Please describe your proposed solution.
Probabilities associated with future events may over- or under-predict outcomes. For Decentralized Finance (DeFi) applications, inaccurate probability predictions lead to lost revenue when they are utilized by trading strategies – formulated under misplaced (e.g., presuming a conservative forecast) assumptions – and ultimately produce significant and unintended risk exposure. Also, forecasted probabilities may vary in suitability for particular uses whether in characterization of low-probability events (e.g., tail-risk) or reporting of high-probability outcomes (e.g., to support confident decision making). Since probability forecasts may combine aspects of occurrence frequency and confidence, it is necessary to characterize these forecasts in a risk-informed manner.
Photrek has developed “Risk Profiles” – an innovative characterization of the quality of model-predicted probabilities of future events when compared to an outcome’s observed (or “true”) probability. The Risk Profile characterizes a model’s predictive power according to statistical information theory metrics including Accuracy, Decisiveness, and Robustness. This Risk Profile is now a hosted application on SingularityNET's AI Marketplace and provides valuable insights to make risk-informed decisions. The Risk Profile will empower traders on the Cardano futures market to accurately characterize probability forecasts to effectively create risk-informed investment decisions and portfolios.
Photrek's Use Case Concept is to apply our expertise in forecast evaluation to develop a Community of Innovation focused on Risk Intelligence. We will start with a demonstration of how data from Cardano futures markets such as Delta Exchange, Kraken, and the anticipated decentralized Axo market can be used to produce a histogram of the expected ADA price at future dates. The prototype will convert the call and put prices for an expiration date into a probability distribution of the expected asset price. As actual strike dates pass, the actual price will be used to assess the Accuracy, Decisiveness, and Robustness of the forecast. This will descriptively characterize each forecast for reliable investment decisions in the future.
We will host workshops to explore how community members can measure the performance of their own forecasting algorithms.