2020
DOI: 10.1109/access.2020.3010126
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The Moderation Influence of Power Distance on the Relationship Between Technological Factors and the Successful Implementation of Citizen Relationship Management in the Public Sector

Abstract: The revolution of information and communication technology and the widespread use of it in all aspects of daily life, whether on a personal or institutional level, leads to the increase demand of citizens to get advanced and integrated electronic services. This has pushed many government institutions to implement Citizen Relationship Management systems to improve their performance and provide more sophisticated, efficient and effective services to citizens. However, previous studies have revealed the high rate… Show more

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Cited by 4 publications
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“…Potential nancial activity risks and the ght against economic crime are also signi cant. e key to building a personnel relationship graph in thenancial sector is extracting personnel-related entities, attributes, and events from unstructured economic announcements, which entails tasks such as named entity recognition [1,2], relationship extraction, and event extraction [3]. In recent years, as computer power has increased, deep learning technology based on neural networks has increasingly become the de facto standard way for named entity recognition.…”
Section: Introductionmentioning
confidence: 99%
“…Potential nancial activity risks and the ght against economic crime are also signi cant. e key to building a personnel relationship graph in thenancial sector is extracting personnel-related entities, attributes, and events from unstructured economic announcements, which entails tasks such as named entity recognition [1,2], relationship extraction, and event extraction [3]. In recent years, as computer power has increased, deep learning technology based on neural networks has increasingly become the de facto standard way for named entity recognition.…”
Section: Introductionmentioning
confidence: 99%