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Aspect-oriented analytics of big data. / Ali, No'aman M.

In: CEUR Workshop Proceedings, Vol. 2620, 01.01.2020, p. 41-48.

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Harvard

Ali, NM 2020, 'Aspect-oriented analytics of big data', CEUR Workshop Proceedings, vol. 2620, pp. 41-48.

APA

Ali, N. M. (2020). Aspect-oriented analytics of big data. CEUR Workshop Proceedings, 2620, 41-48.

Vancouver

Ali NM. Aspect-oriented analytics of big data. CEUR Workshop Proceedings. 2020 Jan 1;2620:41-48.

Author

Ali, No'aman M. / Aspect-oriented analytics of big data. In: CEUR Workshop Proceedings. 2020 ; Vol. 2620. pp. 41-48.

BibTeX

@article{e4116403e67a47d9a18f0cf8fb10c4c6,
title = "Aspect-oriented analytics of big data",
abstract = "Social media platforms are one of the most significant contributors to big data; it enables consumers to provide their views or opinions about products and services. These abundant reviews contain substantial and valuable knowledge and have become a significant resource for both consumers and firms. Therefore, enterprises seek realtime insights and relevant information on how the market responds to products and services. The proposed framework employs the sentiment analysis and aspect-based sentiment analysis in parallel to customer reviews to support decision-makers regarding Marketing and Manufacturing domains. Our proposal presents a multilayer classifier for consumers' reviews. The first layer is used to categorize reviews into the aspect and non-aspect classes. The second layer is used to break every review involved in the aspect-based category into opinion units based on the product aspects. Next, we plan to measure the polarity of the reviews and opinion units. Finally, we plan to visualize the results in the form of domain-oriented reports. Also, we present a description of the testing and evaluation criteria.",
keywords = "Aspect-based sentiment analysis, Big data analytics, Decision making, Sentiment analysis",
author = "Ali, {No'aman M.}",
year = "2020",
month = jan,
day = "1",
language = "English",
volume = "2620",
pages = "41--48",
journal = "CEUR Workshop Proceedings",
issn = "1613-0073",
publisher = "RWTH Aahen University",
note = "14th Joint International Baltic Conference on Databases and Information Systems Forum and Doctoral Consortium, Baltic-DB and IS-Forum-DC 2020 ; Conference date: 16-06-2020 Through 19-06-2020",

}

RIS

TY - JOUR

T1 - Aspect-oriented analytics of big data

AU - Ali, No'aman M.

PY - 2020/1/1

Y1 - 2020/1/1

N2 - Social media platforms are one of the most significant contributors to big data; it enables consumers to provide their views or opinions about products and services. These abundant reviews contain substantial and valuable knowledge and have become a significant resource for both consumers and firms. Therefore, enterprises seek realtime insights and relevant information on how the market responds to products and services. The proposed framework employs the sentiment analysis and aspect-based sentiment analysis in parallel to customer reviews to support decision-makers regarding Marketing and Manufacturing domains. Our proposal presents a multilayer classifier for consumers' reviews. The first layer is used to categorize reviews into the aspect and non-aspect classes. The second layer is used to break every review involved in the aspect-based category into opinion units based on the product aspects. Next, we plan to measure the polarity of the reviews and opinion units. Finally, we plan to visualize the results in the form of domain-oriented reports. Also, we present a description of the testing and evaluation criteria.

AB - Social media platforms are one of the most significant contributors to big data; it enables consumers to provide their views or opinions about products and services. These abundant reviews contain substantial and valuable knowledge and have become a significant resource for both consumers and firms. Therefore, enterprises seek realtime insights and relevant information on how the market responds to products and services. The proposed framework employs the sentiment analysis and aspect-based sentiment analysis in parallel to customer reviews to support decision-makers regarding Marketing and Manufacturing domains. Our proposal presents a multilayer classifier for consumers' reviews. The first layer is used to categorize reviews into the aspect and non-aspect classes. The second layer is used to break every review involved in the aspect-based category into opinion units based on the product aspects. Next, we plan to measure the polarity of the reviews and opinion units. Finally, we plan to visualize the results in the form of domain-oriented reports. Also, we present a description of the testing and evaluation criteria.

KW - Aspect-based sentiment analysis

KW - Big data analytics

KW - Decision making

KW - Sentiment analysis

UR - http://www.scopus.com/inward/record.url?scp=85089522994&partnerID=8YFLogxK

M3 - Conference article

AN - SCOPUS:85089522994

VL - 2620

SP - 41

EP - 48

JO - CEUR Workshop Proceedings

JF - CEUR Workshop Proceedings

SN - 1613-0073

T2 - 14th Joint International Baltic Conference on Databases and Information Systems Forum and Doctoral Consortium, Baltic-DB and IS-Forum-DC 2020

Y2 - 16 June 2020 through 19 June 2020

ER -

ID: 61463090