Prediction markets as a vital part of collective intelligence

Author(s):  
Rafal Palak ◽  
Ngoc Thanh Nguyen
Author(s):  
Lorenzo Barberis Canonico ◽  
Christopher Flathmann ◽  
Nathan McNeese

There is an ever-growing literature on the power of prediction markets to harness “the wisdom of the crowd” from large groups of people. However, traditional prediction markets are not designed in a human-centered way, often restricting their own potential. This creates the opportunity to implement a cognitive science perspective on how to enhance the collective intelligence of the participants. Thus, we propose a new model for prediction markets that integrates human factors, cognitive science, game theory and machine learning to maximize collective intelligence. We do this by first identifying the connections between prediction markets and collective intelligence, to then use human factors techniques to analyze our design, culminating in the practical ways with which our design enables artificial intelligence to complement human intelligence.


10.28945/2319 ◽  
2015 ◽  
Vol 11 ◽  
pp. 159-178 ◽  
Author(s):  
Dorit Geifman ◽  
Daphne R Raban

Self-efficacy is essential to learning but what happens when learning is done as a result of a collective process? What is the role of individual self-efficacy in collective problem solving? This research examines the manifestation of self-efficacy in prediction markets that are configured as collective problem-solving platforms and whether self-efficacy of traders affects the collective outcome. Prediction markets are collective-intelligence platforms that use a financial markets mechanism to combine knowledge and opinions of a group of people. Traders express their opinions or knowledge by buying and selling “stocks” related to questions or events. The collective outcome is derived from the final price of the stocks. Self-efficacy, one’s belief in his or her ability to act in a manner that leads to success, is known to affect personal performance in many domains. To date, its manifestation in computer-mediated collaborative environments and its effect on the collective outcome has not been studied. In a controlled experiment, 632 participants in 47 markets traded a solution to a complex problem, a naïve framing of the knapsack problem. Contrary to earlier research, we find that technical and functional self-efficacy perceptions are indistinguishable, probably due to a focus on outcomes rather than on resources. Further, results demonstrate that prediction markets are an effective collective problem-solving platform that correctly aggregates individual knowledge and is resilient to traders’ self-efficacy.


2014 ◽  
Vol 7 (3) ◽  
pp. 1-28
Author(s):  
Sebastian Matthias Woerle

This paper tests the explanatory power of an online Prediction market on the ousting of Muammar Gaddafi as Libya’s leader during the uprising in 2011. Based on the theory of efficient markets and collective intelligence, it employs a GARCH time-series analysis and an event study of Intrade data to test the impact of events on market performance and trading volume. The market distinguishes sensibly between relevant and irrelevant news for the outcome of the conflict and prices them in at a surprising speed. Some support for short-term anticipative trading and price performance is found. The analyzed market is found to be semi-strong efficient and works as an evaluative tool in international conflict.


2012 ◽  
Vol 107 (3) ◽  
pp. 152-157 ◽  
Author(s):  
Pascal Krenz ◽  
Jens P. Wulfsberg ◽  
Franz-L. Bruhns

2018 ◽  
Vol 9 (2) ◽  
pp. 88-96 ◽  
Author(s):  
Adhi Kusnadi ◽  
Daniel Daniel

Today, recipes are not just physical, but some are digital. So users do not have to store recipe books that have been purchased to find recipes for a dish. One of a website providing recommendations for digital recipe guides is dapursaji. This application helps users to search for recipes only by entering the ingredients of the food owned by the user. And will produce a list of dishes that use the material entered by the previous user. In addition there will be related recommendations after opening one of the recipes after the search. Not only that, this website can also provide the freedom to innovate, by means of all users can fill a new recipe in accordance with the innovation and creation itself. Then the recipe will be published and read by the public. Collaborative Collective Intelligence and Slope One methods are implemented in this design, and evaluation results show that as many as 89% of users surveyed have been satisfied with the suitability and usefulness of the built system. Index Terms—recipes, dish, collaborative Collective Intelligence, slope one


Sign in / Sign up

Export Citation Format

Share Document