APPLIED NUMERICAL ANALYSIS
In: Survey review, Band 25, Heft 196, S. 287-288
ISSN: 1752-2706
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In: Survey review, Band 25, Heft 196, S. 287-288
ISSN: 1752-2706
In: The Economic Journal, Band 95, Heft 378, S. 525
In: Economica, Band 43, Heft 172, S. 431
In: Vestnik MGIMO-Universiteta: naučnyj recenziruemyj žurnal = MGIMO review of international relations : scientific peer-reviewed journal, Heft 5(38), S. 56-78
ISSN: 2541-9099
Applied analysis of international relations began to form at MGIMO-University in the 1970s. This kind of research always attracted considerable interest of the Ministry of Foreign Affairs of the USSR, and other executive institutions of the government and received their support. The Ministry of Foreign Affairs initiated the creation of a special unit at MGIMO - the Problem Research Laboratory of Systems Analysis in International Relations. The Laboratory was using system analysis and quantitative methods to produce scientific information for decision-makers to make "more informed decisions in the field of international relations in order to reduce the level of uncertainty in the assessment of the expected impact of these decisions". In 2004, the successor to the Problem Laboratory - Center for International Studies - was transformed into a Research Coordination Council for International Studies, which in 2009 handed its functions to the Institute of International Studies. In comparison with previous periods the Institute of International Studies has significantly increased of research for the Ministry of International Affairs. It has also moved functionally outside its institutional boundaries and produces unclassified research for public offer. It also serves as a place for vivid public discussions among IR specialists. There's also an international recognition of the Institute of International Studies. The "Go to think tanks" international ranking produced annually at the University of Pennsylvania has put MGIMO-University on the 10th place in the category of university based think tanks.
This paper analyses the self-presentation of Barcelona Mayor Ada Colau in a period in which she had to consolidate her political identity as a result of her victory in the elections on May 25th 2015. Studying the Mayor's posts on her personal Facebook site during her first year and a half in office, we will analyse the configuration of Colau's discursive ethos. We will take into account five types of ethos we have identified in the corpus: that of activist, humanitarian, politician, mayor and leader. Based on the hypothesis that this ethos is extremely complex. We consider that her ethos is extremely complex due to the fact that it is based on various characteristics, which gives rise to a multi-form 'I' that fulfills Colau's need to legitimize her public image from a new position of power. ; Este trabajo propone analizar discursivamente la presentación de sí de la alcaldesa de Barcelona, Ada Colau, en un momento de afianzamiento de su identidad política disparado por su triunfo en las elecciones del 24 de mayo de 2015. A partir de un abordaje de las publicaciones de la alcaldesa en su página personal de Facebook durante el primer año y medio de su mandato, estudiaremos la construcción discursiva del ethos de Colau. Consideraremos cinco tipos de ethos que hemos identificado en el corpus: activista, humanidad, política, alcaldesa, líder. Sostenemos que su ethos es sumamente complejo en tanto radica en la conjunción de diferentes rasgos, dando lugar a un yo multiforme que responde a la necesidad de Colau de legitimar su imagen pública desde un nuevo lugar de poder.
BASE
In: The Economic Journal, Band 85, Heft 339, S. 674
In: International studies perspectives: ISP, Band 6, Heft 1, S. 94-98
ISSN: 1528-3585
In: Human relations: towards the integration of the social sciences, Band 48, Heft 7, S. 815-835
ISSN: 1573-9716, 1741-282X
The paper describes the application to longitudinal research of a method of data collection which combines quantitative and qualitative material. It is claimed that Group Feedback Analysis (GFA) helps to validate data collected by various methods and produces additional ethnographic material and insight into the process under investigation. When the people who supply the data are experienced in the subject matter, as is the case with managers and other employees in organizational research, GFA makes it possible for them to help with the interpretation of the data instead of leaving it entirely to the researcher. The method, which has previously been used in cross-sectional research, is shown to have utility in a longitudinal design where it can facilitate organizational learning. It can also contribute to the refinement of a theoretical model.
In: Wiley series in probability and statistics
"Applied Multiway Data Analysis presents a unique, thorough, and authoritative treatment of this relatively new and emerging approach to data analysis that is applicable across a range of fields, from the social and behavioral sciences to agriculture, environmental sciences, and chemistry. General introductions to multiway data types, methods, and estimation procedures are provided in addition to detailed explanations and advice for readers who would like to learn more about applying multiway methods. Using carefully laid out examples and engaging applications, the book begins with an introductory chapter that serves as a general overview of multiway analysis, including the types of problems it can address. Next, the process of setting up, carrying out, and evaluating multiway analyses is discussed along with commonly-encountered issues, such as preprocessing, missing data, model and dimensionality selection, postprocessing, transformation, as well as robustness and stability issues"--Provided by publisher
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Working paper
In: The international library of critical writings in economics 231
In: An Elgar reference collection
In: Edward Elgar E-Book Archive
Benefit-cost analysis reduces all of the impacts of a proposed policy change to a common unit of measurement. It is used in a wide variety of fields including agriculture, life and health, transportation and the environment. In this single volume the editors, both leading scholars in their field, present a judicious selection of previously published papers indispensable to the study of applied benefit-cost analysis. The comprehensive collection is an essential resource to scholars, researchers and policymakers alike
In: Review of Pacific Basin Financial Markets and Policies, Band 14, Heft 4, S. 715-735
ISSN: 1793-6705
The main purpose of this paper is to advocate a rule-based forecasting technique for anticipating stock index volatility. This paper intends to set up a stock index indicators projection prototype by using a multiple criteria decision making model consisting of the cluster analysis (CA) technique and Rough Set Theory (RST) to select the important attributes and forecast TSEC Capitalization Weighted Stock Index. The projection prototype was then released to forecast the stock index in the first half of 2009 with an accuracy of 66.67%. The results point out that the decision rules were authenticated to employ in forecasting the stock index volatility appropriately.
Focusing on high-dimensional applications, this 4th edition presents the tools and concepts used in multivariate data analysis in a style that is also accessible for non-mathematicians and practitioners. It surveys the basic principles and emphasizes both exploratory and inferential statistics; a new chapter on Variable Selection (Lasso, SCAD and Elastic Net) has also been added. All chapters include practical exercises that highlight applications in different multivariate data analysis fields: in quantitative financial studies, where the joint dynamics of assets are observed; in medicine, where recorded observations of subjects in different locations form the basis for reliable diagnoses and medication; and in quantitative marketing, where consumers' preferences are collected in order to construct models of consumer behavior. All of these examples involve high to ultra-high dimensions and represent a number of major fields in big data analysis. The fourth edition of this book on Applied Multivariate Statistical Analysis offers the following new features: A new chapter on Variable Selection (Lasso, SCAD and Elastic Net) All exercises are supplemented by R and MATLAB code that can be found on www.quantlet.de The practical exercises include solutions that can be found in Härdle, W. and Hlavka, Z., Multivariate Statistics: Exercises and Solutions. Springer Verlag, Heidelberg
In: Chapman and Hall/CRC Statistics in the Social and Behavioral Sciences Series
Cover -- Half Title -- Title Page -- Copyright Page -- Contents -- Preface -- Authors -- 1. Applied Survey Data Analysis: An Overview -- 1.1 Introduction -- 1.2 A Brief History of Applied Survey Data Analysis -- 1.2.1 Key Theoretical Developments -- 1.2.2 Key Software Developments -- 1.3 Example Data Sets and Exercises -- 1.4 Steps in Applied Survey Data Analysis -- 2. Getting to Know the Complex Sample Design -- 2.1 Introduction -- 2.1.1 Technical Documentation and Supplemental Literature Review -- 2.2 Classification of Sample Designs -- 2.2.1 Sampling Plans -- 2.2.2 Other Types of Study Designs Involving Probability Sampling -- 2.2.3 Inference from Survey Data -- 2.3 Target Populations and Survey Populations -- 2.4 Simple Random Sampling: A Simple Model for Design-Based Inference -- 2.4.1 Relevance of SRS to Complex Sample Survey Data Analysis -- 2.4.2 SRS Fundamentals: A Framework for Design-Based Inference -- 2.4.3 Example of Design-Based Inference under SRS -- 2.5 Complex Sample Design Effects -- 2.5.1 Design Effect Ratio -- 2.5.2 Generalized Design Effects and Effective Sample Sizes -- 2.6 Complex Samples: Cluster Sampling and Stratification -- 2.6.1 Cluster Sampling Plans -- 2.6.2 Stratification -- 2.6.3 Joint Effects of Sample Stratification and Cluster Sampling -- 2.7 Weighting in Analysis of Survey Data -- 2.7.1 Introduction to Weighted Analysis of Survey Data -- 2.7.2 Weighting for Probabilities of Selection (wsel) -- 2.7.3 Nonresponse Adjustment Weights (wnr) -- 2.7.3.1 Weighting Class Approach (wnr,wc) -- 2.7.3.2 Propensity Cell Adjustment Approach (wnr,prop) -- 2.7.4 Poststratification Weight Factors (wps) -- 2.7.5 Design Effects Due to Weighted Analysis -- 2.8 Multistage Area Probability Sample Designs -- 2.8.1 Primary Stage Sampling -- 2.8.2 Secondary Stage Sampling