organizational Perspective

The proposed artifact utilizes a novel reputation model, which calculates reputation based on an individual’s area of expertise and reputation score, in order to assist in establishing trust among system users, and thus helps improve decision-making processes.

BargCrEx: A System for Bargaining Based Aggregation of Crowd and Expert Opinions in Crowdsourcing

Experimental evaluation on real world and artificial problems showed that the bargaining-based aggregation outperforms the traditional methods in terms of cumulative satisfaction of experts and crowd and the machine learning models showed satisfactory predictive performance and enabled cost reduction in the process of vote collection.

Macroprogramming: Concepts, State of the Art, and Opportunities of Macroscopic Behaviour Modelling

An integrated view of the field is provided, together with opportunities and challenges to foster principled research, and it is shown that the current macroprogramming approaches are still fragmented and lacking conceptual consistency.

Crowdsourcing as an approach to solving environmental problems by future construction engineers

The article studies the role of the University of Architecture and Engineering students in the formation of the ecological culture of the population. We consider crowdsourcing as an approach to



Collective Intelligence Systems: Classification and Modeling

A modeling process is described which identifies the common features, as well as the main challenges that the construction of generic collective intelligence systems poses, and a modeling approach is expected to promote more efficient CI system design, so that the benefit gained by the participating community and individuals will be maximized.

Collective intelligence system engineering

An attempt is made to establish the analytical foundations and main challenges for the design and construction of a generic collective intelligence system, and the basic modeling framework of CI systems is described.

Intelligent Collectives: Theory, Applications, and Research Challenges

This paper presents recent research on CI related to the effectiveness of using the wisdom of crowds to perform a wide range of problems and introduces a general framework of CI involving key characteristics of intelligent collectives.

Harnessing Crowds: Mapping the Genome of Collective Intelligence

This article identifies the underlying building blocks - to use a biological metaphor, the "genes" - at the heart of collective intelligence systems and shows how combinations of genes comprise a "genome" that characterizes each collective intelligence system.

An Architecture Framework for Collective Intelligence Systems

The CIS-AF framework provides guidance for architects to describe key CIS elements and systematically model a CIS that is well-suited for an organization's context and goals, and effectively supports stakeholders with providing a shared vocabulary of CIS concepts.

Collective Intelligence and an Application by The Millennium Project

Why collective intelligence is needed, some early approaches to creating collective intelligence, what specifically is needed today, and an approach to constructing a collective intelligence system proposed by The Millennium Project called the Global Futures Intelligence System are discussed.

Emerging Collective Intelligence Business Models

This paper essays an approach to the emergence of new business models based in collective intelligence through the inclusion of crowdsourcing in business processes, particularly in the importance of new web 2.0 crowdsourcing based ones in creating value.

Towards Knowledge Management Based on Harnessing Collective Intelligence on the Web

This paper introduces a concept of knowledge management based on harnessing the collective intelligence of Web users, and explores the technical issues involved in implementing it.

Models for Understanding Collective Intelligence on Wikipedia

It is argued that the world’s largest encyclopedia and broadest implementation of the wiki is an online instance of collective intelligence (CI), as it fits key models for this concept.

Collective Intelligence Model: How to Describe Collective Intelligence

This paper proposes a model with different characteristics, like form of cooperation, organisational pattern, and decision making process, which distinctively describe forms of collective intelligence and suggest possible attribute values.