@article{12164,
  abstract     = {A shared-memory counter is a widely-used and well-studied concurrent object. It supports two operations: An Inc operation that increases its value by 1 and a Read operation that returns its current value. In Jayanti et al (SIAM J Comput, 30(2), 2000), Jayanti, Tan and Toueg proved a linear lower bound on the worst-case step complexity of obstruction-free implementations, from read-write registers, of a large class of shared objects that includes counters. The lower bound leaves open the question of finding counter implementations with sub-linear amortized step complexity. In this work, we address this gap. We show that n-process, wait-free and linearizable counters can be implemented from read-write registers with O(log2n) amortized step complexity. This is the first counter algorithm from read-write registers that provides sub-linear amortized step complexity in executions of arbitrary length. Since a logarithmic lower bound on the amortized step complexity of obstruction-free counter implementations exists, our upper bound is within a logarithmic factor of the optimal. The worst-case step complexity of the construction remains linear, which is optimal. This is obtained thanks to a new max register construction with O(logn) amortized step complexity in executions of arbitrary length in which the value stored in the register does not grow too quickly. We then leverage an existing counter algorithm by Aspnes, Attiya and Censor-Hillel [1] in which we “plug” our max register implementation to show that it remains linearizable while achieving O(log2n) amortized step complexity.},
  author       = {Baig, Mirza Ahad and Hendler, Danny and Milani, Alessia and Travers, Corentin},
  issn         = {1432-0452},
  journal      = {Distributed Computing},
  keywords     = {Computational Theory and Mathematics, Computer Networks and Communications, Hardware and Architecture, Theoretical Computer Science},
  pages        = {29--43},
  publisher    = {Springer Nature},
  title        = {{Long-lived counters with polylogarithmic amortized step complexity}},
  doi          = {10.1007/s00446-022-00439-5},
  volume       = {36},
  year         = {2023},
}

@article{10602,
  abstract     = {Transforming ω-automata into parity automata is traditionally done using appearance records. We present an efficient variant of this idea, tailored to Rabin automata, and several optimizations applicable to all appearance records. We compare the methods experimentally and show that our method produces significantly smaller automata than previous approaches.},
  author       = {Kretinsky, Jan and Meggendorfer, Tobias and Waldmann, Clara and Weininger, Maximilian},
  issn         = {1432-0525},
  journal      = {Acta Informatica},
  keywords     = {computer networks and communications, information systems, software},
  pages        = {585--618},
  publisher    = {Springer Nature},
  title        = {{Index appearance record with preorders}},
  doi          = {10.1007/s00236-021-00412-y},
  volume       = {59},
  year         = {2022},
}

@article{10842,
  abstract     = {We determine the unique factorization of some polynomials over a finite local commutative ring with identity explicitly. This solves and generalizes the main conjecture of Qian, Shi and Solé in [13]. We also give some applications to enumeration of certain generalized double circulant self-dual and linear complementary dual (LCD) codes over some finite rings together with an application in asymptotic coding theory.},
  author       = {Köse, Seyda and Özbudak, Ferruh},
  issn         = {1936-2455},
  journal      = {Cryptography and Communications},
  keywords     = {Applied Mathematics, Computational Theory and Mathematics, Computer Networks and Communications},
  number       = {4},
  pages        = {933--948},
  publisher    = {Springer Nature},
  title        = {{Factorization of some polynomials over finite local commutative rings and applications to certain self-dual and LCD codes}},
  doi          = {10.1007/s12095-022-00557-8},
  volume       = {14},
  year         = {2022},
}

@article{12134,
  abstract     = {Standard epidemic models exhibit one continuous, second order phase transition to macroscopic outbreaks. However, interventions to control outbreaks may fundamentally alter epidemic dynamics. Here we reveal how such interventions modify the type of phase transition. In particular, we uncover three distinct types of explosive phase transitions for epidemic dynamics with capacity-limited interventions. Depending on the capacity limit, interventions may (i) leave the standard second order phase transition unchanged but exponentially suppress the probability of large outbreaks, (ii) induce a first-order discontinuous transition to macroscopic outbreaks, or (iii) cause a secondary explosive yet continuous third-order transition. These insights highlight inherent limitations in predicting and containing epidemic outbreaks. More generally our study offers a cornerstone example of a third-order explosive phase transition in complex systems.},
  author       = {Börner, Georg and Schröder, Malte and Scarselli, Davide and Budanur, Nazmi B and Hof, Björn and Timme, Marc},
  issn         = {2632-072X},
  journal      = {Journal of Physics: Complexity},
  keywords     = {Artificial Intelligence, Computer Networks and Communications, Computer Science Applications, Information Systems},
  number       = {4},
  publisher    = {IOP Publishing},
  title        = {{Explosive transitions in epidemic dynamics}},
  doi          = {10.1088/2632-072x/ac99cd},
  volume       = {3},
  year         = {2022},
}

@article{12147,
  abstract     = {Continuous-time neural networks are a class of machine learning systems that can tackle representation learning on spatiotemporal decision-making tasks. These models are typically represented by continuous differential equations. However, their expressive power when they are deployed on computers is bottlenecked by numerical differential equation solvers. This limitation has notably slowed down the scaling and understanding of numerous natural physical phenomena such as the dynamics of nervous systems. Ideally, we would circumvent this bottleneck by solving the given dynamical system in closed form. This is known to be intractable in general. Here, we show that it is possible to closely approximate the interaction between neurons and synapses—the building blocks of natural and artificial neural networks—constructed by liquid time-constant networks efficiently in closed form. To this end, we compute a tightly bounded approximation of the solution of an integral appearing in liquid time-constant dynamics that has had no known closed-form solution so far. This closed-form solution impacts the design of continuous-time and continuous-depth neural models. For instance, since time appears explicitly in closed form, the formulation relaxes the need for complex numerical solvers. Consequently, we obtain models that are between one and five orders of magnitude faster in training and inference compared with differential equation-based counterparts. More importantly, in contrast to ordinary differential equation-based continuous networks, closed-form networks can scale remarkably well compared with other deep learning instances. Lastly, as these models are derived from liquid networks, they show good performance in time-series modelling compared with advanced recurrent neural network models.},
  author       = {Hasani, Ramin and Lechner, Mathias and Amini, Alexander and Liebenwein, Lucas and Ray, Aaron and Tschaikowski, Max and Teschl, Gerald and Rus, Daniela},
  issn         = {2522-5839},
  journal      = {Nature Machine Intelligence},
  keywords     = {Artificial Intelligence, Computer Networks and Communications, Computer Vision and Pattern Recognition, Human-Computer Interaction, Software},
  number       = {11},
  pages        = {992--1003},
  publisher    = {Springer Nature},
  title        = {{Closed-form continuous-time neural networks}},
  doi          = {10.1038/s42256-022-00556-7},
  volume       = {4},
  year         = {2022},
}

@article{9234,
  abstract     = {In this paper, we present two new inertial projection-type methods for solving multivalued variational inequality problems in finite-dimensional spaces. We establish the convergence of the sequence generated by these methods when the multivalued mapping associated with the problem is only required to be locally bounded without any monotonicity assumption. Furthermore, the inertial techniques that we employ in this paper are quite different from the ones used in most papers. Moreover, based on the weaker assumptions on the inertial factor in our methods, we derive several special cases of our methods. Finally, we present some experimental results to illustrate the profits that we gain by introducing the inertial extrapolation steps.},
  author       = {Izuchukwu, Chinedu and Shehu, Yekini},
  issn         = {1572-9427},
  journal      = {Networks and Spatial Economics},
  keywords     = {Computer Networks and Communications, Software, Artificial Intelligence},
  number       = {2},
  pages        = {291--323},
  publisher    = {Springer Nature},
  title        = {{New inertial projection methods for solving multivalued variational inequality problems beyond monotonicity}},
  doi          = {10.1007/s11067-021-09517-w},
  volume       = {21},
  year         = {2021},
}

@article{10855,
  abstract     = {Consider a distributed task where the communication network is fixed but the local inputs given to the nodes of the distributed system may change over time. In this work, we explore the following question: if some of the local inputs change, can an existing solution be updated efficiently, in a dynamic and distributed manner? To address this question, we define the batch dynamic \congest model in which we are given a bandwidth-limited communication network and a dynamic edge labelling defines the problem input. The task is to maintain a solution to a graph problem on the labeled graph under batch changes. We investigate, when a batch of α edge label changes arrive, \beginitemize \item how much time as a function of α we need to update an existing solution, and \item how much information the nodes have to keep in local memory between batches in order to update the solution quickly. \enditemize Our work lays the foundations for the theory of input-dynamic distributed network algorithms. We give a general picture of the complexity landscape in this model, design both universal algorithms and algorithms for concrete problems, and present a general framework for lower bounds. In particular, we derive non-trivial upper bounds for two selected, contrasting problems: maintaining a minimum spanning tree and detecting cliques.},
  author       = {Foerster, Klaus-Tycho and Korhonen, Janne and Paz, Ami and Rybicki, Joel and Schmid, Stefan},
  issn         = {2476-1249},
  journal      = {Proceedings of the ACM on Measurement and Analysis of Computing Systems},
  keywords     = {Computer Networks and Communications, Hardware and Architecture, Safety, Risk, Reliability and Quality, Computer Science (miscellaneous)},
  number       = {1},
  pages        = {1--33},
  publisher    = {Association for Computing Machinery},
  title        = {{Input-dynamic distributed algorithms for communication networks}},
  doi          = {10.1145/3447384},
  volume       = {5},
  year         = {2021},
}

@article{8765,
  abstract     = {This paper introduces a simple method for simulating highly anisotropic elastoplastic material behaviors like the dissolution of fibrous phenomena (splintering wood, shredding bales of hay) and materials composed of large numbers of irregularly‐shaped bodies (piles of twigs, pencils, or cards). We introduce a simple transformation of the anisotropic problem into an equivalent isotropic one, and we solve this new “fictitious” isotropic problem using an existing simulator based on the material point method. Our approach results in minimal changes to existing simulators, and it allows us to re‐use popular isotropic plasticity models like the Drucker‐Prager yield criterion instead of inventing new anisotropic plasticity models for every phenomenon we wish to simulate.},
  author       = {Schreck, Camille and Wojtan, Christopher J},
  issn         = {1467-8659},
  journal      = {Computer Graphics Forum},
  keywords     = {Computer Networks and Communications},
  number       = {2},
  pages        = {89--99},
  publisher    = {Wiley},
  title        = {{A practical method for animating anisotropic elastoplastic materials}},
  doi          = {10.1111/cgf.13914},
  volume       = {39},
  year         = {2020},
}

@article{11671,
  abstract     = {Given only the URL of a Web page, can we identify its language? In this article we examine this question. URL-based language classification is useful when the content of the Web page is not available or downloading the content is a waste of bandwidth and time.
We built URL-based language classifiers for English, German, French, Spanish, and Italian by applying a variety of algorithms and features. As algorithms we used machine learning algorithms which are widely applied for text classification and state-of-art algorithms for language identification of text. As features we used words, various sized n-grams, and custom-made features (our novel feature set). We compared our approaches with two baseline methods, namely classification by country code top-level domains and classification by IP addresses of the hosting Web servers.

We trained and tested our classifiers in a 10-fold cross-validation setup on a dataset obtained from the Open Directory Project and from querying a commercial search engine. We obtained the lowest F1-measure for English (94) and the highest F1-measure for German (98) with the best performing classifiers.

We also evaluated the performance of our methods: (i) on a set of Web pages written in Adobe Flash and (ii) as part of a language-focused crawler. In the first case, the content of the Web page is hard to extract and in the second page downloading pages of the “wrong” language constitutes a waste of bandwidth. In both settings the best classifiers have a high accuracy with an F1-measure between 95 (for English) and 98 (for Italian) for the Adobe Flash pages and a precision between 90 (for Italian) and 97 (for French) for the language-focused crawler.},
  author       = {Baykan, Eda and Weber, Ingmar and Henzinger, Monika H},
  issn         = {1559-114X},
  journal      = {ACM Transactions on the Web},
  keywords     = {Computer Networks and Communications},
  number       = {1},
  publisher    = {Association for Computing Machinery},
  title        = {{A comprehensive study of techniques for URL-based web page language classification}},
  doi          = {10.1145/2435215.2435218},
  volume       = {7},
  year         = {2013},
}

