Learning to Rank with Small Set of Ground Truth Data

07/04/2022
by   Jiashu Wu, et al.
0

Over the past decades, researchers had put lots of effort investigating ranking techniques used to rank query results retrieved during information retrieval, or to rank the recommended products in recommender systems. In this project, we aim to investigate searching, ranking, as well as recommendation techniques to help to realize a university academia searching platform. Unlike the usual information retrieval scenarios where lots of ground truth ranking data is present, in our case, we have only limited ground truth knowledge regarding the academia ranking. For instance, given some search queries, we only know a few researchers who are highly relevant and thus should be ranked at the top, and for some other search queries, we have no knowledge about which researcher should be ranked at the top at all. The limited amount of ground truth data makes some of the conventional ranking techniques and evaluation metrics become infeasible, and this is a huge challenge we faced during this project. This project enhances the user's academia searching experience to a large extent, it helps to achieve an academic searching platform which includes researchers, publications and fields of study information, which will be beneficial not only to the university faculties but also to students' research experiences.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/19/2018

About BIRDS project (Bioinformatics and Information Retrieval Data Structures Analysis and Design)

BIRDS stands for "Bioinformatics and Information Retrieval Data Structur...
research
08/31/2020

PT-Ranking: A Benchmarking Platform for Neural Learning-to-Rank

Deep neural networks has become the first choice for researchers working...
research
10/11/2021

Automatic Recall of Software Lessons Learned for Software Project Managers

Lessons learned (LL) records constitute the software organization memory...
research
03/17/2017

Global Entity Ranking Across Multiple Languages

We present work on building a global long-tailed ranking of entities acr...
research
07/23/2014

Learning Rank Functionals: An Empirical Study

Ranking is a key aspect of many applications, such as information retrie...
research
12/12/2018

Searching for Relevant Lessons Learned Using Hybrid Information Retrieval Classifiers: A Case Study in Software Engineering

The lessons learned (LL) repository is one of the most valuable sources ...
research
12/15/2020

Weakly Supervised Label Smoothing

We study Label Smoothing (LS), a widely used regularization technique, i...

Please sign up or login with your details

Forgot password? Click here to reset