Loading...

Table of Content

    30 March 2019, Volume 7 Issue 1
    Discrete Optimization
    Preface: Special Issue on Optimization Algorithms and Applications
    Dong-Dong Ge, Zai-Wen Wen, Ya-Xiang Yuan
    2019, 7(1):  1-3.  doi:10.1007/s40305-018-00240-x
    Asbtract ( 425 )   PDF  
    Related Articles | Metrics
    On the Convergence of Asynchronous Parallel Iteration with Unbounded Delays
    Zhimin Peng, Yangyang Xu, Ming Yan, Wotao Yin
    2019, 7(1):  5-42.  doi:10.1007/s40305-017-0183-1
    Asbtract ( 395 )   PDF  
    References | Related Articles | Metrics

    Recent years have witnessed the surge of asynchronous parallel (asyncparallel) iterative algorithms due to problems involving very large-scale data and a large number of decision variables. Because of asynchrony, the iterates are computed with outdated information, and the age of the outdated information, which we call delay, is the number of times it has been updated since its creation. Almost all recent works prove convergence under the assumption of a finite maximum delay and set their stepsize parameters accordingly. However, the maximum delay is practically unknown. This paper presents convergence analysis of an async-parallel method from a probabilistic viewpoint, and it allows for large unbounded delays. An explicit formula of stepsize that guarantees convergence is given depending on delays' statistics. With p + 1 identical processors, we empirically measured that delays closely follow the Poisson distribution with parameter p, matching our theoretical model, and thus, the stepsize can be set accordingly. Simulations on both convex and nonconvex optimization problems demonstrate the validness of our analysis and also show that the existing maximum-delay-induced stepsize is too conservative, often slows down the convergence of the algorithm.

    A Composite Risk Measure Framework for Decision Making Under Uncertainty
    Peng-Yu Qian, Zi-Zhuo Wang, Zai-Wen Wen
    2019, 7(1):  43-68.  doi:10.1007/s40305-018-0211-9
    Asbtract ( 794 )   PDF  
    References | Related Articles | Metrics

    In this paper, we present a unified framework for decision making under uncertainty. Our framework is based on the composite of two risk measures, where the inner risk measure accounts for the risk of decision if the exact distribution of uncertain model parameters were given, and the outer risk measure quantifies the risk that occurs when estimating the parameters of distribution. We show that the model is tractable under mild conditions. The framework is a generalization of several existing models, including stochastic programming, robust optimization, distributionally robust optimization. Using this framework, we study a few new models which imply probabilistic guarantees for solutions and yield less conservative results compared to traditional models. Numerical experiments are performed on portfolio selection problems to demonstrate the strength of our models.

    Distributions with Maximum Spread Subject to Wasserstein Distance Constraints
    John Gunnar Carlsson, Ye Wang
    2019, 7(1):  69-106.  doi:10.1007/s40305-018-00238-5
    Asbtract ( 416 )   PDF  
    References | Related Articles | Metrics
    Recent research on formulating and solving distributionally robust optimization problems has seen many different approaches for describing one's ambiguity set, such as constraints on first and second moments or quantiles. In this paper, we use the Wasserstein distance to characterize the ambiguity set of distributions, which allows us to circumvent common overestimation that arises when other procedures are used, such as fixing the center of mass and the covariance matrix of the distribution. In particular, we derive closed-form expressions for distributions that are as "spread out" as possible, and apply our result to a problem in multi-vehicle coordination.
    Dynamic Pricing with Stochastic Reference Price Effect
    Xin Chen, Zhen-Yu Hu, Yu-Han Zhang
    2019, 7(1):  107-125.  doi:10.1007/s40305-018-0227-1
    Asbtract ( 443 )   PDF  
    References | Related Articles | Metrics
    We study a dynamic pricing problem of a firm facing stochastic reference price effect. Randomness is incorporated in the formation of reference prices to capture either consumers' heterogeneity or exogenous factors that affect consumers' memory processes. We apply the stochastic optimal control theory to the problem and derive an explicit expression for the optimal pricing strategy. The explicit expression allows us to obtain the distribution of the steady-state reference price. We compare the expected steadystate reference price to the steady-state reference price in a model with deterministic reference price effect, and we find that the former one is always higher. Our numerical study shows that the two steady-state reference prices can have opposite sensitivity to the problem parameters and the relative difference between the two can be very significant.
    Phase Retrieval via Sensor Network Localization
    Sherry Xue-Ying Ni, Man-Chung Yue, Kam-Fung Cheung, Anthony Man-Cho So
    2019, 7(1):  127-146.  doi:10.1007/s40305-018-0222-6
    Asbtract ( 352 )   PDF  
    References | Related Articles | Metrics
    The problem of phase retrieval is revisited and studied from a fresh perspective. In particular, we establish a connection between the phase retrieval problem and the sensor network localization problem, which allows us to utilize the vast theoretical and algorithmic literature on the latter to tackle the former. Leveraging this connection, we develop a two-stage algorithm for phase retrieval that can provably recover the desired signal. In both sparse and dense settings, our proposed algorithm improves upon prior approaches simultaneously in the number of required measurements for recovery and the reconstruction time. We present numerical results to corroborate our theory and to demonstrate the efficiency of the proposed algorithm. As a side result, we propose a new form of phase retrieval problem and connect it to the complex rigidity theory proposed by Gortler and Thurston (in:Connelly R, Ivic Weiss A, Whiteley W (eds) Rigidity and symmetry, Springer, New York, pp 131-154, 2014).
    Successive Partial-Symmetric Rank-One Algorithms for Almost Unitarily Decomposable Conjugate Partial-Symmetric Tensors
    Tao-Ran Fu, Jin-Yan Fan
    2019, 7(1):  147-167.  doi:10.1007/s40305-018-0194-6
    Asbtract ( 422 )   PDF  
    References | Related Articles | Metrics
    In this paper, we introduce the almost unitarily decomposable conjugate partial-symmetric tensors, which are different from the commonly studied orthogonally decomposable tensors by involving the conjugate terms in the decomposition and the perturbation term. We not only show that successive rank-one approximation algorithm exactly recovers the unitary decomposition of the unitarily decomposable conjugate partial-symmetric tensors. The perturbation analysis of successive rank-one approximation algorithm for almost unitarily decomposable conjugate partial-symmetric tensors is also provided to demonstrate the robustness of the algorithm.
    Competitive and Collaborative Influence in Social Networks
    Qi Qi, Wen-Wei Wang, Ling-Fei Yu
    2019, 7(1):  169-182.  doi:10.1007/s40305-018-00237-6
    Asbtract ( 452 )   PDF  
    References | Related Articles | Metrics
    We consider revenue maximization in viral marketing of competitive and collaborative products through social networks, focusing on the word-of-mouth effect on personal decisions in adopting products, technologies, or Internet applications. In our model, each advertiser submits its value per consumer, and its total budget. The publisher pays a selected set of users on social networks as seed nodes. It demands a payment (equal to its value) from an advertiser for each influenced node in social networks. The publisher's revenue equals to the total payment from the influenced users minus its cost of seed nodes.In this paper,we study the efficient allocation problem of the publisherto maximize its revenue. Our work is motivated by recent extensive studies on influence models for social networks. It has been noted that the promoted products could either be competitive or complementary such as Kindle versus Nook e-reader or Kindle cover with Kindle, respectively. Our models evaluate the revenue/cost effect of marketing those types of products through a social network, focusing on the issues of revenue maximization and complementary and competitive effects of products on each other. We take the algorithmic complexity approach for revenue maximization under those models and prove NP-hardness, non-approximability results for general structures, and polynomial time algorithms and applications for special classes of networks.