Innovative Solutions for Pervasive Sentiment Analysis
A special issue of Electronics (ISSN 2079-9292). This special issue belongs to the section "Computer Science & Engineering".
Deadline for manuscript submissions: closed (31 December 2022) | Viewed by 7673
Special Issue Editors
Interests: artificial intelligence and machine learning; embedded systems; embedded machine learning; convolutional neural networks; extreme learning machine; sentiment analysis
Interests: sentiment analysis; opinion mining; recommendation systems; commonsense reasoning; dialogue systems; sarcasm detection; personality recognition; natural language-based financial advice
Special Issue Information
Dear Colleagues,
Pervasive electronics provide an enabling technology supporting intelligent processing systems. The availability of distributed sensing and smart devices is changing the way we approach problems. Sentiment analysis is a landmark example due to its inherent complexity. Researchers traditionally approached this problem using text data; now, we have text, images, videos, audio information, biomedical data, information about the user's position, and data from smart devices. This information can boost sentiment analysis tools, opening up new scenarios.
The effective performance of sentiment analysis depends on two components: a sensing system that can provide accurate information about the user's state of mind, and an intelligent processing system that can utilize such information. The latter aspect can be addressed by machine learning (ML), which can mine information from data at the expense of intensive computation. In particular, deep learning automates the feature-extraction process. Then, new sources of information provided by sensors can be exploited with limited human intervention. However, the amount of data is such that server-based solutions are not enough. Distributed computing solutions overcome the limitation imposed by the server-based computing paradigm by splitting the computational load into nodes that range from servers to embedded systems. The development of this eld necessarily passes through the use of software–hardware co-design.
Using embedded systems to process new data sources is indeed becoming a requirement for building the next generation of sentiment analysis systems. On the other hand, given the constraints imposed by embedded devices in terms of power consumption, latency, size, and cost, the deployment of an ML model on an embedded system poses major challenges. The main goal is to prompt frame-efficient inference functions that can run on resource-constrained edge devices. Under such a paradigm, training might, in principle, be demanded for a different, more powerful platforms. A more demanding goal is to be able to complete training on resource-constrained devices.
This Special Issue will focus on software and hardware models and methodologies for sentiment analysis. The aim is to collect the most recent advances in machine learning research for sentiment analysis. Accordingly, the Special Issue welcomes methods and ideas that emphasize the impact of embedded machine learning and novel sensor sources on sentiment analysis technologies and the use of new sensing methods to detect the human state of mind.
The topics of interest for this Special Issue include, but are not limited to:
- Software/hardware techniques for sentiment analysis;
- Sentiment analysis using IoT data;
- Embedded machine learning;
- Low-power inference engines;
- Intelligent sensors;
- Online learning on resource-constrained edge devices;
- Power-efficient machine learning implementations on embedded devices;
- The on-chip training of deep neural networks;
- High-performance, low-power computing for deep learning and computer vision;
- High-performance, low-power computing for deep-learning-based audio and speech processing;
- Machine learning for sentiment-aware autonomous systems.
Dr. Edoardo Ragusa
Prof. Erik Cambria
Guest Editors
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Keywords
- Software/hardware techniques for sentiment analysis
- Sentiment analysis using IoT data
- Embedded machine learning
- Low-power inference engines
- Intelligent sensors
- Online learning on resource-constrained edge devices
- Power-efficient machine learning implementations on embedded devices
- The on-chip training of deep neural networks
- High-performance, low-power computing for deep learning and computer vision
- High-performance, low-power computing for deep-learning-based audio and speech processing
- Machine learning for sentiment-aware autonomous systems
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