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DWF 2021 : DIMACS Workshop on Forecasting | |||||||||||||
Link: http://dimacs.rutgers.edu/events/details?eID=1531 | |||||||||||||
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Call For Papers | |||||||||||||
DIMACS Workshop on Forecasting: From Forecasts to Decisions
March 17, 2021 - March 19, 2021 Location: Online Event Organizer(s): Raf Frongillo, University of Colorado David Pennock, DIMACS Bo Waggoner, University of Colorado Description Following the successful EC 2017 Workshop on Forecasting, we will hold the DIMACS Workshop on Forecasting in 2021. We welcome submissions describing recent research on crowd-sourced, data-driven, or hybrid approaches to forecasting. We especially encourage contributions that leverage forecasts to improve decisions. Please see the Call for Participation below for details. Recent advances in crowdsourced forecasting mechanisms, including Good Judgment’s superforecasting, prediction markets, wagering mechanisms, and peer-prediction systems, have risen in parallel to advances in machine learning and other data-driven forecasting approaches. Innovations have come from academic researchers, companies, data journalists, and government programs like IARPA’s Aggregative Contingent Estimation program and Hybrid Forecasting Competition. The workshop will emphasize forecasts embedded inside decision-making systems, where the value of a forecast comes from increasing the expected utility of a key decision. Our ultimate goal is to modernize organizations, markets, and governments by improving how they collect and combine information and make decisions. The workshop embraces the diversity of this exciting and expanding field and encourages submissions from a rich set of empirical, experimental, and theoretical perspectives. We invite theoretical computer scientists studying algorithmic game theory, incentivized exploration, and NP-hard counting problems; AI researchers studying machine learning, human computation, Bayesian inference, peer prediction, and satisfiability; statisticians studying scoring rules and belief aggregation; economists studying prediction markets, financial markets, and wagering mechanisms; data journalists and marketing scientists studying surveys and polls; blockchain pioneers implementing decentralized prediction markets and other experimental market constructs; social and behavioral scientists studying human behavior modeling; human-computer interaction researchers designing interfaces to facilitate elicitation or convey uncertainty; and practitioners working to improve forecasts as a business or service. Uncertainty is hard to communicate. Forecasters argue that they are “right”, and critics that forecasters are “wrong” (for example about Brexit or the US Presidential election), despite the fact that probabilistic forecasts can only be evaluated in bulk relative to other forecasts. We invite contributions discussing ways to communicate uncertainty and educate the public about modeling, forecasting, and scoring, building on the excellent 2018 Nova episode “Prediction by the Numbers”. Topics of interest for the workshop include but are not limited to: Incentives in forecasting. Methods for eliciting truthful and accurate forecasts or information. Coordinating groups of participants to collectively forecast. Examples include prediction markets and wagering mechanisms. Connections between human- and machine-driven forecasting. Uses of data, models, or machine learning in forecasting, and theoretical connections between forecasting mechanisms and machine learning techniques. Making complex forecasts. Predicting structured, combinatorial, or multi-part events. Making conditional forecasts. Forecasting continuous distributions, exponential-sized joint distributions, and spatiotemporal distributions. Forecasting metrics related to climate, the environment, transportation, renewable energy, or public health. For example, metrics of a pandemic including number infected, number hospitalized, number killed, and fatality rate by region and over time, conditioned on public health policies. Forecasting in support of decision making by companies, organizations, or governments. Visualization and other best practices for communicating uncertainty and educating the public about forecasts. Please note times specified in program below are Eastern Time. Program Wednesday, March 17, 2021 Session - 1 - Chair: Bo Waggoner, University of Colorado 10:00 AM - 10:10 AM Welcome & Opening Remarks 10:10 AM - 10:45 AM Invited Talk: How to Increase the Accuracy of Human Forecasts and Check the Reasons for Improvement Barbara Mellers, University of Pennsylvania Ville Satopää, INSEAD 10:45 AM - 11:05 AM Asymptotic Behaviour of Prediction Markets Philip Dawid, University of Cambridge 11:05 AM - 11:25 AM Timely Information from Prediction Markets Chenkai Yu, Tsinghua University 11:25 AM - 11:35 AM Break 11:35 AM - 12:10 PM Invited Talk: A Heuristic for Combining Correlated Experts Yael Gruska-Cockayne, University of Virginia Session - Poster Session 1 12:10 PM - 1:00 PM View Posters & Videos Thursday, March 18, 2021 Session - 2 - Chair: Raf Frongillo, University of Colorado 10:00 AM - 10:35 AM Invited Talk: Predicting Replication Outcomes Anna Dreber, Stockholm School of Economics 10:35 AM - 10:55 AM From Proper Scoring Rules to Max-Min Optimal Forecast Aggregation Eric Neyman, Columbia University 10:55 AM - 11:15 AM Forecast Aggregation via Peer Prediction Juntao Wang, Harvard University 11:15 AM - 11:35 AM Comparing Forecasting Skill vs Domain Expertise for Policy-Relevant Crowd-Forecasting Emile Servan-Schreiber, Mohammed VI Polytechnic University Session - Panel - Moderator: David Pennock, DIMACS 11:35 AM - 12:10 PM Forecasting Startup Founders Panel Pavel Atanasov, pytho Andreas Katsouris, PredictIt Kelly Littlepage, OneChronos Emile Servan-Schreiber, Hypermind Session - Poster Session 2 12:10 PM - 1:00 PM View Posters & Videos 1:00 PM - 1:30 PM Social Event Friday, March 19, 2021 Session - 3 - Chair: David Pennock, DIMACS 10:00 AM - 10:35 AM Invited Talk: Information, Incentives, and Goals in Election Forecasts Andrew Gelman, Columbia University 10:35 AM - 10:55 AM Models, Markets, and the Forecasting of Elections Rajiv Sethi, Columbia University 10:55 AM - 11:15 AM Boosting the Wisdom of Crowds Within a Single Judgment Problem: Weighted Averaging Based on Peer Predictions Ville Satopää, INSEAD 11:15 AM - 11:35 AM Crowdsourced Forecast Elicitation: Methods vs. Individuals Pavel Atanasov, pytho 11:35 AM - 12:10 PM Invited Talk: Models vs. Markets: Forecasting the 2020 U.S. election Harry Crane, Rutgers University Session - Poster Session 3 12:10 PM - 1:00 PM View Posters & Videos Call For Participation Attend: This workshop is open to all to attend, but you must register using the link at the bottom of the page. We will send instructions on how to join the event on or before March 15, 2021. If you do not receive them, please check your spam folder or contact Nicole Clark. Please note that you may not be able to register once the event has begun. Present: We invite both full contributions and poster contributions. A full contribution is an unpublished or recently published research manuscript. A poster contribution can be a preprint, a recently published paper, an abstract, or a presentation file. Preference may be given to more recent and unpublished work. We especially encourage poster contributions from students and postdocs. Please submit your contributions using this Google Form by February 19, 2021. The workshop is non-archival, meaning contributors are free to publish their results later in archival journals or conferences. Panel discussion proposals and invited speaker suggestions are also welcome. Email questions or suggestions to the organizers. The workshop will include invited and contributed talks, open discussion, and may include a poster session and a rump session. Workshop registration will be open. Once registered, you will join the workshop through Virtual Chair. Important Dates: Submissions due: Friday, February 19, 2021 Notifications: Wednesday, March 3, 2021 Workshop: March 17-19, 2021 Presented in association with the SF on Mechanisms & Algorithms to Augment Human Decision Making. |
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