对实际项目建议书的文本表示、分类和聚类方法进行比较分析

Meltem Aksoy, S. Ugurlu, M. Amasyali
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引用次数: 1

摘要

当评估大量的项目提案以分配可用资金时,根据它们的相似性对它们进行分组是有益的。目前小组提案的方法主要是基于项目申请人申报的相似主题、学科领域和关键词的人工匹配。当提案数量增加时,该任务变得复杂并且需要过多的时间。本文旨在展示如何有效地利用土耳其项目建议书标题和摘要中丰富的信息进行自动分组。本研究提出了一个模型,通过结合词嵌入、聚类和分类技术,有效地对土耳其项目提案进行分组。该模型使用FastText、BERT和术语频率/逆文档频率(TF/IDF)词嵌入技术从土耳其语项目提案的标题和摘要中提取术语。使用聚类和分类技术对提取的术语进行分组。使用k-means、k-medoids、k-medoids和聚集聚类算法发现语料库中包含的自然群。此外,本研究采用分类方法来预测语料库中每个文档的目标类。为了对项目提案进行分类,使用了各种分类器,包括k近邻(KNN)、支持向量机(SVM)、人工神经网络(ANN)、分类与回归树(CART)和随机森林(RF)。利用伊斯坦布尔开发署的真实数据进行了实证实验,验证了所提出方法的有效性。结果表明,生成的词嵌入可以有效地将提案文本表示为向量,并可作为聚类或分类算法的输入。使用聚类算法,将文档语料库分为五组。此外,结果表明,使用分类算法可以很容易地将提案分类到预定义的类别中。在FastText词嵌入方法中,SVM-Linear的预测准确率最高(89.2%)。人工分组与自动分类聚类结果的比较表明,分类聚类技术都具有较高的成功率。研究限制/启示建议的模型自动受益于项目建议中的丰富信息,并显著减少了管理人员必须手动执行的大量耗时任务。因此,它消除了当前手工方法的缺点,并产生更准确的结果。在未来,应该使用其他资助机构的数据进行更多的实验来验证所提出的方法。原创性/价值本研究展示了词嵌入方法的应用,以有效地利用土耳其项目提案标题和摘要中丰富的信息。现有的研究主要集中在提案的自动分组上;特征提取方法采用传统的基于频率的词嵌入方法来表示项目提案。与以往的研究不同,本研究采用了两种性能优异的基于神经网络的文本特征提取技术来获得代表提案的术语:BERT作为上下文词嵌入方法,FastText作为静态词嵌入方法。此外,据我们所知,还没有对用土耳其语分组项目提案进行过研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A comparative analysis of text representation, classification and clustering methods over real project proposals
PurposeWhen a large number of project proposals are evaluated to allocate available funds, grouping them based on their similarities is beneficial. Current approaches to group proposals are primarily based on manual matching of similar topics, discipline areas and keywords declared by project applicants. When the number of proposals increases, this task becomes complex and requires excessive time. This paper aims to demonstrate how to effectively use the rich information in the titles and abstracts of Turkish project proposals to group them automatically.Design/methodology/approachThis study proposes a model that effectively groups Turkish project proposals by combining word embedding, clustering and classification techniques. The proposed model uses FastText, BERT and term frequency/inverse document frequency (TF/IDF) word-embedding techniques to extract terms from the titles and abstracts of project proposals in Turkish. The extracted terms were grouped using both the clustering and classification techniques. Natural groups contained within the corpus were discovered using k-means, k-means++, k-medoids and agglomerative clustering algorithms. Additionally, this study employs classification approaches to predict the target class for each document in the corpus. To classify project proposals, various classifiers, including k-nearest neighbors (KNN), support vector machines (SVM), artificial neural networks (ANN), classification and regression trees (CART) and random forest (RF), are used. Empirical experiments were conducted to validate the effectiveness of the proposed method by using real data from the Istanbul Development Agency.FindingsThe results show that the generated word embeddings can effectively represent proposal texts as vectors, and can be used as inputs for clustering or classification algorithms. Using clustering algorithms, the document corpus is divided into five groups. In addition, the results demonstrate that the proposals can easily be categorized into predefined categories using classification algorithms. SVM-Linear achieved the highest prediction accuracy (89.2%) with the FastText word embedding method. A comparison of manual grouping with automatic classification and clustering results revealed that both classification and clustering techniques have a high success rate.Research limitations/implicationsThe proposed model automatically benefits from the rich information in project proposals and significantly reduces numerous time-consuming tasks that managers must perform manually. Thus, it eliminates the drawbacks of the current manual methods and yields significantly more accurate results. In the future, additional experiments should be conducted to validate the proposed method using data from other funding organizations.Originality/valueThis study presents the application of word embedding methods to effectively use the rich information in the titles and abstracts of Turkish project proposals. Existing research studies focus on the automatic grouping of proposals; traditional frequency-based word embedding methods are used for feature extraction methods to represent project proposals. Unlike previous research, this study employs two outperforming neural network-based textual feature extraction techniques to obtain terms representing the proposals: BERT as a contextual word embedding method and FastText as a static word embedding method. Moreover, to the best of our knowledge, there has been no research conducted on the grouping of project proposals in Turkish.
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