首页> 外文会议>Information Resources Management Association International Conference; 20070519-23; Vancouver(CA) >An Algorithm for Market Intelligence Data Collection from Heterogeneous Sources with Similarity-Based Selection Clustering Technique Using Knowledge Maps
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An Algorithm for Market Intelligence Data Collection from Heterogeneous Sources with Similarity-Based Selection Clustering Technique Using Knowledge Maps

机译:基于知识图的基于相似度选择聚类的异构来源市场情报数据收集算法

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Business Intelligence (BI) has emerged as one of software solutions that have maximum allocated investments by many organizations for the year 2005. Among various forms and application-based business intelligence, market intelligence (Ml) is viewed as a crucial factor for a company to succeed both operationally and strategically in today's' competitive environment. Capturing market intelligence data has apparently become easy, especially with the proliferation of the Web. But, this has made data collection more difficult in reality from the system s point of view, as data sources on the web are voluminous, heterogeneous in terms of structures and semantics, and some part of it may be irrelevant to a specific organizations' marketing decision-making context, which is the primary premises of market intelligence systems. To address these three specific problems, an algorithm based on similarity measures and multi-dimensional scaling (MDS), which produces hierarchical clusters of knowledge maps from a training data-source set for collecting inputs from heterogeneous sources for capturing market intelligence, is proposed in this paper. The paper illustrates that this algorithm can reduce irrelevant or highly similar data sources for inclusion in the selected data-source repository - represented in the form of clusters of knowledge maps. Therefore, it acts as a similarity-based selection and filtering tool also, with the specific purpose of data collection for Ml.
机译:商业智能(BI)已成为许多组织在2005年投入最大投资的软件解决方案之一。在各种形式和基于应用程序的商业智能中,市场智能(Ml)被视为公司实现业务增长的关键因素。在当今竞争激烈的环境中在运营和战略上都取得成功。捕获市场情报数据显然变得容易,尤其是随着Web的普及。但是,从系统的角度来看,这使数据收集在现实中变得更加困难,因为Web上的数据源非常庞大,在结构和语义上都是异构的,并且其中的某些部分可能与特定组织的营销无关决策环境,这是市场情报系统的主要前提。为了解决这三个特定问题,提出了一种基于相似性度量和多维缩放(MDS)的算法,该算法从训练数据源集中生成知识图的层次集群,以从异构源收集输入以捕获市场情报。这篇报告。本文说明了该算法可以减少不相关或高度相似的数据源,以将其包含在选定的数据源存储库中(以知识图谱的簇的形式表示)。因此,它也用作基于相似度的选择和过滤工具,其特定目的是为M1收集数据。

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