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  • About
  • The Global ETD Search service is a free service for researchers to find electronic theses and dissertations. This service is provided by the Networked Digital Library of Theses and Dissertations.
    Our metadata is collected from universities around the world. If you manage a university/consortium/country archive and want to be added, details can be found on the NDLTD website.
1

Forecasting errors, directional accuracy and profitability of currency trading: The case of EUR/USD exchange rate

Costantini, Mauro, Crespo Cuaresma, Jesus, Hlouskova, Jaroslava January 2016 (has links) (PDF)
We provide a comprehensive study of out-of-sample forecasts for the EUR/USD exchange rate based on multivariate macroeconomic models and forecast combinations. We use profit maximization measures based on directional accuracy and trading strategies in addition to standard loss minimization measures. When comparing predictive accuracy and profit measures, data snooping bias free tests are used. The results indicate that forecast combinations, in particular those based on principal components of forecasts, help to improve over benchmark trading strategies, although the excess return per unit of deviation is limited.
2

Analysis of construction cost variations using macroeconomic, energy and construction market variables

Shahandashti, Seyed Mohsen 27 August 2014 (has links)
Recently, construction cost variations have been larger and less predictable. These variations are apparent in trends of indices such as Engineering News Record (ENR) Construction Cost Index (CCI) and National Highway Construction Cost Index (NHCCI). These variations are problematic for cost estimation, bid preparation and investment planning. Inaccurate cost estimation can result in bid loss or profit loss for contractors and hidden price contingencies, delayed or cancelled projects, inconsistency in budgets and unsteady flow of projects for owner organizations. Cost variation has become a major concern in all industry sectors, such as infrastructure, heavy industrial, light industrial, and building. The major problem is that construction cost is subject to significant variations that are difficult to forecast. The objectives of this dissertation are to identify the leading indicators of CCI and NHCCI from existing macroeconomic, energy and construction market variables and create appropriate models to use the information in past values of CCI and NHCCI and their leading indicators in order to forecast CCI and NHCCI more accurately than existing CCI and NHCCI forecasting models. A statistical approach based on multivariate time series analysis is used as the main research approach. The first step is to identify leading indicators of construction cost variations. A pool of 16 candidate (potential) leading indicators is initially selected based on a comprehensive literature review about construction cost variations. Then, the leading indicators of CCI are identified from the pool of candidate leading indicators using empirical tests including correlation tests, unit root tests, and Granger causality tests. The identified leading indicators represent the macroeconomic and construction market context in which the construction cost is changing. Based on the results of statistical tests, several multivariate time series models are created and compared with existing models for forecasting CCI. These models take advantage of contextual information about macroeconomic condition, energy price and construction market for forecasting CCI accurately. These multivariate time series models are rigorously diagnosed using statistical tests including Breusch-Godfrey serial correlation Lagrange multiplier tests and Autoregressive conditional heteroskedasticity (ARCH) tests. They are also compared with each other and other existing models. Comparison is based on two typical error measures: out-of-sample mean absolute prediction error and out-of-sample mean squared error. Based on the unit root tests and Granger causality tests, consumer price index, crude oil price, producer price index, housing starts and building permits are selected as leading indicators of CCI. In other words, past values of these variables contain information that is useful for forecasting CCI. Based on the results of cointegration tests, Vector Error Correction (VEC) models are created as proper multivariate time series models to forecast CCI. Our results show that the multivariate time series model including CCI and crude oil price pass diagnostic tests successfully. It is also more accurate than existing models for forecasting CCI in terms of out-of-sample mean absolute prediction error and out-of-sample mean square error. The predictability of the multivariate time series modeling for forecasting CCI is also evaluated using stochastically simulated data (Simulated CCI and crude oil price). First, 50 paths of crude oil price are created using Geometric Brownian Motion (GBM). Then, 50 paths of CCI are created using Gaussian Process that is considering the relationship between CCI and crude oil price over time. Finally, 50 multivariate and univariate time series models are created using the simulated data and the predictability of univariate and multivariate time series models are compared. The results show that the multivariate modeling is more accurate than univariate modeling for forecasting simulated CCI. The sensitivity of the models to inputs is also examined by adding errors to the simulated data and conducting sensitivity analysis. The proposed approach is also implemented for identifying the leading indicators of NHCCI from the pool of candidate leading indicators and creating appropriate multivariate forecasting models that use the information in past values of NHCCI and its leading indicators. Based on the unit root tests and Granger causality tests, crude oil price and average hourly earnings in the construction industry are selected as leading indicators of NHCCI. In other words, past values of these variables contain information that is useful for forecasting NHCCI. Based on the results of cointegration tests, Vector Error Correction (VEC) models are created as the proper multivariate time series models to forecast NHCCI. The results show that the VEC model including NHCCI and crude oil price, and the VEC model including NHCCI, crude oil price, and average hourly earnings pass diagnostic tests. These VEC models are also more accurate than the univariate models for forecasting NHCCI in terms of out-of-sample prediction error and out-of-sample mean square error. The findings of this dissertation contribute to the body of knowledge in construction cost forecasting by rigorous identification of the leading indicators of construction cost variations and creation of multivariate time series models that are more accurate than the existing models for forecasting construction cost variations. It is expected that proposed forecasting models enhance the theory and practice of construction cost forecasting and help cost engineers and capital planners prepare more accurate bids, cost estimates and budgets for capital projects.
3

Can Macroeconomists Get Rich Forecasting Exchange Rates?

Costantini, Mauro, Crespo Cuaresma, Jesus, Hlouskova, Jaroslava 06 1900 (has links) (PDF)
We provide a systematic comparison of the out-of-sample forecasts based on multivariate macroeconomic models and forecast combinations for the euro against the US dollar, the British pound, the Swiss franc and the Japanese yen. We use profit maximization measures based on directional accuracy and trading strategies in addition to standard loss minimization measures. When comparing predictive accuracy and profit measures, data snooping bias free tests are used. The results indicate that forecast combinations help to improve over benchmark trading strategies for the exchange rate against the US dollar and the British pound, although the excess return per unit of deviation is limited. For the euro against the Swiss franc or the Japanese yen, no evidence of generalized improvement in profit measures over the benchmark is found. (authors' abstract) / Series: Department of Economics Working Paper Series
4

Ensaios em alocação de portfólio com mudança de regime

Oliveira, André Barbosa 15 August 2014 (has links)
Submitted by Andre Barbosa Oliveira (andre.boliveira@hotmail.com) on 2014-09-10T13:02:37Z No. of bitstreams: 1 EnsaiosPortfolioMudançaDeRegime.pdf: 2662067 bytes, checksum: af012615c3e200b24dcafe0ba45c563d (MD5) / Approved for entry into archive by Suzinei Teles Garcia Garcia (suzinei.garcia@fgv.br) on 2014-09-10T17:49:11Z (GMT) No. of bitstreams: 1 EnsaiosPortfolioMudançaDeRegime.pdf: 2662067 bytes, checksum: af012615c3e200b24dcafe0ba45c563d (MD5) / Made available in DSpace on 2014-09-10T18:01:56Z (GMT). No. of bitstreams: 1 EnsaiosPortfolioMudançaDeRegime.pdf: 2662067 bytes, checksum: af012615c3e200b24dcafe0ba45c563d (MD5) Previous issue date: 2014-08-15 / Uma das principais características dos ativos financeiros é a mudança de regime. Os preços dos ativos apresentam pouca variabilidade nos períodos de normalidade e possuem quedas inesperadas e são instáveis nos períodos de crise. Esta tese estuda alocação de portfólio com mudança de regime. O primeiro ensaio considera a decisão ótima de investimento entre os ativos de risco quando o mercado financeiro possui mudança de regime, definindo portfólios ótimos que dependem dos retornos esperados, risco e das crenças sobre o estado do mercado financeiro. O segundo ensaio estuda alocação de portfólio baseada em estimativas do modelo fatorial com mudança de regime e compara com alocações usando modelos fatoriais lineares e momentos amostrais. A mudança de regime tem maior efeito sobre o processo de escolha dos portfólios do que sobre as estimativas usadas para definir as carteiras. / Among the characteristics of the financial assets an important stylized fact is regime change. Asset prices show little variability in good times and have unexpected drops and are unstable in times of crisis. This thesis studies portfolio allocation with regime change. The first essay considers the optimal investment decision among risky assets when the financial market has regime switching. The optimal portfolio depend on expected returns and risk as well as on beliefs about the state of the financial market. The second essay studies asset allocation based on estimates of the factor model with regime change and compares with allocations using linear factor models and sample moments. The presence of multiple regimes has a greater effect on portfolio choice than on the estimates used to determine the portfolios.

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