13,902 research outputs found

    Intertemporal Choice of Fuzzy Soft Sets

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    This paper first merges two noteworthy aspects of choice. On the one hand, soft sets and fuzzy soft sets are popular models that have been largely applied to decision making problems, such as real estate valuation, medical diagnosis (glaucoma, prostate cancer, etc.), data mining, or international trade. They provide crisp or fuzzy parameterized descriptions of the universe of alternatives. On the other hand, in many decisions, costs and benefits occur at different points in time. This brings about intertemporal choices, which may involve an indefinitely large number of periods. However, the literature does not provide a model, let alone a solution, to the intertemporal problem when the alternatives are described by (fuzzy) parameterizations. In this paper, we propose a novel soft set inspired model that applies to the intertemporal framework, hence it fills an important gap in the development of fuzzy soft set theory. An algorithm allows the selection of the optimal option in intertemporal choice problems with an infinite time horizon. We illustrate its application with a numerical example involving alternative portfolios of projects that a public administration may undertake. This allows us to establish a pioneering intertemporal model of choice in the framework of extended fuzzy set theorie

    Influence of Portfolio Management in Decision-Making

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    Purpose: Today’s manufacturing facilities are challenged by highly customized products and just in time manufacturing and delivery of these products. In this study, a batch scheduling problem has been addressed to enable on-time completion of customer orders in a lean manufacturing environment. The problem is optimizing the partitioning of product components into batches and scheduling of the resulting batches where each customer order is received as a set of products made of various components. Design/methodology/approach: Three different mathematical models for minimization of total earliness and tardiness of customer orders are developed to provide on-time completion of customer orders and also, to avoid excess final product inventory. The first model is a non-linear integer programming model whereas the second is a linearized version of the first. Finally, to solve larger sized instances of the problem, an alternative linear integer model is presented. Findings: Computational study using a suit set of test instances showed that the alternative linear integer model is able to solve all test instances in varying sizes within quite shorter computer times compared to the other two models. It has also been showed that the alternative model is able to solve moderate sized real-world problems. Originality/value: The problem under study differentiates from existing batch scheduling problems in the literature owing to the inclusion of new circumstances that are present in real-world applications. Those are: customer orders consisting of multi-products made of multi-parts, processing of all parts of the same product from different orders in the same batch, and delivering the orders only when all related products are completed. This research also contributes to the literature of batch scheduling problem by presenting new optimization models.Peer Reviewe

    Aspiration Level Approach to Interactive Multi-objective Programming and its Applications

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    Several kinds of techniques for multiple criteria decision making have been developed for the last few decades. Above all, the aspiration level approach to multi-objective programming problems is widely recognized to be effective in many practical fields. As a variant of the aspiration level approach, the author developed the satisficing tradeoff method. In addition, he has been applying the method to several kinds of practical problems for these ten years. Some of them were already performed in real life. Typical examples such as feed formulation for live stock, erection management of a cable stayed bridge and bond portfolio selection will be included in this paper

    Scaled and stable mean-variance-EVaR portfolio selection strategy with proportional transaction costs

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    This paper studies a portfolio optimization problem with variance and Entropic Value-at-Risk (evar) as risk measures. As the variance measures the deviation around the expected return, the introduction of evar in the mean-variance framework helps to control the downside risk of portfolio returns. This study utilized the squared l2-norm to alleviate estimation risk problems arising from the mean estimate of random returns. To adequately represent the variance-evar risk measure of the resulting portfolio, this study pursues rescaling by the capital accessible after payment of transaction costs. The results of this paper extend the classical Markowitz model to the case of proportional transaction costs and enhance the efficiency of portfolio selection by alleviating estimation risk and controlling the downside risk of portfolio returns. The model seeks to meet the requirements of regulators and fund managers as it represents a balance between short tails and variance. The practical implications of the findings of this study are that the model when applied, will increase the amount of capital for investment, lower transaction cost and minimize risk associated with the deviation around the expected return at the expense of a small additional risk in short tails

    Geneettinen Algoritmi Optimaalisten Investointistrategioiden MÀÀrittÀmiseen

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    Investors including banks, insurance companies and private investors are in a constant need for new investment strategies and portfolio selection methods. In this work we study the developed models, forecasting methods and portfolio management approaches. The information is used to create a decision-making system, or investment strategy, to form stock investment portfolios. The decision-making system is optimized using a genetic algorithm to find profitable low risk investment strategies. The constructed system is tested by simulating its performance with a large set of real stock market and economic data. The tests reveal that the constructed system requires a large sample of stock market and economic data before it finds well performing investment strategies. The parameters of the decision-making system converge surprisingly fast and the available computing capacity turned out to be sufficient even when a large amount of data is used in the system calibration. The model seems to find logics that govern stock market behavior. With a sufficient large amount of data for the calibration, the decision-making model finds strategies that work with regard to profit and portfolio diversification. The recommended strategies worked also outside the sample data that was used for system parameter identification (calibration). This work was done at Unisolver Ltd.Investoijat kuten pankit, vakuutusyhtiöt ja yksityissijoittajat tarvitsevat jatkuvasti uusia investointistrategioita portfolioiden mÀÀrittÀmiseen. TÀssÀ työssÀ tutkitaan aiemmin kehitettyjÀ sijoitusmalleja, ennustemenetelmiÀ ja sijoitussalkun hallinnassa yleisesti kÀytettyjÀ lÀhestymistapoja. LöydettyÀ tietoa hyödyntÀen kehitetÀÀn uusi pÀÀtöksentekomenetelmÀ (investointistrategia), jolla mÀÀritetÀÀn sijoitussalkun sisÀltö kunakin ajanhetkenÀ. PÀÀtöksentekomalli optimoidaan geneettisellÀ algoritmilla. Tavoitteena on löytÀÀ tuottavia ja pienen riskin investointistrategioita. Kehitetyn mallin toimintaa simuloidaan suurella mÀÀrÀllÀ todellista pörssi- ja talousaineistoa. Testausvaihe osoittaakin, ettÀ pÀÀtöksentekomallin optimoinnissa tarvitaan suuri testiaineisto toimivien strategioiden löytÀmiseksi. Rakennetun mallin parametrit konvergoivat optimointivaiheessa nopeasti. KÀytettÀvissÀ oleva laskentateho osoittautui riittÀvÀksi niissÀkin tilanteissa, joissa toisten menetelmien laskenta laajan aineiston takia hidastuu. Malli vaikuttaa löytÀvÀn logiikkaa, joka ymmÀrtÀÀ pörssikurssien kÀyttÀytymistÀ. RiittÀvÀn suurella testiaineistolla malli löytÀÀ strategioita, joilla saavutetaan hyvÀ tuotto ja pieni riski. Strategiat toimivat myös mallin kalibroinnissa kÀytetyn aineiston ulkopuolella, tuottaen hyviÀ sijoitussalkkuja. Työ tehtiin Unisolver Oy:ssÀ

    Encompassing statistically unquantifiable randomness in goal programming: an application to portfolio selection

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    [EN] Random events make multiobjective programming solutions vulnerable to changes in input data. In many cases statistically quantifiable information on variability of relevant parameters may not be available for decision making. This situation gives rise to the problem of obtaining solutions based on subjective beliefs and a priori risk aversion to random changes. To solve this problem, we propose to replace the traditional weighted goal programming achievement function with a new function that considers the decision maker's perception of the randomness associated with implementing the solution through the use of a penalty term. This new function also implements the level of a priori risk aversion based around the decision maker's beliefs and perceptions. The proposed new formulation is illustrated by means of a variant of the mean absolute deviation portfolio selection model. As a result, difficulties imposed by the absence of statistical information about random events can be encompassed by a modification of the achievement function to pragmatically consider subjective beliefs.Open Access funding provided thanks to the CRUE-CSIC agreement with Springer Nature. s This work is devoted to the memory of Professor Enrique Ballestero for his selfess dedication to it.Bravo Selles, M.; Jones, D.; Pla SantamarĂ­a, D.; Salas-Molina, F. (2022). Encompassing statistically unquantifiable randomness in goal programming: an application to portfolio selection. Operational Research (Online). 22(5):5685-5706. https://doi.org/10.1007/s12351-022-00713-156855706225Abdelaziz FB, Aouni B, El Fayedh R (2007) Multi-objective stochastic programming for portfolio selection. Eur J Oper Res 177(3):1811–1823Abdelaziz FB, El Fayedh R, Rao A (2009) A discrete stochastic goal program for portfolio selection: the case of united arab emirates equity market. 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    Robust portfolio management with multiple financial analysts

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    Portfolio selection theory, developed by Markowitz (1952), is one of the best known and widely applied methods for allocating funds among possible investment choices, where investment decision making is a trade-off between the expected return and risk of the portfolio. Many portfolio selection models have been developed on the basis of Markowitz’s theory. Most of them assume that complete investment information is available and that it can be accurately extracted from the historical data. However, this complete information never exists in reality. There are many kinds of ambiguity and vagueness which cannot be dealt with in the historical data but still need to be considered in portfolio selection. For example, to address the issue of uncertainty caused by estimation errors, the robust counterpart approach of Ben-Tal and Nemirovski (1998) has been employed frequently in recent years. Robustification, however, often leads to a more conservative solution. As a consequence, one of the most common critiques against the robust counterpart approach is the excessively pessimistic character of the robust asset allocation. This thesis attempts to develop new approaches to improve on the respective performances of the robust counterpart approach by incorporating additional investment information sources, so that the optimal portfolio can be more reliable and, at the same time, achieve a greater return. [Continues.

    "General Conclusions: From Crisis to A Global Political Economy of Freedom"

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    In this chapter I sum up the basic problems for a new theory of 21st century financial crises in light of the Asian and other subsequent crises. My conclusion is that there are indeed deep structural causes at work in the global markets that affect the political economy of countries and regions. Methodologically, new concepts, models and theories are constructed, at ;least partially, to conduct further meaningful empirical work leading to relevant policy conclusions. This book belongs to the beginning of intellectual efforts in this direction. Political economic analyses at the country level, CGE modeling within a new theoretical framework, and neural network approach to learning in a bounded rationality framework point to a role for reforms at the state, firm and regional level. A new type of institutional analysis called the 'extended panda's thumb approach' leads to the recommendation that path dependent hybrid structures need to be constructed at the local, national, regional and global level to lead to a new global financial architecture for the prevention--- and if prevention fails--- management of financial crises.

    An integrated approach to value chain analysis of end of life aircraft treatment

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    Dans cette thĂšse, on propose une approche holistique pour l’analyse, la modĂ©lisation et l’optimisation des performances de la chaĂźne de valeur pour le traitement des avions en fin de vie (FdV). Les recherches rĂ©alisĂ©es ont dĂ©bouchĂ© sur onze importantes contributions. Dans la premiĂšre contribution, on traite du contexte, de la complexitĂ©, de la diversitĂ© et des dĂ©fis du recyclage d’avions en FdV. La seconde contribution traite du problĂšme de la prĂ©diction du nombre de retraits d’avions et propose une approche intĂ©grĂ©e pour l’estimation de ce nombre de retraits. Le troisiĂšme et le quatriĂšme articles visent Ă  identifier les parties prenantes, les valeurs perçues par chaque partenaire et indiquent comment cette valeur peut affecter les dĂ©cisions au stade de la conception. Les considĂ©rations relatives Ă  la conception et Ă  la fabrication ont donnĂ© lieu Ă  quatre contributions importantes. La cinquiĂšme contribution traite des dĂ©fis et opportunitĂ©s pouvant rĂ©sulter de l’application des concepts de la chaĂźne logistique verte, pour les manufacturiers d’avions. Dans la sixiĂšme contribution, un outil d’aide Ă  la dĂ©cision a Ă©tĂ© dĂ©veloppĂ© pour choisir la stratĂ©gie verte qui optimise les performances globales de de toute la chaĂźne de valeur en tenant compte des prioritĂ©s et contraintes de chaque partenaire. Dans la septiĂšme contribution, un modĂšle mathĂ©matique est proposĂ© pour analyser le choix stratĂ©gique des manufacturiers en rĂ©ponse aux directives en matiĂšre de FdV de produits comme le rĂ©sultat des interactions des compĂ©titeurs dans le marchĂ©. La huitiĂšme contribution porte sur les travaux rĂ©alisĂ©s dans le cadre d’un stage chez le constructeur d’avions, Bombardier. Cette derniĂšre traite de l’apport de « l’analyse du cycle de vie » au stade de la conception d’avions. La neuviĂšme contribution introduit une mĂ©thodologie d’analyse de la chaĂźne de valeur dans un contexte de dĂ©veloppement durable. Finalement, les dixiĂšme et onziĂšme contributions proposent une approche holistique pour le traitement des avions en FdV en intĂ©grant les concepts du « lean », du dĂ©veloppement durable et des contraintes et opportunitĂ©s inhĂ©rentes Ă  la mondialisation des affaires. Un modĂšle d’optimisation intĂ©grant les modĂšles d’affaires, les stratĂ©gies de dĂ©sassemblage et les structures du rĂ©seau qui influencent l’efficacitĂ©, la stabilitĂ© et l’agilitĂ© du rĂ©seau de rĂ©cupĂ©ration est proposĂ©. Les donnĂ©es requises pour exploiter le modĂšle sont indiquĂ©es dans l’article. Mots-clĂ©s: Fin de vie des avions, analyse de la chaĂźne de valeurs, dĂ©veloppement durable, intervenants.The number of aircrafts at the end of life (EOL) is continuously increasing. Dealing with retired aircrafts considering the environmental, social and economic impacts is becoming an emerging problem in the aviation industry in near future. This thesis seeks to develop a holistic approach in order to analyze the value chain of EOL aircraft treatment in the context of sustainable development. The performed researches have led to eleven main contributions. In the first contribution, the complexity and diversity of the EOL aircraft recycling including the challenges and problem context are discussed. The second contribution addresses the challenges for estimation of retired aircrafts and proposes an integrated approach for prediction of EOL aircrafts. The third and fourth contributions aim to identify the players involved in EOL recycling context, values perceived by different shareholders and formulate that how such value can affect design decisions. Design stage consideration and manufacture’s issues are discussed and have led to four main contributions. The fifth contribution addresses the opportunities and challenges of applying green supply chain for aircraft manufacturers. In the sixth contribution, a decision tool is developed to aid manufactures in early stage of design for their green strategy choices. In the seventh contribution, a mathematical model is developed in order to analyze the strategic choice of manufacturers in response to EOL directives as the result of the interaction of competitors in the market. An internship project has been also performed in Bombardier and led to the eighth contribution, which addresses life cycle approach and incorporating the sustainability in early stage of design of aircraft. The ninth contribution introduces a methodology for analyzing the value chain in the context of sustainable development. Finally, the tenth and eleventh contributions propose a holistic approach to EOL aircraft treatment considering lean principals, sustainable development, and global business environment. An optimization model is developed to support decision making in both strategic and managerial level. The analytical approaches, decision tools and step by step guidelines proposed in this thesis will aid decision makers to identify appropriate strategies for the EOL aircraft treatment in the sustainable development context. Keywords: End of life aircraft, value chain analysis, sustainable development, stakeholders

    Three Decades of Research on Strategic Information System Plan Development

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    Strategic information system planning (SISP), including aligning business and IS/IT strategies, has been the conventional wisdom known for decades to academics and practitioners. Since the 1980s, many tools and models have been developed to facilitate strategic information system planning and implementation. These are development processes that define a set of steps for SISP or approaches that facilitate part of the SISP process. This article employs a systematic review approach and starts with a search of 2730 papers in nine top-ranked scientific databases. After an in-depth study of these papers, a final set of 85 studies is retrieved that focus directly on SISP development. We use this final set of papers to compare the steps proposed in different processes and the relevant approaches for each step. Additionally, an in-depth analysis of development processes has produced a generic seven-phase framework covering activities introduced in the literature. These seven phases are: initiation, business analysis, IS/IT analysis, strategy formulation, portfolio planning, implementation, and evaluation. The paper also classifies approaches that facilitate SISP and concludes with recommendations for practitioners and researchers
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