In an age where data-driven decision-making is becoming increasingly central to fields ranging from finance and science to policy and technology, the credibility of predictions has never been more critical. Enter the Pishbini Register — a novel platform designed to log, timestamp, and validate predictions in a transparent and immutable manner.
The word Pishbini (پیشبینی) is derived from Persian and translates to forecast or prediction. The Pishbini Register is, therefore, essentially a Prediction Registry, a formalized system that records forecasts before outcomes are known, thereby improving accountability, trust, and integrity in predictive analysis.
The Problem with Unverified Predictions
Predictions are everywhere — economic forecasts, scientific hypotheses, technological trends, weather models, political polling, and even stock market speculations. Yet, despite the abundance of forecasting, many predictions are never formally recorded, tracked, or evaluated after the fact. This creates several key issues:
These problems contribute to public skepticism and hinder the development of responsible predictive models.
What Is the Pishbini Register?
The Pishbini Register is a digital framework that allows individuals, institutions, or automated systems to submit, timestamp, and publish predictions in a public or private ledger. It acts like a "forecasting notary" that verifies that a prediction was made at a certain time, with certain conditions and expectations.
Why Register Predictions?
The Pishbini Register serves multiple functions that benefit a range of users:
For Individuals: Building a Forecasting Track Record
People involved in competitive fields such as finance, tech, or futurism can benefit from a system that publicly verifies their predictions. Over time, this record can serve as evidence of expertise and help develop a reputation for accuracy.
For Organizations: Improving Strategic Planning
Companies and institutions make strategic bets regularly. By registering internal predictions (even privately), they can later evaluate whether their strategic foresight was valid.
For the Public: Encouraging Transparency
When governments or think tanks make predictions about policies, economics, or public health, those forecasts influence decisions. The Pishbini Register allows stakeholders to hold them accountable and ensure policies are based on sound evidence, not wishful thinking.
For Researchers: Testing Models
Scientists and academics can use the register to log hypotheses, creating a transparent trail for future evaluation. This combats practices like p-hacking or post hoc rationalization, contributing to greater reproducibility in research.
The Role of Confidence Calibration
An important feature of the Pishbini Register is that it doesn’t just record whether predictions were right or wrong — it also tracks how confident forecasters were. This is crucial for developing well-calibrated predictive models.
For example, if a forecaster claims 70% confidence across 100 predictions, about 70 of those predictions should come true if their judgment is well-calibrated. The register allows long-term tracking of this relationship, helping people and institutions improve their Bayesian reasoning and probabilistic thinking.
Technological Foundations
Implementing a Pishbini Register can take various technical forms:
Web Platforms: Custom-built applications where users can create accounts and submit predictions with structured metadata.
APIs for Automated Forecasting Systems: For machine-learning models to register forecasts programmatically.
Blockchain Integration: Using smart contracts and decentralized ledgers to store immutable, timestamped predictions.
Prediction Markets Integration: Linking with platforms like Metaculus, Manifold, or Augur, where registered predictions can also be traded or bet upon.
The security and transparency provided by these technologies help eliminate the “moving goalposts” problem often seen in unstructured forecasting.
Conclusion
The Pishbini Register represents a step forward in making forecasting more transparent, structured, and accountable. Whether used by individuals to build reputations, by institutions to improve decision-making, or by societies to foster trust in data and science, such a system has wide-ranging implications.
In a world increasingly shaped by the future, it makes sense to take our predictions seriously — and to track them just as rigorously as we track the outcomes they aim to foresee.