9 research outputs found

    Supporting Newsrooms with Journalistic Knowledge Graph Platforms: Current State and Future Directions

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    Increasing competition and loss of revenues force newsrooms to explore new digital solutions. The new solutions employ artificial intelligence and big data techniques such as machine learning and knowledge graphs to manage and support the knowledge work needed in all stages of news production. The result is an emerging type of intelligent information system we have called the Journalistic Knowledge Platform (JKP). In this paper, we analyse for the first time knowledge graph-based JKPs in research and practice. We focus on their current state, challenges, opportunities and future directions. Our analysis is based on 14 platforms reported in research carried out in collaboration with news organisations and industry partners and our experiences with developing knowledge graph-based JKPs along with an industry partner. We found that: (a) the most central contribution of JKPs so far is to automate metadata annotation and monitoring tasks; (b) they also increasingly contribute to improving background information and content analysis, speeding-up newsroom workflows and providing newsworthy insights; (c) future JKPs need better mechanisms to extract information from textual and multimedia news items; (d) JKPs can provide a digitalisation path towards reduced production costs and improved information quality while adapting the current workflows of newsrooms to new forms of journalism and readers’ demands.publishedVersio

    NewsReader: Using knowledge resources in a cross-lingual reading machine to generate more knowledge from massive streams of news

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    Abstract In this article, we describe a system that reads news articles in four different languages and detects what happened, who is involved, where and when. This event-centric information is represented as episodic situational knowledge on individuals in an interoperable RDF format that allows for reasoning on the implications of the events. Our system covers the complete path from unstructured text to structured knowledge, for which we defined a formal model that links interpreted textual mentions of things to their representation as instances. The model forms the skeleton for interoperable interpretation across different sources and languages. The real content, however, is defined using multilingual and cross-lingual knowledge resources, both semantic and episodic. We explain how these knowledge resources are used for the processing of text and ultimately define the actual content of the episodic situational knowledge that is reported in the news. The knowledge and model in our system can be seen as an example how the Semantic Web helps NLP. However, our systems also generate massive episodic knowledge of the same type as the Semantic Web is built on. We thus envision a cycle of knowledge acquisition and NLP improvement on a massive scale. This article reports on the details of the system but also on the performance of various high-level components. We demonstrate that our system performs at state-of-the-art level for various subtasks in the four languages of the project, but that we also consider the full integration of these tasks in an overall system with the purpose of reading text. We applied our system to millions of news articles, generating billions of triples expressing formal semantic properties. This shows the capacity of the system to perform at an unprecedented scale

    Journalistic Knowledge Platforms: from Idea to Realisation

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    Journalistiske kunnskapsplattformer (JKPer) er en type intelligente informasjonssystemer designet for Ä forbedre nyhetsproduksjonsprosesser ved Ä kombinere stordata, kunstig intelligens (KI) og kunnskapsbaser for Ä stÞtte journalister. Til tross for sitt potensial for Ä revolusjonere journalistikkfeltet, har adopsjonen av JKPer vÊrt treg, med forskere og store nyhetsutlÞp involvert i forskning og utvikling av JKPer. Den langsomme adopsjonen kan tilskrives den tekniske kompleksiteten til JKPer, som har fÞrt til at nyhetsorganisasjoner stoler pÄ flere uavhengige og oppgavespesifikke produksjonssystemer. Denne situasjonen kan Þke ressurs- og koordineringsbehovet og kostnadene, samtidig som den utgjÞr en trussel om Ä miste kontrollen over data og havne i leverandÞrlÄssituasjoner. De tekniske kompleksitetene forblir en stor hindring, ettersom det ikke finnes en allerede godt utformet systemarkitektur som ville lette realiseringen og integreringen av JKPer pÄ en sammenhengende mÄte over tid. Denne doktoravhandlingen bidrar til teorien og praksisen rundt kunnskapsgrafbaserte JKPer ved Ä studere og designe en programvarearkitektur som referanse for Ä lette iverksettelsen av konkrete lÞsninger og adopsjonen av JKPer. Den fÞrste bidraget til denne doktoravhandlingen gir en grundig og forstÄelig analyse av ideen bak JKPer, fra deres opprinnelse til deres nÄvÊrende tilstand. Denne analysen gir den fÞrste studien noensinne av faktorene som har bidratt til den langsomme adopsjonen, inkludert kompleksiteten i deres sosiale og tekniske aspekter, og identifiserer de stÞrste utfordringene og fremtidige retninger for JKPer. Den andre bidraget presenterer programvarearkitekturen som referanse, som gir en generisk blÄkopi for design og utvikling av konkrete JKPer. Den foreslÄtte referansearkitekturen definerer ogsÄ to nye typer komponenter ment for Ä opprettholde og videreutvikle KI-modeller og kunnskapsrepresentasjoner. Den tredje presenterer et eksempel pÄ iverksettelse av programvarearkitekturen som referanse og beskriver en prosess for Ä forbedre effektiviteten til informasjonsekstraksjonspipelines. Denne rammen muliggjÞr en fleksibel, parallell og samtidig integrering av teknikker for naturlig sprÄkbehandling og KI-verktÞy. I tillegg diskuterer denne avhandlingen konsekvensene av de nyeste KI-fremgangene for JKPer og ulike etiske aspekter ved bruk av JKPer. Totalt sett gir denne PhD-avhandlingen en omfattende og grundig analyse av JKPer, fra teorien til designet av deres tekniske aspekter. Denne forskningen tar sikte pÄ Ä lette vedtaket av JKPer og fremme forskning pÄ dette feltet.Journalistic Knowledge Platforms (JKPs) are a type of intelligent information systems designed to augment news creation processes by combining big data, artificial intelligence (AI) and knowledge bases to support journalists. Despite their potential to revolutionise the field of journalism, the adoption of JKPs has been slow, with scholars and large news outlets involved in the research and development of JKPs. The slow adoption can be attributed to the technical complexity of JKPs that led news organisation to rely on multiple independent and task-specific production system. This situation can increase the resource and coordination footprint and costs, at the same time it poses a threat to lose control over data and face vendor lock-in scenarios. The technical complexities remain a major obstacle as there is no existing well-designed system architecture that would facilitate the realisation and integration of JKPs in a coherent manner over time. This PhD Thesis contributes to the theory and practice on knowledge-graph based JKPs by studying and designing a software reference architecture to facilitate the instantiation of concrete solutions and the adoption of JKPs. The first contribution of this PhD Thesis provides a thorough and comprehensible analysis of the idea of JKPs, from their origins to their current state. This analysis provides the first-ever study of the factors that have contributed to the slow adoption, including the complexity of their social and technical aspects, and identifies the major challenges and future directions of JKPs. The second contribution presents the software reference architecture that provides a generic blueprint for designing and developing concrete JKPs. The proposed reference architecture also defines two novel types of components intended to maintain and evolve AI models and knowledge representations. The third presents an instantiation example of the software reference architecture and details a process for improving the efficiency of information extraction pipelines. This framework facilitates a flexible, parallel and concurrent integration of natural language processing techniques and AI tools. Additionally, this Thesis discusses the implications of the recent AI advances on JKPs and diverse ethical aspects of using JKPs. Overall, this PhD Thesis provides a comprehensive and in-depth analysis of JKPs, from the theory to the design of their technical aspects. This research aims to facilitate the adoption of JKPs and advance research in this field.Doktorgradsavhandlin

    Missing Mr. Brown and buying an Abraham Lincoln – Dark Entities and DBpedia

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    We argue for the need for the community to address the issue of \u201cdarkentities\u201d, those domain entities for which a knowledge base has no informationin the context of the entity linking task for building Event-Centric KnowledgeGraphs. Through an analysis of a large (1,2 million article) automotive newswirecorpus against DBpedia, we identify six classes of errors that lead to dark entities.Finally, we outline further steps that can be taken for tackling this issue

    Feasibility Analysis of Various Electronic Voting Systems for Complex Elections

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    Measurement of service innovation project success:A practical tool and theoretical implications

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    Congress UPV Proceedings of the 21ST International Conference on Science and Technology Indicators

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    This is the book of proceedings of the 21st Science and Technology Indicators Conference that took place in Valùncia (Spain) from 14th to 16th of September 2016. The conference theme for this year, ‘Peripheries, frontiers and beyond’ aimed to study the development and use of Science, Technology and Innovation indicators in spaces that have not been the focus of current indicator development, for example, in the Global South, or the Social Sciences and Humanities. The exploration to the margins and beyond proposed by the theme has brought to the STI Conference an interesting array of new contributors from a variety of fields and geographies. This year’s conference had a record 382 registered participants from 40 different countries, including 23 European, 9 American, 4 Asia-Pacific, 4 Africa and Near East. About 26% of participants came from outside of Europe. There were also many participants (17%) from organisations outside academia including governments (8%), businesses (5%), foundations (2%) and international organisations (2%). This is particularly important in a field that is practice-oriented. The chapters of the proceedings attest to the breadth of issues discussed. Infrastructure, benchmarking and use of innovation indicators, societal impact and mission oriented-research, mobility and careers, social sciences and the humanities, participation and culture, gender, and altmetrics, among others. We hope that the diversity of this Conference has fostered productive dialogues and synergistic ideas and made a contribution, small as it may be, to the development and use of indicators that, being more inclusive, will foster a more inclusive and fair world
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