From Query-By-Keyword to Query-By-Example: LinkedIn Talent Search Approach

09/03/2017
by   Viet Ha-Thuc, et al.
0

One key challenge in talent search is to translate complex criteria of a hiring position into a search query, while it is relatively easy for a searcher to list examples of suitable candidates for a given position. To improve search efficiency, we propose the next generation of talent search at LinkedIn, also referred to as Search By Ideal Candidates. In this system, a searcher provides one or several ideal candidates as the input to hire for a given position. The system then generates a query based on the ideal candidates and uses it to retrieve and rank results. Shifting from the traditional Query-By-Keyword to this new Query-By-Example system poses a number of challenges: How to generate a query that best describes the candidates? When moving to a completely different paradigm, how does one leverage previous product logs to learn ranking models and/or evaluate the new system with no existing usage logs? Finally, given the different nature between the two search paradigms, the ranking features typically used for Query-By-Keyword systems might not be optimal for Query-By-Example. This paper describes our approach to solving these challenges. We present experimental results confirming the effectiveness of the proposed solution, particularly on query building and search ranking tasks. As of writing this paper, the new system has been available to all LinkedIn members.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
08/06/2020

Efficient Neural Query Auto Completion

Query Auto Completion (QAC), as the starting point of information retrie...
research
05/21/2021

Training Mixed-Objective Pointing Decoders for Block-Level Optimization in Search Recommendation

Related or ideal follow-up suggestions to a web query in search engines ...
research
01/19/2023

Keyword Embeddings for Query Suggestion

Nowadays, search engine users commonly rely on query suggestions to impr...
research
06/07/2020

SERank: Optimize Sequencewise Learning to Rank Using Squeeze-and-Excitation Network

Learning-to-rank (LTR) is a set of supervised machine learning algorithm...
research
01/28/2017

How to Search the Internet Archive Without Indexing It

Significant parts of cultural heritage are produced on the web during th...
research
06/18/2019

Query Generation for Patent Retrieval with Keyword Extraction based on Syntactic Features

This paper describes a new method to extract relevant keywords from pate...
research
03/23/2021

Attention-based neural re-ranking approach for next city in trip recommendations

This paper describes an approach to solving the next destination city re...

Please sign up or login with your details

Forgot password? Click here to reset