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    Distributed voting in beep model

    , Article Signal Processing ; Volume 177 , 2020 Ghojogh, B ; Salehkaleybar, S ; Sharif University of Technology
    Elsevier B.V  2020
    Abstract
    We consider the problem of distributed multi-choice voting in a setting that each node can communicate with its neighbors merely by sending beep signals. Given its simplicity, the beep communication model is of practical importance in different applications such as system biology and wireless sensor networks. Yet, the distributed majority voting has not been resolved in this setting. In this paper, we propose two algorithms, named Distributed Voting with Beeps, to resolve this problem. In the first proposed algorithm, the adjacent nodes having the same value form a set called spot. Afterwards, the spots with majority value try to corrode the spots with non-majority values. The second... 

    Multi variable-layer neural networks for decoding linear codes

    , Article 2020 Iran Workshop on Communication and Information Theory, IWCIT 2020, 26 May 2020 through 28 May 2020 ; August , 2020 Malek, S ; Salehkaleybar, S ; Amini, A ; Sharif University of Technology
    Institute of Electrical and Electronics Engineers Inc  2020
    Abstract
    The belief propagation algorithm is a state of the art decoding technique for a variety of linear codes such as LDPC codes. The iterative structure of this algorithm is reminiscent of a neural network with multiple layers. Indeed, this similarity has been recently exploited to improve the decoding performance by tuning the weights of the equivalent neural network. In this paper, we introduce a new network architecture by increasing the number of variable-node layers, while keeping the check-node layers unchanged. The changes are applied in a manner that the decoding performance of the network becomes independent of the transmitted codeword; hence, a training stage with only the all-zero... 

    Deep-Learning-Based blind recognition of channel code parameters over candidate sets under awgn and multi-path fading conditions

    , Article IEEE Wireless Communications Letters ; Volume 10, Issue 5 , 2021 , Pages 1041-1045 ; 21622337 (ISSN) Dehdashtian, S ; Hashemi, M ; Salehkaleybar, S ; Sharif University of Technology
    Institute of Electrical and Electronics Engineers Inc  2021
    Abstract
    We consider the problem of recovering channel code parameters over a candidate set by merely analyzing the received encoded signals. We propose a deep learning-based solution that I) is capable of identifying the channel code parameters for several coding scheme (such as LDPC, Convolutional, Turbo, and Polar codes), II) is robust against channel impairments like multi-path fading, III) does not require any previous knowledge or estimation of channel state or signal-to-noise ratio (SNR), and IV) outperforms related works in terms of probability of detecting the correct code parameters. © 2012 IEEE  

    GIM: GPU accelerated RIS-Based influence maximization algorithm

    , Article IEEE Transactions on Parallel and Distributed Systems ; Volume 32, Issue 10 , 2021 , Pages 2386-2399 ; 10459219 (ISSN) Shahrouz, S ; Salehkaleybar, S ; Hashemi, M ; Sharif University of Technology
    IEEE Computer Society  2021
    Abstract
    Given a social network modeled as a weighted graph GG, the influence maximization problem seeks kk vertices to become initially influenced, to maximize the expected number of influenced nodes under a particular diffusion model. The influence maximization problem has been proven to be NP-hard, and most proposed solutions to the problem are approximate greedy algorithms, which can guarantee a tunable approximation ratio for their results with respect to the optimal solution. The state-of-the-art algorithms are based on Reverse Influence Sampling (RIS) technique, which can offer both computational efficiency and non-trivial (1-1/e-ϵ)-approximation ratio guarantee for any epsilon >0ϵ>0.... 

    Adversarial orthogonal regression: Two non-linear regressions for causal inference

    , Article Neural Networks ; Volume 143 , 2021 , Pages 66-73 ; 08936080 (ISSN) Heydari, M. R ; Salehkaleybar, S ; Zhang, K ; Sharif University of Technology
    Elsevier Ltd  2021
    Abstract
    We propose two nonlinear regression methods, namely, Adversarial Orthogonal Regression (AdOR) for additive noise models and Adversarial Orthogonal Structural Equation Model (AdOSE) for the general case of structural equation models. Both methods try to make the residual of regression independent from regressors, while putting no assumption on noise distribution. In both methods, two adversarial networks are trained simultaneously where a regression network outputs predictions and a loss network that estimates mutual information (in AdOR) and KL-divergence (in AdOSE). These methods can be formulated as a minimax two-player game; at equilibrium, AdOR finds a deterministic map between inputs... 

    Active learning of causal structures with deep reinforcement learning

    , Article Neural Networks ; Volume 154 , 2022 , Pages 22-30 ; 08936080 (ISSN) Amirinezhad, A ; Salehkaleybar, S ; Hashemi, M ; Sharif University of Technology
    Elsevier Ltd  2022
    Abstract
    We study the problem of experiment design to learn causal structures from interventional data. We consider an active learning setting in which the experimenter decides to intervene on one of the variables in the system in each step and uses the results of the intervention to recover further causal relationships among the variables. The goal is to fully identify the causal structures with minimum number of interventions. We present the first deep reinforcement learning based solution for the problem of experiment design. In the proposed method, we embed input graphs to vectors using a graph neural network and feed them to another neural network which outputs a variable for performing... 

    Multi-user opportunistic spectrum access with channel impairments

    , Article AEU - International Journal of Electronics and Communications ; Volume 67, Issue 11 , 2013 , Pages 955-966 ; 14348411 (ISSN) Majd, S. A ; Salehkaleybar, S ; Pakravan, M. R ; Sharif University of Technology
    2013
    Abstract
    In this paper, we study the impact of sensing error and channel fading on the decision process of a multiple secondary user network in a primary network whose channel occupancy states are modelled as a Bernoulli process. We present a randomized access strategy to maximize total secondary network throughput. The proposed method guarantees that the probability of collision between primary and secondary users in each channel is less than the predefined value of P c = ξ. To find the optimal access strategy, we formulate secondary network throughput as an optimization problem. Then, using the KKT method to find the solution, we break the original problem into multiple sub-problems. Then, we... 

    Budgeted experiment design for causal structure learning

    , Article 35th International Conference on Machine Learning, ICML 2018, 10 July 2018 through 15 July 2018 ; Volume 4 , 2018 , Pages 2788-2801 ; 9781510867963 (ISBN) Ghassami, A ; Salehkaleybar, S ; Kiyavash, N ; Bareinboim, E ; Sharif University of Technology
    International Machine Learning Society (IMLS)  2018
    Abstract
    We study the problem of causal structure learning when the experimenter is limited to perform at most k non-adaptive experiments of size 1. We formulate the problem of finding the best intervention target set as an optimization problem, which aims to maximize the average number of edges whose directions are resolved. We prove that the corresponding objective function is submodular and a greedy algorithm suffices to achieve (1 - approximation of the optimal value. We further present an accelerated variant of the greedy algorithm, which can lead to orders of magnitude performance speedup. We validate our proposed approach on synthetic and real graphs. The results show that compared to the... 

    CuPC: CUDA-Based parallel PC algorithm for causal structure learning on GPU

    , Article IEEE Transactions on Parallel and Distributed Systems ; Volume 31, Issue 3 , 2020 , Pages 530-542 Zarebavani, B ; Jafarinejad, F ; Hashemi, M ; Salehkaleybar, S ; Sharif University of Technology
    IEEE Computer Society  2020
    Abstract
    The main goal in many fields in the empirical sciences is to discover causal relationships among a set of variables from observational data. PC algorithm is one of the promising solutions to learn underlying causal structure by performing a number of conditional independence tests. In this paper, we propose a novel GPU-based parallel algorithm, called cuPC, to execute an order-independent version of PC. The proposed solution has two variants, cuPC-E and cuPC-S, which parallelize PC in two different ways for multivariate normal distribution. Experimental results show the scalability of the proposed algorithms with respect to the number of variables, the number of samples, and different graph...