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Xiaoxia Huang

Bio: Xiaoxia Huang is an academic researcher from University of Science and Technology Beijing. The author has contributed to research in topics: Portfolio & Portfolio optimization. The author has an hindex of 26, co-authored 63 publications receiving 2180 citations. Previous affiliations of Xiaoxia Huang include University of Science and Technology & Beijing Institute of Technology.


Papers
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Journal ArticleDOI
TL;DR: Two fuzzy mean-semivariance models are proposed based on the concept of semivariance of fuzzy variable, and a fuzzy simulation based genetic algorithm is presented to solve portfolio selection problem in fuzzy environment.

229 citations

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TL;DR: A hybrid intelligent algorithm integrating fuzzy simulation and genetic algorithm is designed in the paper to provide a general method to solve the new models of credibility-based portfolio selection model.

148 citations

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TL;DR: Two new models for portfolio selection in which the security returns are stochastic variables with fuzzy information are proposed, designed to solve the optimization problem which is otherwise hard to solve with the existing algorithms due to the complexity of the return variables.

139 citations

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TL;DR: This short paper compares the fuzzymean-variance model with the fuzzy mean-entropy model in two special cases and presents a hybrid intelligent algorithm for solving the proposed models in general cases.
Abstract: This short paper proposes two types of credibility-based fuzzy mean-entropy models. In the short paper, entropy is used as the measure of risk. The smaller the entropy value is, the less uncertainty the portfolio return contains, and thus, the safer the portfolio is. Furthermore, as a measure of risk, entropy is free from reliance on symmetrical distributions of security returns and can be computed from nonmetric data. In addition, the short paper compares the fuzzy mean-variance model with the fuzzy mean-entropy model in two special cases and presents a hybrid intelligent algorithm for solving the proposed models in general cases. To illustrate the effectiveness of the proposed algorithm, the short paper also provides two numerical examples.

120 citations

Journal ArticleDOI
TL;DR: A hybrid intelligent algorithm integrating genetic algorithm and random fuzzy simulation is designed and two types of zero–one integer chance-constrained model with random fuzzy parameters are provided.

100 citations


Cited by
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Journal ArticleDOI
Baoding Liu1
TL;DR: This paper provides a survey of credibility theory that is a new branch of mathematics for studying the behavior of fuzzy phenomena and some basic concepts and fundamental theorems are introduced, including credibility measure, fuzzy variable, membership function, credibility distribution, expected value, variance, critical value, entropy, distance, and credibility subadditivity theorem are introduced.
Abstract: This paper provides a survey of credibility theory that is a new branch of mathematics for studying the behavior of fuzzy phenomena. Some basic concepts and fundamental theorems are introduced, including credibility measure, fuzzy variable, membership function, credibility distribution, expected value, variance, critical value, entropy, distance, credibility subadditivity theorem, credibility extension theorem, credibility semicontinuity law, product credibility theorem, and credibility inversion theorem. Recent developments and applications of credibility theory are summarized. A new idea on chance space and hybrid variable is also documented.

444 citations

Journal ArticleDOI
TL;DR: Comparative research review of three famous artificial intelligent techniques in financial market shows that accuracy of these artificial intelligent methods is superior to that of traditional statistical methods in dealing with financial problems, especially regarding nonlinear patterns.
Abstract: Nowadays, many current real financial applications have nonlinear and uncertain behaviors which change across the time. Therefore, the need to solve highly nonlinear, time variant problems has been growing rapidly. These problems along with other problems of traditional models caused growing interest in artificial intelligent techniques. In this paper, comparative research review of three famous artificial intelligence techniques, i.e., artificial neural networks, expert systems and hybrid intelligence systems, in financial market has been done. A financial market also has been categorized on three domains: credit evaluation, portfolio management and financial prediction and planning. For each technique, most famous and especially recent researches have been discussed in comparative aspect. Results show that accuracy of these artificial intelligent methods is superior to that of traditional statistical methods in dealing with financial problems, especially regarding nonlinear patterns. However, this outperformance is not absolute.

404 citations

Journal ArticleDOI
TL;DR: A mean-variance-skewness model is presented and the corresponding variations are also considered, and a genetic algorithm integrating fuzzy simulation is designed to solve the models.

280 citations

Journal ArticleDOI
TL;DR: A survey on the state-of-the-art of research, reported in the specialized literature to date, related to this framework, makes a distinction between the (widely covered) portfolio optimization problem and the other applications in the field.
Abstract: The coinciding development of multiobjective evolutionary algorithms (MOEAs) and the emergence of complex problem formulation in the finance and economics areas has led to a mutual interest from both research communities. Since the 1990s, an increasing number of works have thus proposed the application of MOEAs to solve complex financial and economic problems, involving multiple objectives. This paper provides a survey on the state-of-the-art of research, reported in the specialized literature to date, related to this framework. The taxonomy chosen here makes a distinction between the (widely covered) portfolio optimization problem and the other applications in the field. In addition, potential paths for future research within this area are identified.

267 citations

01 Jan 2007
TL;DR: It is concluded that the proposed approach can assist decision makers in selecting suitable R&D portfolios, while there is a lack of reliable project information.
Abstract: Making R&D portfolio decision is difficult, because long lead times of R&D and market and technology dynamics lead to unavailable and unreliable collected data for portfolio management. The objective of this research is to develop a fuzzy R&D portfolio selection model to hedge against the R&D uncertainty. Fuzzy set theory is applied to model uncertain and flexible project information. Since traditional project valuation methods often underestimate the risky project, a fuzzy compound-options model is used to evaluate the value of each R&D project. The R&D portfolio selection problem is formulated as a fuzzy zero-one integer programming model that can handle both uncertain and flexible parameters to determine the optimal project portfolio. A new transformation method based on qualitative possibility theory is developed to convert the fuzzy portfolio selection model into a crisp mathematical model from the risk-averse perspective. The transformed model can be solved by an optimization technique. An example is used to illustrate the proposed approach. We conclude that the proposed approach can assist decision makers in selecting suitable R&D portfolios, while there is a lack of reliable project information.

266 citations