Network


Latest external collaboration on country level. Dive into details by clicking on the dots.

Hotspot


Dive into the research topics where Vsevolod Salnikov is active.

Publication


Featured researches published by Vsevolod Salnikov.


Journal of Complex Networks | 2015

Effect of memory on the dynamics of random walks on networks

Renaud Lambiotte; Vsevolod Salnikov; Martin Rosvall

Pathways of diffusion observed in real-world systems often require stochastic processes going beyond first-order Markov models, as implicitly assumed in network theory. In this work, we focus on second-order Markov models, and derive an analytical expression for the effect of memory on the spectral gap and thus, equivalently, on the characteristic time needed for the stochastic process to asymptotically reach equilibrium. Perturbation analysis shows that standard first-order Markov models can either overestimate or underestimate the diffusion rate of flows across the modular structure of a system captured by a second-order Markov network. We test the theoretical predictions on a toy example and on numerical data, and discuss their implications for network theory, in particular in the case of temporal or multiplex networks.


Scientific Reports | 2016

Using higher-order Markov models to reveal flow-based communities in networks.

Vsevolod Salnikov; Michael T. Schaub; Renaud Lambiotte

Complex systems made of interacting elements are commonly abstracted as networks, in which nodes are associated with dynamic state variables, whose evolution is driven by interactions mediated by the edges. Markov processes have been the prevailing paradigm to model such a network-based dynamics, for instance in the form of random walks or other types of diffusions. Despite the success of this modelling perspective for numerous applications, it represents an over-simplification of several real-world systems. Importantly, simple Markov models lack memory in their dynamics, an assumption often not realistic in practice. Here, we explore possibilities to enrich the system description by means of second-order Markov models, exploiting empirical pathway information. We focus on the problem of community detection and show that standard network algorithms can be generalized in order to extract novel temporal information about the system under investigation. We also apply our methodology to temporal networks, where we can uncover communities shaped by the temporal correlations in the system. Finally, we discuss relations of the framework of second order Markov processes and the recently proposed formalism of using non-backtracking matrices for community detection.


EPJ Data Science | 2014

The geography and carbon footprint of mobile phone use in Cote d’Ivoire

Vsevolod Salnikov; Daniel Schien; Hyejin Youn; Renaud Lambiotte; Michael T. Gastner

The newly released Orange D4D mobile phone data base provides new insights into the use of mobile technology in a developing country. Here we perform a series of spatial data analyses that reveal important geographic aspects of mobile phone use in Cote d’Ivoire. We first map the locations of base stations with respect to the population distribution and the number and duration of calls at each base station. On this basis, we estimate the energy consumed by the mobile phone network. Finally, we perform an analysis of inter-city mobility, and identify high-traffic roads in the country.


EPJ Data Science | 2015

Mining open datasets for transparency in taxi transport in metropolitan environments

Anastasios Noulas; Vsevolod Salnikov; Renaud Lambiotte; Cecilia Mascolo

Uber has recently been introducing novel practices in urban taxi transport. Journey prices can change dynamically in almost real time and also vary geographically from one area to another in a city, a strategy known as surge pricing. In this paper, we explore the power of the new generation of open datasets towards understanding the impact of the new disruption technologies that emerge in the area of public transport. With our primary goal being a more transparent economic landscape for urban commuters, we provide a direct price comparison between Uber and the Yellow Cab company in New York. We discover that Uber, despite its lower standard pricing rates, effectively charges higher fares on average, especially during short in length, but frequent in occurrence, taxi journeys. Building on this insight, we develop a smartphone application, OpenStreetCab, that offers a personalized consultation to mobile users on which taxi provider is cheaper for their journey. Almost five months after its launch, the app has attracted more than three thousand users in a single city. Their journey queries have provided additional insights on the potential savings similar technologies can have for urban commuters, with a highlight being that on average, a user in New York saves 6 U.S. Dollars per taxi journey if they pick the cheapest taxi provider. We run extensive experiments to show how Uber’s surge pricing is the driving factor of higher journey prices and therefore higher potential savings for our application’s users. Finally, motivated by the observation that Uber’s surge pricing is occurring more frequently that intuitively expected, we formulate a prediction task where the aim becomes to predict a geographic area’s tendency to surge. Using exogenous to Uber data, in particular Yellow Cab and Foursquare data, we show how it is possible to estimate customer demand within an area, and by extension surge pricing, with high accuracy.


arXiv: Physics and Society | 2018

Co-occurrence simplicial complexes in mathematics: identifying the holes of knowledge

Vsevolod Salnikov; Daniele Cassese; Renaud Lambiotte; Nick S. Jones

In the last years complex networks tools contributed to provide insights on the structure of research, through the study of collaboration, citation and co-occurrence networks. The network approach focuses on pairwise relationships, often compressing multidimensional data structures and inevitably losing information. In this paper we propose for the first time a simplicial complex approach to word co-occurrences, providing a natural framework for the study of higher-order relations in the space of scientific knowledge. Using topological methods we explore the conceptual landscape of mathematical research, focusing on homological holes, regions with low connectivity in the simplicial structure. We find that homological holes are ubiquitous, which suggests that they capture some essential feature of research practice in mathematics. k-dimensional holes die when every concept in the hole appears in an article together with other k+1 concepts in the hole, hence their death may be a sign of the creation of new knowledge, as we show with some examples. We find a positive relation between the size of a hole and the time it takes to be closed: larger holes may represent potential for important advances in the field because they separate conceptually distant areas. We provide further description of the conceptual space by looking for the simplicial analogs of stars and explore the likelihood of edges in a star to be also part of a homological cycle. We also show that authors’ conceptual entropy is positively related with their contribution to homological holes, suggesting that polymaths tend to be on the frontier of research.


European Journal of Physics | 2018

Simplicial complexes and complex systems

Vsevolod Salnikov; Daniele Cassese; Renaud Lambiotte

We provide a short introduction to the field of topological data analysis and discuss its possible relevance for the study of complex systems. Topological data analysis provides a set of tools to characterise the shape of data, in terms of the presence of holes or cavities between the points. The methods, based on notion of simplicial complexes, generalise standard network tools by naturally allowing for many-body interactions and providing results robust under continuous deformations of the data. We present strengths and weaknesses of current methods, as well as a range of empirical studies relevant to the field of complex systems, before identifying future methodological challenges to help understand the emergence of collective phenomena.


Mathematical Modelling of Natural Phenomena | 2011

Particle Dynamics Methods of Blood Flow Simulations

Alen Tosenberger; Vsevolod Salnikov; Nikolai Bessonov; Evgeniya Babushkina; Vitaly Volpert


arXiv: Social and Information Networks | 2015

OpenStreetCab: Exploiting Taxi Mobility Patterns in New York City to Reduce Commuter Costs

Vsevolod Salnikov; Renaud Lambiotte; Anastasios Noulas; Cecilia Mascolo


Stahlbau | 2018

Kinetics of collisionless continuous medium for non-maxwellian initial density

Tatiana Salnikova; Vsevolod Salnikov


arXiv: Computers and Society | 2017

Developing and Deploying a Taxi Price Comparison Mobile App in the Wild: Insights and Challenges.

Anastasios Noulas; Vsevolod Salnikov; Desislava Hristova; Cecilia Mascolo; Renaud Lambiotte

Collaboration


Dive into the Vsevolod Salnikov's collaboration.

Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar

Alen Tosenberger

Université libre de Bruxelles

View shared research outputs
Top Co-Authors

Avatar

Nikolai Bessonov

Russian Academy of Sciences

View shared research outputs
Top Co-Authors

Avatar

Tatiana Salnikova

Peoples' Friendship University of Russia

View shared research outputs
Top Co-Authors

Avatar

Vitaly Volpert

Centre national de la recherche scientifique

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Researchain Logo
Decentralizing Knowledge