Statistical efficiency in the linear combination of forecasts
In: International journal of forecasting, Band 1, Heft 2, S. 151-163
ISSN: 0169-2070
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In: International journal of forecasting, Band 1, Heft 2, S. 151-163
ISSN: 0169-2070
In: Journal of applied mathematics & decision sciences: JAMDS, Band 2007, S. 1-16
ISSN: 1532-7612
We will place certain parts of the theory of statistical efficiency into the author's
operator trigonometry (1967), thereby providing new geometrical understanding of statistical efficiency. Important
earlier results of Bloomfield and Watson, Durbin and Kendall, Rao and Rao, will be so interpreted. For
example, worse case relative least squares efficiency corresponds to and is achieved by the maximal turning
antieigenvectors of the covariance matrix. Some little-known historical perspectives will also be exposed.
The overall view will be emphasized.
In: American Journal of Agricultural Economics, Band 83, Heft 5, S. 1321-1327
SSRN
In: Supreme Court of Judicature, Jamaica
SSRN
Working paper
In: http://hdl.handle.net/2027/chi.39523547
Issued also without document series note with title Report on statistical work of U.S. government submitted to Congress. ; Referred to the Committee on reform in the civil service and ordered printed, with illustrations, September 22, 1922. ; Mode of access: Internet.
BASE
In: 67th Cong., 2d sess. House Doc. 394
"Serial no. 107-227." ; Shipping list no.: 2003-0258-P. ; Distributed to some depository libraries in microfiche. ; Includes bibliographical references. ; Mode of access: Internet.
BASE
World Affairs Online
In: International journal of academic research in business and social sciences: IJ-ARBSS, Band 7, Heft 5
ISSN: 2222-6990
This thesis aims at developing a method that makes use of advanced statistical models to analyze building consumption data and assess energy retrofit impact. The research is focused on tertiary buildings and the models are based on hourly and sub-hourly smart meters data ; It is estimated that about 40% of worldwide energy use occurs in buildings [ 1 ]. Increasing energy efficiency in the building sector has become a priority worldwide and especially in the European Union. It is clear that an immense energy efficien cy potential lies in buildings and it is not properly harnessed. The energy efficiency increa se can be realized through energy retrofitting actions, optimization of the building c ontrol strategy, or through the timely reporting of abnormal energy performance. In this thesis, a framework for the evaluation of the impact of energy retrofitting measures, with a statistic al learning approach, is proposed. The model was developed as part of EDI-Net, a Horizon 2020 pro ject, with the main goal of facilitating energy consumption monitoring in buildings a nd allowing analysis and evaluation of applied energy efficiency measures (EEM). The baseline mod els for the impact evaluation are generated using Generalized Additive Models (GAM), enh anced with auto regressive terms. Three different pilot buildings (one in Spain and two i n the UK) are examined and their savings evaluated through the analysis of hourly smar t meter consumption data and weather data. The results show that it's possible to evaluat e energy savings in tertiary buildings using a data-driven approach, although further w ork is needed, in order to validate and automatize the model.
BASE
This thesis aims at developing a method that makes use of advanced statistical models to analyze building consumption data and assess energy retrofit impact. The research is focused on tertiary buildings and the models are based on hourly and sub-hourly smart meters data ; It is estimated that about 40% of worldwide energy use occurs in buildings [ 1 ]. Increasing energy efficiency in the building sector has become a priority worldwide and especially in the European Union. It is clear that an immense energy efficien cy potential lies in buildings and it is not properly harnessed. The energy efficiency increa se can be realized through energy retrofitting actions, optimization of the building c ontrol strategy, or through the timely reporting of abnormal energy performance. In this thesis, a framework for the evaluation of the impact of energy retrofitting measures, with a statistic al learning approach, is proposed. The model was developed as part of EDI-Net, a Horizon 2020 pro ject, with the main goal of facilitating energy consumption monitoring in buildings a nd allowing analysis and evaluation of applied energy efficiency measures (EEM). The baseline mod els for the impact evaluation are generated using Generalized Additive Models (GAM), enh anced with auto regressive terms. Three different pilot buildings (one in Spain and two i n the UK) are examined and their savings evaluated through the analysis of hourly smar t meter consumption data and weather data. The results show that it's possible to evaluat e energy savings in tertiary buildings using a data-driven approach, although further w ork is needed, in order to validate and automatize the model.
BASE
In: Journal of Business of the University of Chicago, Band 14, Heft 2, S. 169
In: Emerging markets, finance and trade: EMFT, Band 58, Heft 7, S. 2004-2016
ISSN: 1558-0938