论文标题
通过机器学习预测文章质量分数:英国研究卓越框架
Predicting article quality scores with machine learning: The UK Research Excellence Framework
论文作者
论文摘要
国家研究评估计划和激励方案先前已在简单的定量指标和耗时的同行评审之间选择,有时在文献学上得到了支持。在这里,我们评估了人工智能(AI)是否可以使用更多多个文献计量和元数据输入来提供第三种替代方案,从而估算文章质量。我们使用临时三级Ref2021同行评审分数进行了调查,该评分分数为84,966篇提交给英国研究卓越框架2021的文章,与Scopus Record 2014-18匹配,并具有大量的摘要。我们发现,在最佳情况下,在医学和物理科学单位(UOA)和经济学单位中,准确性最高,比基线高42%(总体上为72%)。这是基于1000个文献计量的输入和每种UOA培训的一半文章。社会科学,数学,工程,艺术和人文科学的预测精度高于基线,UOA较低或接近零。随机森林分类器(标准或序数)和极端梯度增强分类器算法的表现最佳。如果将UOA合并或用Scopus广泛类别替换,则准确性较低。通过算法估计,我们通过主动学习策略和选择具有较高预测概率的文章提高了精度,但这大大减少了预测的分数数量。
National research evaluation initiatives and incentive schemes have previously chosen between simplistic quantitative indicators and time-consuming peer review, sometimes supported by bibliometrics. Here we assess whether artificial intelligence (AI) could provide a third alternative, estimating article quality using more multiple bibliometric and metadata inputs. We investigated this using provisional three-level REF2021 peer review scores for 84,966 articles submitted to the UK Research Excellence Framework 2021, matching a Scopus record 2014-18 and with a substantial abstract. We found that accuracy is highest in the medical and physical sciences Units of Assessment (UoAs) and economics, reaching 42% above the baseline (72% overall) in the best case. This is based on 1000 bibliometric inputs and half of the articles used for training in each UoA. Prediction accuracies above the baseline for the social science, mathematics, engineering, arts, and humanities UoAs were much lower or close to zero. The Random Forest Classifier (standard or ordinal) and Extreme Gradient Boosting Classifier algorithms performed best from the 32 tested. Accuracy was lower if UoAs were merged or replaced by Scopus broad categories. We increased accuracy with an active learning strategy and by selecting articles with higher prediction probabilities, as estimated by the algorithms, but this substantially reduced the number of scores predicted.