Artificial Intelligence and Sentiment Analysis: A Review in Competitive Research
Abstract
:1. Introduction
2. Background of the Study
2.1. Competitive Research
2.2. Sentiment Analysis
2.3. AI
3. Research Methodology
3.1. Review Planning
3.2. Research Strategy
4. Results and Discussion
Selection Results
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Key Terminology | Inclusion Criteria | Exclusion Criteria |
---|---|---|
“AI” AND “Sentiment Analysis”, AND “Competitive” OR “Business” OR “Market” OR “Customer” OR “Product” OR “Service”. | 1. The publication of research may occur at any time between 2012 and 2022. | 1. The deletion of articles in press. |
“Artificial Intelligence” AND “Sentiment Analysis”, AND “Competitive” OR “Business” OR “Market” OR “Customer” OR “Product” OR “Service”. | 2. The scope of the study is limited to the journal. | 2. Articles not written in English |
“Machine Learning” AND “Sentiment Analysis”, AND “Competitive” OR “Business” OR “Market” OR “Customer” OR “Product” OR “Service”. | ||
“Deep Learning” AND “Sentiment Analysis”, AND “Competitive” OR “Business” OR “Market” OR “Customer” OR “Product” OR “Service”. | ||
“Artificial Intelligence” AND “Sentiment Analysis” | ||
“AI” AND “Sentiment Analysis” |
Keyword (s) | NO. |
---|---|
Sentiment Analysis | 32 |
Deep Learning | 19 |
Machine Learning | 16 |
Artificial Intelligence, Learning Algorithms | 8 |
Natural Language Processing, Social Networking (online) | 7 |
Data Mining, Feature Extraction | 6 |
Convolutional Neural Network, Learning Systems | 5 |
Article, Commerce, Convolutional, Neural Networks, Electronic Commerce, Human, Machine-learning, Social Aspects, Social Media, Twitter | 4 |
COVID-19, Customer Satisfaction, Extraction, Long Short-term Memory, Neural Networks, Public Sentiments, Quality Control, Recurrent Neural Networks, Sales, Support Vector Machines | 3 |
Algorithm, Algorithms, Artificial Intelligence Techniques, Attention Mechanisms, CNN, Commercial Phenomena, Convolutional Neural Networks (CNN), Customer Review, Data Mining And Machine Learning, E-commerce Websites, E-learning, Emotion Analysis, Financial Markets, Humans, LSTM, Large Dataset, Learning Approach, Learning Technology, Naive Bayes, Natural Language And Speech, Natural Languages, Natural Speech, Online Social Network, Pandemic, Pandemics, Product Reviews, Products And Services, Public Opinions, QoE, Recurrent Neural Network (RNN), Sensing, Sentimental Analysis, Telecommunication Services | 2 |
AI And Risk, AI Technologies, API Crawler, Accuracy, Acoustic, Activation Analysis, Activation Functions, Algorithm And Analyse Of Algorithm, Algorithms And Analysis Of Algorithms, Analysis Algorithms, Analysis Of Algorithms, Analysis Strategies, Antennas, Area Of Interest, Artificial Intelligence (AI), Artificial Intelligence Of Things, Artificial Intelligence Technologies, Artificial Intelligence Tools, Arts Computing, Aspects, Attention, Attention Mechanism, Base Stations, Bat Algorithm, Bat Algorithm (BA), Beauty Products, Behavioral Research, Bert, Bi-directional, BiGRU, Bidirectional GRU, Big Data, Big Data Analytics, Bipolar Words, Brain, Business Application, Business Applications, Business Boosting, Business Decisions, Business Economy, Business Intelligence, Business Performance, CRISP-DM, Character Error Rate, Classification (of Information), Clustering And Classification, Colombia, Competition, Computer Vision, Consumer Reviews, Consumer Satisfactions, Convolution, Convolution Neural Network (cnn), Coronavirus, Coronavirus Disease 2019, Coronavirus Infection, Coronavirus Infections, Corporate Social Responsibilities (CSR), Corporate Social Responsibility, Cosmetics, Cost Effectiveness, Costs, Crisis, Crisis Management, Customer Reviews, Data Analytics, Data Augmentation, Data Collection, Data Fusion, Data Handling, Data Science, Decision Support System, Decision Support Systems, Deep Belief Network, Deep Belief Networks, Deep Learning (dl), Deep Neural Networks, Deep Reinforcement Learning, Delivery Of Health Care, Depression, Different Sizes, Digital Health, Distributed Machine Learning, E-commerce Domains, E-commerce Product Reviews, E-commerce Services, Economic Aspect, Economics, Electronic Trading, Elman Neural Network, Elman Neural Network (ENN), Embedding Models, Embeddings, Emoji, Emoticons & Emojis, Emotion, Emotion AI | 1 |
System | Year | Document Type | Cited by | Reference |
---|---|---|---|---|
Chinese e-commerce product review sentiment analysis using deep learning and sentiment lexicon | 2020 | Article | 145 | [33] |
Implementation of AI to social network analysis of COVID-19 emotions | 2020 | Article | 98 | [34] |
Customer sentiment analysis based on machine learning for suggesting buyers and stores based on customer reviews | 2020 | Article | 44 | [35] |
Analysis of facial sentiment using AI techniques | 2020 | Article | 43 | [36] |
A sentiment analysis of online product evaluations using machine learning with a new term weighting and feature selection technique | 2021 | Article | 37 | [37] |
Sentiment analysis and data extraction of halal products on Twitter using a stack of deep learning algorithms | 2019 | Article | 33 | [38] |
A deep learning approach to sentiment analysis in Spanish for the improvement of services and products | 2017 | Article | 32 | [39] |
Aspect-level sentiment analysis based on machine learning for Amazon items | 2020 | Article | 28 | [40] |
Emotional AI-based sentiment analysis | 2019 | Review | 27 | [41] |
Deep learning for social media sentiment research to improve stock market forecasting | 2021 | Article | 21 | [42] |
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Taherdoost, H.; Madanchian, M. Artificial Intelligence and Sentiment Analysis: A Review in Competitive Research. Computers 2023, 12, 37. https://doi.org/10.3390/computers12020037
Taherdoost H, Madanchian M. Artificial Intelligence and Sentiment Analysis: A Review in Competitive Research. Computers. 2023; 12(2):37. https://doi.org/10.3390/computers12020037
Chicago/Turabian StyleTaherdoost, Hamed, and Mitra Madanchian. 2023. "Artificial Intelligence and Sentiment Analysis: A Review in Competitive Research" Computers 12, no. 2: 37. https://doi.org/10.3390/computers12020037
APA StyleTaherdoost, H., & Madanchian, M. (2023). Artificial Intelligence and Sentiment Analysis: A Review in Competitive Research. Computers, 12(2), 37. https://doi.org/10.3390/computers12020037