SARASWITA, ELZA FITRIANA and Rini, Dian Palupi and Abdiansah, Abdiansah (2021) ANALISIS SENTIMEN E-WALLET DI TWITTER MENGGUNAKAN SUPPORT VECTOR MACHINE DAN RECURSIVE FEATURE ELIMINATION. Master thesis, Sriwijaya University.
Text
RAMA_55101_09042621923002.pdf - Accepted Version Restricted to Repository staff only Available under License Creative Commons Public Domain Dedication. Download (1MB) | Request a copy |
|
Text
RAMA_55101_09042621923002_TURNITIN.pdf - Accepted Version Restricted to Repository staff only Available under License Creative Commons Public Domain Dedication. Download (4MB) | Request a copy |
|
Preview |
Text
RAMA_55101_09042621923002_0023027804_0001108401_01_front_ref.pdf - Accepted Version Available under License Creative Commons Public Domain Dedication. Download (572kB) | Preview |
Text
RAMA_55101_09042621923002_0023027804_0001108401_02.pdf - Accepted Version Restricted to Repository staff only Available under License Creative Commons Public Domain Dedication. Download (424kB) | Request a copy |
|
Text
RAMA_55101_09042621923002_0023027804_0001108401_03.pdf - Accepted Version Restricted to Repository staff only Available under License Creative Commons Public Domain Dedication. Download (916kB) | Request a copy |
|
Text
RAMA_55101_09042621923002_0023027804_0001108401_04.pdf - Accepted Version Restricted to Repository staff only Available under License Creative Commons Public Domain Dedication. Download (547kB) | Request a copy |
|
Text
RAMA_55101_09042621923002_0023027804_0001108401_05.pdf - Accepted Version Restricted to Repository staff only Available under License Creative Commons Public Domain Dedication. Download (126kB) | Request a copy |
|
Text
RAMA_55101_09042621923002_0023027804_0001108401_06_ref.pdf - Bibliography Restricted to Repository staff only Available under License Creative Commons Public Domain Dedication. Download (185kB) | Request a copy |
|
Text
RAMA_55101_09042621923002_0023027804_0001108401_07_lamp.pdf - Accepted Version Restricted to Repository staff only Available under License Creative Commons Public Domain Dedication. Download (94kB) | Request a copy |
Abstract
Grouping of positive or negative sentiments in text reviews is increasingly being done automatically for identification. The selection of features in the classification is a problem that is often not solved. Most of the feature selection related to sentiment classification techniques is insurmountable in terms of evaluating significant features that reduce classification performance. Good feature selection technique can improve sentiment classification performance in machine learning approach. First, two sets of customer review data are labeled with sentiment and then retrieved, processed for evaluation. Next, the supports vector machine (svm-rfe) method is created and tested on the dataset. Svm-rfe will be run to measure the importance of the feature by rating the feature iteratively. For sentiment classification, only the top features of the ranking feature sequence will be used. Finally, performance is measured using accuracy, precision, recall, and f1-score. The experimental results show promising performance with an accuracy rate of 81%. This level of reduction is significant in making optimal use of computing resources while maintaining the efficiency of classification performance.
Item Type: | Thesis (Master) |
---|---|
Uncontrolled Keywords: | Supports Vector Machine, Sentiment Analysis, Machine Learning, Twitter, Classification |
Subjects: | Q Science > Q Science (General) > Q1-295 General |
Divisions: | 09-Faculty of Computer Science > 55101-Informatics (S2) |
Depositing User: | Elza Fitriana Saraswita |
Date Deposited: | 23 Sep 2021 07:36 |
Last Modified: | 23 Sep 2021 07:36 |
URI: | http://repository.unsri.ac.id/id/eprint/54677 |
Actions (login required)
View Item |