Araştırma Makalesi

A new plant intelligence-based method for sentiment analysis: Chaotic sunflower optimization

Cilt: IDAP-2021 : 5th International Artificial Intelligence and Data Processing symposium Sayı: Special 20 Ekim 2021
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A new plant intelligence-based method for sentiment analysis: Chaotic sunflower optimization

Öz

Various social networking applications provide people with many opportunities such as expressing, commenting, disseminating and transmitting their opinions within certain limits. The emotions and ideas that people express in their messages make sense of thousands of articles and opinions published instantly. Trying to make sense of emotional data, generating meaningful information from these data, analyzing these data, and making predictions and inferences on these data is a new important study field. In this study, sentiment analysis is considered an optimization problem in order to achieve high performance. For this purpose, sunflower optimization, which is one of the new and successful plant intelligence-based algorithms, has been modelled as a sentiment analyzer for the first time. A chaotic sunflower optimization algorithm was used by combining sunflower optimization and chaos theory in order to make effective sentiment analysis. In order for the proposed method to effectively solve the sentiment analysis problem, a suitable representation form and fitness function have been proposed. The proposed method treats the data as a search space and searches for a solution for analysis by detecting emotion in this search space. An up-to-date data set including customer feedback and satisfaction information was used in the study. Results based on accuracy, precision, and recall metrics show that plant intelligence-based metaheuristic algorithms can provide high performance.

Anahtar Kelimeler

Kaynakça

  1. Abdu S, Yousef A, Salem A (2021) Multimodal Video Sentiment Analysis Using Deep Learning Approaches, a Survey. Information Fusion 76:204-226.
  2. Akyol S, Alatas B (2020) Sentiment classification within online social media using whale optimization algorithm and social impact theory based optimization. Physica A: Statistical Mechanics and its Applications 540:123094.
  3. Alam MH, Ryu WJ, Lee S (2016) Joint multi-grain topic sentiment: modeling semantic aspects for online reviews. Information Sciences 339:206–223.
  4. Al-Twairesh N, Al-Nagheimish H (2019) Surface and Deep Features Ensemble for Sentiment Analysis of Arabic Tweets. IEEE Access 7:84122-84131.
  5. Aziz A, Starkey A (2020) Predicting Supervise Machine Learning Performances for Sentiment Analysis Using Contextual-Based Approaches. IEEE Access 8:17722-17733.
  6. Basiri ME, Nemati S, Abdar M, Asadi S, Acharrya UR (2021) A novel fusion-based deep learning model for sentiment analysis of COVID-19 tweets. Knowledge-Based Systems 228:107242.
  7. Birjali M, Kasri M, Beni-Hssane A (2021) A comprehensive survey on sentiment analysis: Approaches, challenges and trends. Knowledge-Based Systems 226:107134.
  8. Carosia AE, Coelho GP, Silva AE (2021) Investment strategies applied to the Brazilian stock market: A methodology based on Sentiment Analysis with deep learning. Expert Systems with Applications 184:115470.

Ayrıntılar

Birincil Dil

İngilizce

Konular

Yapay Zeka

Bölüm

Araştırma Makalesi

Yayımlanma Tarihi

20 Ekim 2021

Gönderilme Tarihi

6 Eylül 2021

Kabul Tarihi

16 Eylül 2021

Yayımlandığı Sayı

Yıl 2021 Cilt: IDAP-2021 : 5th International Artificial Intelligence and Data Processing symposium Sayı: Special

Kaynak Göster

APA
Yıldırım, S., Yıldırım, G., & Alatas, B. (2021). A new plant intelligence-based method for sentiment analysis: Chaotic sunflower optimization. Computer Science, IDAP-2021 : 5th International Artificial Intelligence and Data Processing symposium(Special), 35-40. https://doi.org/10.53070/bbd.991715
AMA
1.Yıldırım S, Yıldırım G, Alatas B. A new plant intelligence-based method for sentiment analysis: Chaotic sunflower optimization. JCS. 2021;IDAP-2021 : 5th International Artificial Intelligence and Data Processing symposium(Special):35-40. doi:10.53070/bbd.991715
Chicago
Yıldırım, Suna, Güngör Yıldırım, ve Bilal Alatas. 2021. “A new plant intelligence-based method for sentiment analysis: Chaotic sunflower optimization”. Computer Science IDAP-2021 : 5th International Artificial Intelligence and Data Processing symposium (Special): 35-40. https://doi.org/10.53070/bbd.991715.
EndNote
Yıldırım S, Yıldırım G, Alatas B (01 Ekim 2021) A new plant intelligence-based method for sentiment analysis: Chaotic sunflower optimization. Computer Science IDAP-2021 : 5th International Artificial Intelligence and Data Processing symposium Special 35–40.
IEEE
[1]S. Yıldırım, G. Yıldırım, ve B. Alatas, “A new plant intelligence-based method for sentiment analysis: Chaotic sunflower optimization”, JCS, c. IDAP-2021 : 5th International Artificial Intelligence and Data Processing symposium, sy Special, ss. 35–40, Eki. 2021, doi: 10.53070/bbd.991715.
ISNAD
Yıldırım, Suna - Yıldırım, Güngör - Alatas, Bilal. “A new plant intelligence-based method for sentiment analysis: Chaotic sunflower optimization”. Computer Science IDAP-2021 : 5TH INTERNATIONAL ARTIFICIAL INTELLIGENCE AND DATA PROCESSING SYMPOSIUM/Special (01 Ekim 2021): 35-40. https://doi.org/10.53070/bbd.991715.
JAMA
1.Yıldırım S, Yıldırım G, Alatas B. A new plant intelligence-based method for sentiment analysis: Chaotic sunflower optimization. JCS. 2021;IDAP-2021 : 5th International Artificial Intelligence and Data Processing symposium:35–40.
MLA
Yıldırım, Suna, vd. “A new plant intelligence-based method for sentiment analysis: Chaotic sunflower optimization”. Computer Science, c. IDAP-2021 : 5th International Artificial Intelligence and Data Processing symposium, sy Special, Ekim 2021, ss. 35-40, doi:10.53070/bbd.991715.
Vancouver
1.Suna Yıldırım, Güngör Yıldırım, Bilal Alatas. A new plant intelligence-based method for sentiment analysis: Chaotic sunflower optimization. JCS. 01 Ekim 2021;IDAP-2021 : 5th International Artificial Intelligence and Data Processing symposium(Special):35-40. doi:10.53070/bbd.991715

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