Abstract
As more objections have been raised against grant peer-review for being costly and time-consuming, the legitimate question arises whether machine learning algorithms could help assess the epistemic efficiency of the proposed projects. As a case study, we investigated whether project efficiency in high energy physics (HEP) can be algorithmically predicted based on the data from the proposal. To analyze the potential of algorithmic prediction in HEP, we conducted a study on data about the structure (project duration, team number, and team size) and outcomes (citations per paper) of HEP experiments with the goal of predicting their efficiency. In the first step, we assessed the project efficiency using Data Envelopment Analysis (DEA) of 67 experiments conducted in the HEP laboratory Fermilab. In the second step, we employed predictive algorithms to detect which team structures maximize the epistemic performance of an expert group. For this purpose, we used the efficiency scores obtained by DEA and applied predictive algorithms – lasso and ridge linear regression, neural network, and gradient boosted trees – on them. The results of the predictive analyses show moderately high accuracy (mean absolute error equal to 0.123), indicating that they can be beneficial as one of the steps in grant review. Still, their applicability in practice should be approached with caution. Some of the limitations of the algorithmic approach are the unreliability of citation patterns, unobservable variables that influence scientific success, and the potential predictability of the model.
Original language | English |
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Article number | 50 |
Number of pages | 21 |
Journal | European Journal for Philosophy of Science |
Volume | 12 |
Issue number | 3 |
DOIs | |
Publication status | Published - Sept 2022 |
Externally published | Yes |
Funding
The authors are grateful to Alexander Müller who checked the decision about which projects to include in the analysis and to Jovan Sikimić who assisted in updating the database. Sandro Radovanović acknowledges funding by Office of Naval Research grant number ONR N62909-19-1-2008, project title: “Aggregating computational algorithms and human decision-making preferences in multi-agent settings”. Open Access funding enabled and organized by Projekt DEAL. Sandro Radovanović acknowledges funding from ONR/ONR Global under Grant N62909–19-1-2008. Vlasta Sikimić’s research is funded by the Deutsche Forschungsgemeinschaft (DFG, German Research Foundation) under Germany’s Excellence Strategy – EXC number 2064/1 – Project number 390727645.
Keywords
- Data envelopment analysis
- Efficiency of experiments
- Epistemic utility
- High energy physics
- Peer-review
- Predictive analysis