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Dive into the research topics where Mario Miličević is active.

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Featured researches published by Mario Miličević.


Expert Systems With Applications | 2012

Review: The automatic creation of concept maps from documents written using morphologically rich languages

Krunoslav Zubrinic; Damir Kalpić; Mario Miličević

Concept map is a graphical tool for representing knowledge. They have been used in many different areas, including education, knowledge management, business and intelligence. Constructing of concept maps manually can be a complex task; an unskilled person may encounter difficulties in determining and positioning concepts relevant to the problem area. An application that recommends concept candidates and their position in a concept map can significantly help the user in that situation. This paper gives an overview of different approaches to automatic and semi-automatic creation of concept maps from textual and non-textual sources. The concept map mining process is defined, and one method suitable for the creation of concept maps from unstructured textual sources in highly inflected languages such as the Croatian language is described in detail. Proposed method uses statistical and data mining techniques enriched with linguistic tools. With minor adjustments, that method can also be used for concept map mining from textual sources in other morphologically rich languages.


Advances in Electrical and Computer Engineering | 2015

Application of Machine Learning Algorithms for the Query Performance Prediction

Mario Miličević; Mirta Baranović; Krunoslav Žubrinić

This paper analyzes the relationship between the system load/throughput and the query response time in a real Online transaction processing (OLTP) system environment. Although OLTP systems are characterized by short transactions, which normally entail high availability and consistent short response times, the need for operational reporting may jeopardize these objectives. We suggest a new approach to performance prediction for concurrent database workloads, based on the system state vector which consists of 36 attributes. There is no bias to the importance of certain attributes, but the machine learning methods are used to determine which attributes better describe the behavior of the particular database server and how to model that system. During the learning phase, the systems profile is created using multiple reference queries, which are selected to represent frequent business processes. The possibility of the accurate response time prediction may be a foundation for automated decision-making for database (DB) query scheduling. Possible applications of the proposed method include adaptive resource allocation, quality of service (QoS) management or real-time dynamic query scheduling (e.g. estimation of the optimal moment for a complex query execution).


NAŠE MORE : znanstveno-stručni časopis za more i pomorstvo | 2018

Big Data in the Maritime Industry

Maris Mirović; Mario Miličević; Ines Obradović

The maritime industry is a complex system that requires quick adaptation to changing conditions and in which decision-making needs to take into account a large number of parameters. As navigation systems become more advanced, there is a significant amount of ship performance and navigation data generated. Big Data analytics tools make it possible to analyze these large quantities of data in order to gain insight that supports decision-making. This paper gives an overview of applications of Big Data in the maritime industry, specifically in logistics optimization, safety and energy efficiency improvement, as well as the challenges that systems involving Big Data face.


international convention on information and communication technology, electronics and microelectronics | 2012

Effects of data anonymization on the data mining results

Ines Buratovic; Mario Miličević; Krunoslav Zubrinic


annual conference on computers | 2005

QoS control based on query response time prediction

Mario Miličević; Mirta Baranović; Vedran Batoš


wseas international conference on applied computer and applied computational science | 2011

Concept of mobile device integration in current travel and tourism industry

Antonio Portolan; Mario Miličević; Krunoslav Zubrinic


OUR SEA : International Journal of Maritime Science & Technology | 2014

Machine Learning Approaches to Maritime Anomaly Detection

Ines Obradović; Mario Miličević; Krunoslav Žubrinić


NAŠE MORE : znanstveno-stručni časopis za more i pomorstvo | 2008

GPS – ANALIZA MJERNIH POGREŠAKA I PRIMJENE

Ivan Ivušić; Vedran Batoš; Mario Miličević


WSEAS Transactions on Computers archive | 2005

A Dynamic QoS Control Approach Based on Query Response Time Prediction

Mario Miličević; Mirta Baranović; Vedran Batoš


international convention on information and communication technology electronics and microelectronics | 2018

A framework for dynamic data-driven user interfaces

Maris Mirović; Mario Miličević; Ines Obradović

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Ivan Grbavac

University of Dubrovnik

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