Forecasting is a challenging task that typically requires making assumptions about the observed data but also the future conditions. Inevitably, any forecasting process will result in some degree of inaccuracy. The forecasting performance will further deteriorate as the uncertainty increases. In this article, we focus on univariate time series forecasting and we review five approaches that one can use to enhance the performance of standard extrapolation methods. Much has been written about the “wisdom of the crowds” and how collective opinions will outperform individual ones. We present the concept of the “wisdom of the data” and how data manipulation can result in information extraction which, in turn, translates to improved forecast accur...
Empirical comparisons of reasonable approaches provide evidence on the best forecasting procedures t...
This paper examines the feasibility of rule-based forecasting, a procedure that applies forecasting ...
Forecasting as a scientific discipline has progressed a lot in the last 40 years, with Nobel prizes ...
In most business forecasting applications, the decision-making need we have directs the frequency of...
Forecasting time series data is an integral component for management, planning and decision making. ...
Temporal aggregation (TA) refers to transforming a time series from higher to lower frequencies (e.g...
Temporal aggregation (TA) refers to transforming a time series from higher to lower frequencies (e.g...
<p>Using the wisdom of crowds---combining many individual forecasts to obtain an aggregate estimate-...
This study introduces a new forecast aggregation technique. Adding to the well- known difficulties a...
When forecasting aggregated time series, several options are available. For example, the multivariat...
When forecasting aggregated time series, several options are available. For example, the multivariat...
Aggregated times series variables can be forecasted in different ways. For example, they may be fore...
Rule-Based Forecasting: Using Judgment in Time-Series Extrapolation Rule-Based Forecasting (RBF) is ...
This thesis presents and evaluates nineteen methods for combining up to eleven automated univariate ...
Identifying the most appropriate time series model to achieve a good forecasting accuracy is a chall...
Empirical comparisons of reasonable approaches provide evidence on the best forecasting procedures t...
This paper examines the feasibility of rule-based forecasting, a procedure that applies forecasting ...
Forecasting as a scientific discipline has progressed a lot in the last 40 years, with Nobel prizes ...
In most business forecasting applications, the decision-making need we have directs the frequency of...
Forecasting time series data is an integral component for management, planning and decision making. ...
Temporal aggregation (TA) refers to transforming a time series from higher to lower frequencies (e.g...
Temporal aggregation (TA) refers to transforming a time series from higher to lower frequencies (e.g...
<p>Using the wisdom of crowds---combining many individual forecasts to obtain an aggregate estimate-...
This study introduces a new forecast aggregation technique. Adding to the well- known difficulties a...
When forecasting aggregated time series, several options are available. For example, the multivariat...
When forecasting aggregated time series, several options are available. For example, the multivariat...
Aggregated times series variables can be forecasted in different ways. For example, they may be fore...
Rule-Based Forecasting: Using Judgment in Time-Series Extrapolation Rule-Based Forecasting (RBF) is ...
This thesis presents and evaluates nineteen methods for combining up to eleven automated univariate ...
Identifying the most appropriate time series model to achieve a good forecasting accuracy is a chall...
Empirical comparisons of reasonable approaches provide evidence on the best forecasting procedures t...
This paper examines the feasibility of rule-based forecasting, a procedure that applies forecasting ...
Forecasting as a scientific discipline has progressed a lot in the last 40 years, with Nobel prizes ...