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Analyzing Website Content for Improved RT Collaboration Planning

机译:分析网站内容,以改进R&T协作规划

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A well-known problem in research and technology (R&T) planning is the selection of suited R&T collaboration partners. We investigate the use of textual information from the website content of possible collaboration candidates to identify their suitability. This improves the selection of collaboration partners and it enables a successful processing of R&T-projects. In a case study 'defense R&T', organizations and companies that have proven their suitability as collaboration partner in former R&T projects are selected (positive examples) as well as organizations and companies that have not. Latent semantic indexing with singular value decomposition and logistic regression modeling is used to identify semantic textual patterns from their websites' content. As a result of prediction modeling, some of these textual patterns are successful in predicting new organizations or companies as (un-) suited R&T collaboration partners. These results support the acquisition of new collaboration partners and thus, they are valuable for the planning of R&T.
机译:研究和技术(R&T)规划的众所周知的问题是选择适用的R&T协作合作伙伴。我们调查了从可能的协作候选人的网站内容中使用文本信息以确定其适用性。这改善了协作合作伙伴的选择,它可以成功地处理R&T-Projects。在案例研究“防御R&T”,已被审查其作为前R&T项目的合作伙伴的适用性的组织和公司(积极的例子)以及没有的组织和公司。使用奇异值分解和Logistic回归建模的潜在语义索引用于识别其网站内容的语义文本模式。由于预测建模,这些文本模式中的一些成功预测新的组织或公司(UN-)适用于R&T协作合作伙伴。这些结果支持收购新的合作伙伴,因此,它们对R&T的规划有价值。

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