Pages that link to "Item:Q2494599"
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The following pages link to Benchmarking, temporal distribution, and reconciliation methods for time series. (Q2494599):
Displaying 18 items.
- Reconciliation of systems of time series according to a growth rates preservation principle (Q897853) (← links)
- A non-parametric iterative smoothing method for benchmarking and temporal distribution (Q961797) (← links)
- Measuring sovereign risk spillovers and assessing the role of transmission channels: a spatial econometrics approach (Q1657178) (← links)
- Single- and two-stage cross-sectional and time series benchmarking procedures for small area estimation (Q2342860) (← links)
- Bench-Marking Time Series with Reliable Bench-Marks (Q3489230) (← links)
- (Q4438818) (← links)
- Optimal Forecast Reconciliation for Hierarchical and Grouped Time Series Through Trace Minimization (Q5231508) (← links)
- Benchmarked Estimators for a Small Area Mean Under a Onefold Nested Regression Model (Q6088254) (← links)
- Benchmarking, Temporal Disaggregation, and Reconciliation of Systems of Time Series (Q6147718) (← links)
- On the sequential benchmarking of subannual series to annual totals (Q6147720) (← links)
- Entropy‐based benchmarking methods (Q6147722) (← links)
- Temporal disaggregation of economic time series: The view from the trenches (Q6147723) (← links)
- Retropolating some relevant series of Mexico's System of National Accounts at constant prices: The case of Mexico City's GDP (Q6147726) (← links)
- Maximum likelihood estimation framework for table‐balancing adjustments (Q6147728) (← links)
- The statistical reconciliation of time series of accounts between two benchmark revisions (Q6147730) (← links)
- Solving large‐data consistency problems at Statistics Netherlands using macro‐integration techniques (Q6147732) (← links)
- Seasonal adjustment subject to accounting constraints (Q6147733) (← links)
- Reconciliation of seasonally adjusted data with applications to the Swedish quarterly national accounts (Q6147734) (← links)