Journal of Soft Computing in Civil Engineering | |
Predicting Budget from Transportation Research Grant Description: An Exploratory Analysis of Text Mining and Machine Learning Techniques | |
关键词: Text Mining; Transportation research; Natural Language Processing (NLP); Big Data; Deep Learning; Soft Computing; | |
DOI : 10.22115/scce.2017.49604 | |
学科分类:工程和技术(综合) | |
来源: Pouyan Press | |
【 摘 要 】
Funding agencies such as the U.S. National Science Foundation (NSF), U.S. National Institutes of Health (NIH), and the Transportation Research Board (TRB) of The National Academies make their online grant databases publicly available which document a variety of information on grants that have been funded over the past few decades. In this paper, based on a quantitative analysis of the TRB’s Research In Progress (RIP) online database, we explore the feasibility of automatically estimating the appropriate funding level, given the textual description of a transportation research project. We use statistical Text Mining (TM) and Machine Learning (ML) technologies to build this model using the 14,000 or more records of the TRB’s RIP research grants big data. Natural Language Processing (NLP) based text representation models such as the Latent Dirichlet Allocation (LDA), Latent Semantic Indexing (LSI) and the Doc2Vec are used to vectorize the project descriptions and generate semantic vectors. Each of these representations are then used to train supervised regression models such as Random Forest (RF) regression. Out of the three latent feature generation models, we found LDA gives the least Mean Absolute Error (MAE). However, based on the correlation coefficients, it was found that it is not very feasible to accurately predict the funding level directly from the unstructured project abstract, given the large variations in source agencies, subject areas, and funding levels. By using separate prediction models for different types of funding agencies, funding levels were better correlated to the project abstract.
【 授权许可】
CC BY
【 预 览 】
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RO201901214432580ZK.pdf | 1203KB | download |