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Dive into the research topics where Olof Görnerup is active.

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Featured researches published by Olof Görnerup.


international conference on pervasive computing | 2012

Scalable mining of common routes in mobile communication network traffic data

Olof Görnerup

A probabilistic method for inferring common routes from mobile communication network traffic data is presented. Besides providing mobility information, valuable in a multitude of application areas, the method has the dual purpose of enabling efficient coarse-graining as well as anonymisation by mapping individual sequences onto common routes. The approach is to represent spatial trajectories by Cell ID sequences that are grouped into routes using locality-sensitive hashing and graph clustering. The method is demonstrated to be scalable, and to accurately group sequences using an evaluation set of GPS tagged data.


international conference on data mining | 2015

Knowing an Object by the Company it Keeps: A Domain-Agnostic Scheme for Similarity Discovery

Olof Görnerup; Daniel Gillblad; Theodore Vasiloudis

Appropriately defining and then efficiently calculating similarities from large data sets are often essential in data mining, both for building tractable representations and for gaining understanding of data and generating processes. Here we rely on the premise that given a set of objects and their correlations, each object is characterized by its context, i.e. its correlations to the other objects, and that the similarity between two objects therefore can be expressed in terms of the similarity between their respective contexts. Resting on this principle, we propose a data-driven and highly scalable approach for discovering similarities from large data sets by representing objects and their relations as a correlation graph that is transformed to a similarity graph. Together these graphs can express rich structural properties among objects. Specifically, we show that concepts -- representations of abstract ideas and notions -- are constituted by groups of similar objects that can be identified by clustering the objects in the similarity graph. These principles and methods are applicable in a wide range of domains, and will here be demonstrated for three distinct types of objects: codons, artists and words, where the numbers of objects and correlations range from small to very large.


International Journal of Network Management | 2018

Distributed dynamic load balancing with applications in radio access networks

Per Kreuger; Rebecca Steinert; Olof Görnerup; Daniel Gillblad

Managing and balancing load in distributed systems remains a challenging problem in resource management, especially in networked systems where scalability concerns favour distributed and dynamic ap ...


Knowledge and Information Systems | 2017

Domain-agnostic discovery of similarities and concepts at scale

Olof Görnerup; Daniel Gillblad; Theodore Vasiloudis

Appropriately defining and efficiently calculating similarities from large data sets are often essential in data mining, both for gaining understanding of data and generating processes and for building tractable representations. Given a set of objects and their correlations, we here rely on the premise that each object is characterized by its context, i.e., its correlations to the other objects. The similarity between two objects can then be expressed in terms of the similarity between their contexts. In this way, similarity pertains to the general notion that objects are similar if they are exchangeable in the data. We propose a scalable approach for calculating all relevant similarities among objects by relating them in a correlation graph that is transformed to a similarity graph. These graphs can express rich structural properties among objects. Specifically, we show that concepts—abstractions of objects—are constituted by groups of similar objects that can be discovered by clustering the objects in the similarity graph. These principles and methods are applicable in a wide range of fields and will be demonstrated here in three domains: computational linguistics, music, and molecular biology, where the numbers of objects and correlations range from small to very large.


trust, security and privacy in computing and communications | 2015

Privacy-Preserving Mining of Frequent Routes in Cellular Network Data

Olof Görnerup; Nima Dokoohaki; Andrea Hess


workshop on graph based methods for natural language processing | 2010

Cross-Lingual Comparison between Distributionally Determined Word Similarity Networks

Olof Görnerup; Jussi Karlgren


vehicular technology conference | 2015

Autonomous Load Balancing of Heterogeneous Networks

Per Kreuger; Olof Görnerup; Daniel Gillblad; Tomas Lundborg; Diarmuid Corcoran; Andreas Ermedahl


international conference on information systems | 2013

Autonomous Accident Monitoring Using Cellular Network Data

Olof Görnerup; Per Kreuger; Daniel Gillblad


empirical methods in natural language processing | 2018

Streaming word similarity mining on the cheap

Olof Görnerup; Daniel Gillblad


Ercim News | 2016

Mining Similarities and Concepts at Scale.

Olof Görnerup; Theodore Vasiloudis

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Daniel Gillblad

Swedish Institute of Computer Science

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Per Kreuger

Swedish Institute of Computer Science

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Theodore Vasiloudis

Swedish Institute of Computer Science

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Andrea Hess

Swedish Institute of Computer Science

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Magnus Boman

Swedish Institute of Computer Science

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Nima Dokoohaki

Royal Institute of Technology

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Andreas Ermedahl

Mälardalen University College

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Jussi Karlgren

Swedish Institute of Computer Science

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