834 resultados para business intelligence


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Large communities built around social media on the Internet offer an opportunity to augment analytical customer relationship management (CRM) strategies. The purpose of this paper is to provide direction to advance the conceptual design of business intelligence (BI) systems for implementing CRM strategies. After introducing social CRM and social BI as emerging fields of research, the authors match CRM strategies with a re-engineered conceptual data model of Facebook in order to illustrate the strategic value of these data. Subsequently, the authors design a multi-dimensional data model for social BI and demonstrate its applicability by designing management reports in a retail scenario. Building on the service blueprinting framework, the authors propose a structured research agenda for the emerging field of social BI.

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Road networks are a national critical infrastructure. The road assets need to be monitored and maintained efficiently as their conditions deteriorate over time. The condition of one of such assets, road pavement, plays a major role in the road network maintenance programmes. Pavement conditions depend upon many factors such as pavement types, traffic and environmental conditions. This paper presents a data analytics case study for assessing the factors affecting the pavement deflection values measured by the traffic speed deflectometer (TSD) device. The analytics process includes acquisition and integration of data from multiple sources, data pre-processing, mining useful information from them and utilising data mining outputs for knowledge deployment. Data mining techniques are able to show how TSD outputs vary in different roads, traffic and environmental conditions. The generated data mining models map the TSD outputs to some classes and define correction factors for each class.

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From 2014, QUT will be adopting a life-cycle approach to Course Quality Assurance informed by a wider and richer range of historic, ‘live’ and ‘predictive’ course data. Key data elements continue to be grouped according to the three broad categories – Viability, Quality of Learning Environment and Outcomes – and are further supported with analytic data presented within tables and charts. Course Quality Assurance and this Consolidated Courses Performance Report illuminate aspects of courses from a data evidence base highlighting the strengths and weaknesses of our courses. It provides the framework and tools to achieve QUT's commitment to excellent graduate outcomes by drawing attention and focus to the quality of our courses and providing a structured approach for bringing about change. Our portfolio of courses forms a vital part of QUT, generating almost $600 million in 2013 alone. Real world courses are fundamental to the strength of the Institution; they are what our many thousands of current and future students are drawn to and invest their time and aspirations in. As we move through a period of some regulatory and deregulatory uncertainty, there is a greater need for QUT to monitor and respond to the needs and expectations of our students. The life-cycle approach, with its rich and predicative data, provides the best source of evidence we have had, to date, to assure the quality of our courses and their relevance in a rapidly changing higher education context.

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Accounting information systems (AIS) capture and process accounting data and provide valuable information for decision-makers. However, in a rapidly changing environment, continual management of the AIS is necessary for organizations to optimise performance outcomes. We suggest that building a dynamic AIS capability enables accounting process and organizational performance. Using the dynamic capabilities framework (Teece 2007) we propose that a dynamic AIS capability can be developed through the synergy of three competencies: a flexible AIS, having a complementary business intelligence system and accounting professionals with IT technical competency. Using survey data, we find evidence of a positive association between a dynamic AIS capability, accounting process performance, and overall firm performance. The results suggest that developing a dynamic AIS resource can add value to an organization. This study provides guidance for organizations looking to leverage the performance outcomes of their AIS environment.

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Practical usage of machine learning is gaining strategic importance in enterprises looking for business intelligence. However, most enterprise data is distributed in multiple relational databases with expert-designed schema. Using traditional single-table machine learning techniques over such data not only incur a computational penalty for converting to a flat form (mega-join), even the human-specified semantic information present in the relations is lost. In this paper, we present a practical, two-phase hierarchical meta-classification algorithm for relational databases with a semantic divide and conquer approach. We propose a recursive, prediction aggregation technique over heterogeneous classifiers applied on individual database tables. The proposed algorithm was evaluated on three diverse datasets. namely TPCH, PKDD and UCI benchmarks and showed considerable reduction in classification time without any loss of prediction accuracy. (C) 2012 Elsevier Ltd. All rights reserved.

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Os painéis de gráficos estatísticos conhecidos como dashboards são utilizados comumente naárea de Business Intelligence (BI) para a visualização de grandes sistemas organizados de dados. A presente dissertação propõe embasar o projeto de dashboards pelas teorias de Jacques Bertin, formuladas nas obras Sémiologie Graphique e La Graphique et le Traitement Graphique de linformation. Considerando este referencial, e ainda parâmetros do design de informação e da visualização de dados, foram desenvolvidos dashboards que apresentam dados sobre a política de reserva de vagas da Universidade do Estado do Rio de Janeiro, sistematizados pelo projeto de BI dessa instituição. O objetivo foi não apenas o de atender aos requisitos convencionais de um dashboard, mas sobretudo o de apresentar outras perspectivas informativas. Nesse sentido, investigam-se as especificidades dos métodos de Bertin e sua expansão para o domínio dos sistemas interativos.

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在介绍了数据分析代理的概念后,提出了数据分析代理模式的体系结构,讨论了在不同类型企业中数据分析代理的具体应用模式企业内代理模式和企业外代理模式,对比分析了数据分析传统模式和代理模式二者之间特点,最后举例说明了数据分析代理模式在企业中的具体实践。

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随着国内金融行业的逐步开放,中国银联也面临着跨国银行卡组织的激烈竞争,跨国银行卡组织拥有先进的IT技术和经营管理经验,和中国银联相比,具有很大竞争优势。银联为了积极面对跨国银行卡组织的挑战,成为一个知名品牌,必须加快信息化建设,转变经营观念,从传统的以业务为中心转移到以客户为中心,而商业智能技术——数据仓库和数据挖掘正是银联信息化建设的重要保障。 本文首先分析了银联的实际业务需求,结合银联的具体业务特点,设计与实现了银联的数据仓库系统,着重对数据仓库技术在银联中的应用现状进行了详细表述;该系统采用总线式的设计架构,有很好的一致性和可扩展性;系统采用维度建模方法进行数据仓库的逻辑设计,维度建模方法能很好地提高系统查询性能,在逻辑设计基础上本文也进行了数据仓库的物理设计。同时本文也详细介绍了数据仓库的重点部分——ETL系统的设计和实现,该ETL系统采用模块化的设计方法,采用元数据作为驱动方式,加强了调度管理和监控的功能,使该ETL工具更具智能性和更好的适应性。 本文在完成银联数据仓库系统建设的基础上,详细分析了银联业务系统要实现的OLAP分析目标,介绍了数据挖掘技术在银联客户分类中的应用,首次尝试在银联数据仓库系统中构建客户分类模型。在客户分类模型的构建中,我们首先采用聚类技术进行客户群分类,然后使用改进的SLIQ算法构建分类模型,本文对SLIQ算法中的符号型属性处理方法及其剪枝算法进行改进,并对结果进行对比分析,得到了一个较为合理的客户分类模型,取得了很好的应用效果,从而为银联数据仓库系统开发应用提供了可借鉴的操作思路。

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Our research follows a design science approach to develop a method that supports the initialization of ES implementation projects – the chartering phase. This project phase is highly relevant for implementation success, but is understudied in IS research. In this paper, we derive design principles for a chartering method based on a systematic review of ES implementation literature and semi-structured expert interviews. Our analysis identifies differences in the importance of certain success factors depending on the system type. The proposed design principles are built on these factors and are linked to chartering key activities. We specifically consider system-type-specific chartering aspects for process-centric Business Intelligence & Analytics (BI&A) systems, which are an emerging class of systems at the intersection of BI&A and business process management. In summary, this paper proposes design principles for a chartering method – considering specifics of process-centric BI&A.

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PURPOSE: Review existing studies and provide new results on the development, regulatory, and market aspects of new oncology drug development. METHODS: We utilized data from the US Food and Drug Administration (FDA), company surveys, and publicly available commercial business intelligence databases on new oncology drugs approved in the United States and on investigational oncology drugs to estimate average development and regulatory approval times, clinical approval success rates, first-in-class status, and global market diffusion. RESULTS: We found that approved new oncology drugs to have a disproportionately high share of FDA priority review ratings, of orphan drug designations at approval, and of drugs that were granted inclusion in at least one of the FDA's expedited access programs. US regulatory approval times were shorter, on average, for oncology drugs (0.5 years), but US clinical development times were longer on average (1.5 years). Clinical approval success rates were similar for oncology and other drugs, but proportionately more of the oncology failures reached expensive late-stage clinical testing before being abandoned. In relation to other drugs, new oncology drug approvals were more often first-in-class and diffused more widely across important international markets. CONCLUSION: The market success of oncology drugs has induced a substantial amount of investment in oncology drug development in the last decade or so. However, given the great need for further progress, the extent to which efforts to develop new oncology drugs will grow depends on future public-sector investment in basic research, developments in translational medicine, and regulatory reforms that advance drug-development science.

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Revenue Management’s most cited definitions is probably “to sell the right accommodation to the right customer, at the right time and the right price, with optimal satisfaction for customers and hoteliers”. Smart Revenue Management (SRM) is a project, which aims the development of smart automatic techniques for an efficient optimization of occupancy and rates of hotel accommodations, commonly referred to, as revenue management. One of the objectives of this project is to demonstrate that the collection of Big Data, followed by an appropriate assembly of functionalities, will make possible to generate a Data Warehouse necessary to produce high quality business intelligence and analytics. This will be achieved through the collection of data extracted from a variety of sources, including from the web. This paper proposes a three stage framework to develop the Big Data Warehouse for the SRM. Namely, the compilation of all available information, in the present case, it was focus only the extraction of information from the web by a web crawler – raw data. The storing of that raw data in a primary NoSQL database, and from that data the conception of a set of functionalities, rules, principles and semantics to select, combine and store in a secondary relational database the meaningful information for the Revenue Management (Big Data Warehouse). The last stage will be the principal focus of the paper. In this context, clues will also be giving how to compile information for Business Intelligence. All these functionalities contribute to a holistic framework that, in the future, will make it possible to anticipate customers and competitor’s behavior, fundamental elements to fulfill the Revenue Management

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Der vorliegende Artikel bezieht sich auf die unterschiedlichen Begrifflichkeiten, die im Umfeld der Wettbewerberforschung in der Literatur Verwendung finden. Neben den Begriffen des angloamerikanischen Sprachraums (Competitive Intelligence, Competitor Intelligence und Competitor Analyse) existieren für den deutschsprachigen Raum (Wettbewerber-, Konkurrenten-, Wettbewerbs- und Konkurrenzanalyse) ebenfalls verschiedenartige Begriffe, denen in der Literatur eine häufig unterschiedliche Verwendung zu Teil wird. Dieser Artikel baut einen Ordnungsansatz auf, der die angesprochenen Begrifflichkeiten in eine Struktur bringt, um somit eine klare inhaltliche Trennung der einzelnen Begriffe sowie eine in Relation bringende Darstellung aufbauen zu können. Dies ermöglicht eine ambiguitätsfreie Verwendung innerhalb der wissenschaftlichen Arbeit durch definitorisch fixierte Begriffsinhalte.