Abstract:
Spamming is emerging as a key threat to the Internet of Things (IoT)-based social media applications. It will pose serious security threats to the IoT cyberspace. To this...Show MoreMetadata
Abstract:
Spamming is emerging as a key threat to the Internet of Things (IoT)-based social media applications. It will pose serious security threats to the IoT cyberspace. To this end, artificial intelligence-based detection and identification techniques have been widely investigated. The literature works on IoT cyberspace can be categorized into two categories: 1) behavior pattern-based approaches and 2) semantic pattern-based approaches. However, they are unable to effectively handle concealed, complicated, and changing spamming activities, especially in the highly uncertain environment of the IoT. To address this challenge, in this article, we exploit the collaborative awareness of both patterns, and propose a Collaborative neural network-based spammer detection mechanism (Co-Spam) in social media applications. In particular, it introduces multisource information fusion by collaboratively encoding long-term behavioral and semantic patterns. Hence, a more comprehensive representation of the feature space can be captured for further spammer detection. Empirically, we implement a series of experiments on two real-world data sets under different scenarios and parameter settings. The efficiency of the proposed Co-Spam is compared with five baselines with respect to several evaluation metrics. The experimental results indicate that the Co-Spam has an average performance improvement of approximately 5% compared to the baselines.
Published in: IEEE Internet of Things Journal ( Volume: 8, Issue: 12, 15 June 2021)
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- IEEE Keywords
- Index Terms
- Neural Network ,
- Internet Of Things ,
- Social Media ,
- Behavioral Patterns ,
- Feature Space ,
- Real-world Datasets ,
- Social Media Applications ,
- Semantic Approach ,
- Semantic Patterns ,
- Awareness Of Patterns ,
- Weight Matrix ,
- Long Short-term Memory ,
- Sequence Features ,
- Semantic Features ,
- Hidden State ,
- Graph Convolutional Network ,
- Personality Profiles ,
- Bias Parameter ,
- Internet Of Things Applications ,
- Hidden Vector ,
- Long Short-term Memory Model ,
- Latent Dirichlet Allocation ,
- Bias Vector ,
- Graph Convolutional Network Model ,
- Speech Content ,
- Weight Bias ,
- Dimensional Attributes ,
- Semantic Model ,
- Hidden State Vector
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Neural Network ,
- Internet Of Things ,
- Social Media ,
- Behavioral Patterns ,
- Feature Space ,
- Real-world Datasets ,
- Social Media Applications ,
- Semantic Approach ,
- Semantic Patterns ,
- Awareness Of Patterns ,
- Weight Matrix ,
- Long Short-term Memory ,
- Sequence Features ,
- Semantic Features ,
- Hidden State ,
- Graph Convolutional Network ,
- Personality Profiles ,
- Bias Parameter ,
- Internet Of Things Applications ,
- Hidden Vector ,
- Long Short-term Memory Model ,
- Latent Dirichlet Allocation ,
- Bias Vector ,
- Graph Convolutional Network Model ,
- Speech Content ,
- Weight Bias ,
- Dimensional Attributes ,
- Semantic Model ,
- Hidden State Vector
- Author Keywords