Online Knowledge-Based Model for Big Data Topic Extraction

16Citations
Citations of this article
38Readers
Mendeley users who have this article in their library.

Abstract

Lifelong machine learning (LML) models learn with experience maintaining a knowledge-base, without user intervention. Unlike traditional single-domain models they can easily scale up to explore big data. The existing LML models have high data dependency, consume more resources, and do not support streaming data. This paper proposes online LML model (OAMC) to support streaming data with reduced data dependency. With engineering the knowledge-base and introducing new knowledge features the learning pattern of the model is improved for data arriving in pieces. OAMC improves accuracy as topic coherence by 7% for streaming data while reducing the processing cost to half.

References Powered by Scopus

Probabilistic latent semantic indexing

4290Citations
N/AReaders
Get full text

Self-taught learning: Transfer learning from unlabeled data

1151Citations
N/AReaders
Get full text

Topic sentiment mixture: Modeling facets and opinions in weblogs

646Citations
N/AReaders
Get full text

Cited by Powered by Scopus

Topic Modeling Using Latent Dirichlet allocation: A Survey

129Citations
N/AReaders
Get full text

A three-way approach for learning rules in automatic knowledge-based topic models

21Citations
N/AReaders
Get full text

A crowdsourcing-based topic model for service matchmaking in Internet of Things

16Citations
N/AReaders
Get full text

Register to see more suggestions

Mendeley helps you to discover research relevant for your work.

Already have an account?

Cite

CITATION STYLE

APA

Khan, M. T., Durrani, M., Khalid, S., & Aziz, F. (2016). Online Knowledge-Based Model for Big Data Topic Extraction. Computational Intelligence and Neuroscience, 2016. https://doi.org/10.1155/2016/6081804

Readers over time

‘16‘17‘18‘19‘20‘21‘22‘24036912

Readers' Seniority

Tooltip

PhD / Post grad / Masters / Doc 14

54%

Researcher 7

27%

Professor / Associate Prof. 3

12%

Lecturer / Post doc 2

8%

Readers' Discipline

Tooltip

Computer Science 14

58%

Engineering 4

17%

Medicine and Dentistry 4

17%

Social Sciences 2

8%

Save time finding and organizing research with Mendeley

Sign up for free
0