Crowdsourced Labeling for Worker-Task Specialization Block Model

03/21/2020
by   Doyeon Kim, et al.
0

We consider crowdsourced labeling under a worker-task specialization block model, where each worker and task is associated with one particular type among a finite set of types and a worker provides a more reliable answer to tasks of the matched type than to the tasks of unmatched types. We design an inference algorithm that recovers binary task labels (up to any given recovery accuracy) by using worker clustering and weighted majority voting. The designed inference algorithm does not require any information about worker types, task types as well as worker reliability parameters, and achieve any targeted recovery accuracy with the best known performance (minimum number of queries per task) for any parameter regimes.

READ FULL TEXT
research
01/31/2020

Crowdsourced Classification with XOR Queries: Fundamental Limits and An Efficient Algorithm

Crowdsourcing systems have emerged as an effective platform to label dat...
research
02/07/2020

Statistical Inference in Heterogeneous Block Model

There exist various types of network block models such as the Stochastic...
research
10/25/2022

SepLL: Separating Latent Class Labels from Weak Supervision Noise

In the weakly supervised learning paradigm, labeling functions automatic...
research
09/15/2018

Multi-Task Learning for Email Search Ranking with Auxiliary Query Clustering

User information needs vary significantly across different tasks, and th...
research
02/14/2023

A Provably Improved Algorithm for Crowdsourcing with Hard and Easy Tasks

Crowdsourcing is a popular method used to estimate ground-truth labels b...
research
02/23/2016

A Streaming Algorithm for Crowdsourced Data Classification

We propose a streaming algorithm for the binary classification of data b...
research
06/26/2019

Reasoning about Hypothetical Agent Behaviours and their Parameters

Agents can achieve effective interaction with previously unknown other a...

Please sign up or login with your details

Forgot password? Click here to reset