Causal Forces: Structuring Knowledge for Time Series Extrapolation This paper examines a strategy for structuring one type of domain knowledge for use in extrapolation. It does so by representing information about causality and using this domain knowledge to select and combine forecasts. We use five categories to express causal impacts upon trends: growth, decay, supporting, opposing, and regressing. An identification of causal forces aided in the determination of weights for combining extrapolation forecasts. These weights improved average ex ante forecast accuracy when tested on 104 annual economic and demographic time series. Gains in accuracy were greatest when (1) the causal forces were clearly specified and (2) stronger causal effects...
Causal forces are a way of summarizing forecasters\u27 expectations about what will happen to a time...
Rule-based forecasting (RBF) uses rules to combine forecasts from simple extrapolation methods. Weig...
Sophisticated extrapolation techniques have had a negligible payoff for accuracy in forecasting. As ...
This paper examines a strategy for structuring one type of domain knowledge for use in extrapolation...
This paper examines a strategy for structuring one type of domain knowledge for use in extrapolation...
Rule-Based Forecasting: Using Judgment in Time-Series Extrapolation Rule-Based Forecasting (RBF) is ...
Rule-Based Forecasting (RBF) is an expert system that uses judgment to develop and apply rules for c...
This paper examines the feasibility of rule-based forecasting, a procedure that applies forecasting ...
This paper examines the feasibility of rule -based forecasting, a procedure that applies forecasting...
Rule-Based Forecasting (RBF) is an expert system that uses judgment to develop and apply rules for c...
Sophisticated extrapolation techniques have had a negligible payoff for accuracy in forecasting. As ...
The accuracy of extrapolation methods varies greatly from one time series to another and across fore...
Causal forces are a way of summarizing forecasters ' expectations about what will happen to a t...
Extrapolation methods are reliable, objective, inexpensive, quick, and easily automated. As a result...
Extrapolation methods are reliable, objective, inexpensive, quick, and easily automated. As a result...
Causal forces are a way of summarizing forecasters\u27 expectations about what will happen to a time...
Rule-based forecasting (RBF) uses rules to combine forecasts from simple extrapolation methods. Weig...
Sophisticated extrapolation techniques have had a negligible payoff for accuracy in forecasting. As ...
This paper examines a strategy for structuring one type of domain knowledge for use in extrapolation...
This paper examines a strategy for structuring one type of domain knowledge for use in extrapolation...
Rule-Based Forecasting: Using Judgment in Time-Series Extrapolation Rule-Based Forecasting (RBF) is ...
Rule-Based Forecasting (RBF) is an expert system that uses judgment to develop and apply rules for c...
This paper examines the feasibility of rule-based forecasting, a procedure that applies forecasting ...
This paper examines the feasibility of rule -based forecasting, a procedure that applies forecasting...
Rule-Based Forecasting (RBF) is an expert system that uses judgment to develop and apply rules for c...
Sophisticated extrapolation techniques have had a negligible payoff for accuracy in forecasting. As ...
The accuracy of extrapolation methods varies greatly from one time series to another and across fore...
Causal forces are a way of summarizing forecasters ' expectations about what will happen to a t...
Extrapolation methods are reliable, objective, inexpensive, quick, and easily automated. As a result...
Extrapolation methods are reliable, objective, inexpensive, quick, and easily automated. As a result...
Causal forces are a way of summarizing forecasters\u27 expectations about what will happen to a time...
Rule-based forecasting (RBF) uses rules to combine forecasts from simple extrapolation methods. Weig...
Sophisticated extrapolation techniques have had a negligible payoff for accuracy in forecasting. As ...