textabstractFor many economic time-series variables that are observed regularly and frequently, for example weekly, the underlying activity is not distributed uniformly across the year. For the aim of predicting annual data, one may consider temporal aggregation into larger subannual units based on an activity timescale instead of cal- endar time. Such a scheme may strike a balance between annual modeling (which processes little information) and modeling at the finest available frequency (which may lead to an excessive parameter dimension), and it may also outperform model- ing calendar time units (with some months or quarters containing more information than others). We suggest an algorithm that performs an approximate inversion of the inh...
In most business forecasting applications, the decision-making need we have directs the frequency of...
Temporal aggregation (TA) refers to transforming a time series from higher to lower frequencies (e.g...
Identifying the most appropriate time series model to achieve a good forecasting accuracy is a chall...
For many economic time-series variables that are observed regularly and frequently, for example week...
For many economic time-series variables that are observed regularly and frequently, for example week...
Abstract: For many economic time-series variables that are observed regularly and frequently, for ex...
Abstract: For many economic time-series variables that are observed regularly and frequently, for ex...
Abstract: For many economic time-series variables that are observed regularly and frequently, for ex...
Abstract: For many economic time-series variables that are observed regularly and frequently, for ex...
Abstract: For many economic time-series variables that are observed regularly and frequently, for ex...
For many economic time-series variables that are observed regularly and frequently, for example week...
Procedures for the optimal seasonal adjustment of economic time series and their aggregation are der...
This chapter reviews the principal methods used by researchers when forecasting seasonal time series...
Temporal aggregation (TA) refers to transforming a time series from higher to lower frequencies (e.g...
Identifying the appropriate time series model to achieve good forecasting accuracy is a challenging ...
In most business forecasting applications, the decision-making need we have directs the frequency of...
Temporal aggregation (TA) refers to transforming a time series from higher to lower frequencies (e.g...
Identifying the most appropriate time series model to achieve a good forecasting accuracy is a chall...
For many economic time-series variables that are observed regularly and frequently, for example week...
For many economic time-series variables that are observed regularly and frequently, for example week...
Abstract: For many economic time-series variables that are observed regularly and frequently, for ex...
Abstract: For many economic time-series variables that are observed regularly and frequently, for ex...
Abstract: For many economic time-series variables that are observed regularly and frequently, for ex...
Abstract: For many economic time-series variables that are observed regularly and frequently, for ex...
Abstract: For many economic time-series variables that are observed regularly and frequently, for ex...
For many economic time-series variables that are observed regularly and frequently, for example week...
Procedures for the optimal seasonal adjustment of economic time series and their aggregation are der...
This chapter reviews the principal methods used by researchers when forecasting seasonal time series...
Temporal aggregation (TA) refers to transforming a time series from higher to lower frequencies (e.g...
Identifying the appropriate time series model to achieve good forecasting accuracy is a challenging ...
In most business forecasting applications, the decision-making need we have directs the frequency of...
Temporal aggregation (TA) refers to transforming a time series from higher to lower frequencies (e.g...
Identifying the most appropriate time series model to achieve a good forecasting accuracy is a chall...