Decision Making from Streaming Data
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Date
2024-06
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Indian Statistical Institute, Kolkata
Abstract
In a crowdsourcing environment, judgment analysis involves gathering opinions
from a diverse online crowd to reach a consensus. Traditional methods work
onlywhenall opinions are available fromthe start. Our goal is to develop amethod
for judgment analysis that works as opinions stream in. This dissertation is divided
into two parts, each focusing on judgment analysis in a crowdsourcing environment.
In the first chapter, we treat all questions and annotators as having
equal weight. In the second chapter, we consider different weights for both questions
and annotators to make final decisions.We present the first algorithm capable
of analyzing crowdsourced opinions in real-time. Tested on two datasets, our
method achieves accuracy close to majority voting while requiring only a small
amount of space. In the second algorithm We tested it on two datasets, showing
it matches the accuracy of majority voting and uses minimal space. This work
advances judgment analysis in crowdsourcing, providing a more reliable solution
than first for real-time decision-making with online crowdsourced opinions
Description
Dissertation under the supervision of Dr. Malay Bhattacharyya
Keywords
Streaming Data, Opinion Streams, WVSCM Dataset
Citation
40p.
