Integrating Rankings into Quantized Scores in Peer Review

04/05/2022
by   Yusha Liu, et al.
0

In peer review, reviewers are usually asked to provide scores for the papers. The scores are then used by Area Chairs or Program Chairs in various ways in the decision-making process. The scores are usually elicited in a quantized form to accommodate the limited cognitive ability of humans to describe their opinions in numerical values. It has been found that the quantized scores suffer from a large number of ties, thereby leading to a significant loss of information. To mitigate this issue, conferences have started to ask reviewers to additionally provide a ranking of the papers they have reviewed. There are however two key challenges. First, there is no standard procedure for using this ranking information and Area Chairs may use it in different ways (including simply ignoring them), thereby leading to arbitrariness in the peer-review process. Second, there are no suitable interfaces for judicious use of this data nor methods to incorporate it in existing workflows, thereby leading to inefficiencies. We take a principled approach to integrate the ranking information into the scores. The output of our method is an updated score pertaining to each review that also incorporates the rankings. Our approach addresses the two aforementioned challenges by: (i) ensuring that rankings are incorporated into the updates scores in the same manner for all papers, thereby mitigating arbitrariness, and (ii) allowing to seamlessly use existing interfaces and workflows designed for scores. We empirically evaluate our method on synthetic datasets as well as on peer reviews from the ICLR 2017 conference, and find that it reduces the error by approximately 30 to the best performing baseline on the ICLR 2017 data.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/02/2021

Ranking Scientific Papers Using Preference Learning

Peer review is the main quality control mechanism in academia. Quality o...
research
08/31/2017

Design and Analysis of the NIPS 2016 Review Process

Neural Information Processing Systems (NIPS) is a top-tier annual confer...
research
06/11/2018

Simulation Study on a New Peer Review Approach

The increasing volume of scientific publications and grant proposals has...
research
04/21/2023

The Isotonic Mechanism for Exponential Family Estimation

In 2023, the International Conference on Machine Learning (ICML) require...
research
03/23/2023

A Gold Standard Dataset for the Reviewer Assignment Problem

Many peer-review venues are either using or looking to use algorithms to...
research
01/25/2023

Into the Unknown: Assigning Reviewers to Papers with Uncertain Affinities

Peer review cannot work unless qualified and interested reviewers are as...
research
11/30/2020

A Novice-Reviewer Experiment to Address Scarcity of Qualified Reviewers in Large Conferences

Conference peer review constitutes a human-computation process whose imp...

Please sign up or login with your details

Forgot password? Click here to reset