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Top-k sentiment analysis over spatio-temporal data.
Abdulaziz Almaslukh1, Aisha Almaalwy1, Nasser Allheeib1
1Department of Information Systems, College of Computer and Information Sciences, King Saud University, Riyadh, Saudi Arabia.
This study introduces an efficient framework for analyzing social media sentiment, speeding up searches for location-based, time-sensitive public opinion on platforms like X (formerly Twitter). The new query method improves search times tenfold.
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Area of Science:
- Social Media Analysis
- Natural Language Processing
- Data Mining
Background:
- Social media platforms like X (formerly Twitter) generate vast amounts of data suitable for sentiment analysis.
- Existing sentiment analysis often incorporates spatial and temporal dimensions for precision.
- A need exists for faster, location-specific sentiment analysis of recent social media posts.
Purpose of the Study:
- To develop a general framework for data indexing and search queries to simplify and accelerate sentiment analysis of social media data.
- To enhance spatial-temporal data analysis with sentiment classification.
- To enable efficient retrieval of recent top-k tweets based on location and sentiment.
Main Methods:
- Proposed a novel search query extending fundamental spatial distance queries.
- Integrated sentiment analysis to classify temporal data as positive, negative, or neutral.
- Operated the query on an indexed dataset for efficient processing.
Main Results:
- The proposed query demonstrated over a tenfold improvement in query time compared to baseline methods.
- Performance was evaluated across various parameters including top-k, query distance, and keyword count.
- The framework effectively simplifies the search process for location-based sentiment analysis.
Conclusions:
- The developed framework significantly enhances the efficiency of searching and analyzing sentiment in spatial-temporal social media data.
- This approach facilitates a better understanding of public opinion by providing faster access to relevant, localized sentiment information.
- The query extension offers a scalable solution for real-time sentiment analysis on large social media datasets.