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2019 | Buch

Visual and Text Sentiment Analysis through Hierarchical Deep Learning Networks

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Über dieses Buch

This book presents the latest research on hierarchical deep learning for multi-modal sentiment analysis. Further, it analyses sentiments in Twitter blogs from both textual and visual content using hierarchical deep learning networks: hierarchical gated feedback recurrent neural networks (HGFRNNs). Several studies on deep learning have been conducted to date, but most of the current methods focus on either only textual content, or only visual content. In contrast, the proposed sentiment analysis model can be applied to any social blog dataset, making the book highly beneficial for postgraduate students and researchers in deep learning and sentiment analysis.

The mathematical abstraction of the sentiment analysis model is presented in a very lucid manner. The complete sentiments are analysed by combining text and visual prediction results. The book’s novelty lies in its development of innovative hierarchical recurrent neural networks for analysing sentiments; stacking of multiple recurrent layers by controlling the signal flow from upper recurrent layers to lower layers through a global gating unit; evaluation of HGFRNNs with different types of recurrent units; and adaptive assignment of HGFRNN layers to different timescales. Considering the need to leverage large-scale social multimedia content for sentiment analysis, both state-of-the-art visual and textual sentiment analysis techniques are used for joint visual-textual sentiment analysis. The proposed method yields promising results from Twitter datasets that include both texts and images, which support the theoretical hypothesis.

Inhaltsverzeichnis

Frontmatter
Chapter 1. Introduction
Abstract
Sentiment analysis analyses people’s viewpoints, feelings, assessments, behaviour and psychology towards living and abstract entities. It highlights viewpoints which present positively or negatively biased sentiments.
Arindam Chaudhuri
Chapter 2. Current State of Art
Abstract
There has been a wide array of domains ranging from fast-moving consumer products to political events where sentiment analysis has numerous applications. Several large companies have their own in-built capabilities in this area. These innumerable applications and interests have been the driving source towards sentiment analysis research. Several social networks and microblogs have provided strong platforms for users’ information exchange and communication. The social networks and microblogs provide trillions of pieces of multimodal information.
Arindam Chaudhuri
Chapter 3. Literature Review
Abstract
The analysis of sentiments has been a popular research topic towards social media data processing (Dashtipour et al. in Cogn Comput 8(4):757–771, 2016, [1]). The majority of sentiment analysis research is using the English language, but there is a gradual increase towards the multilingual aspect.
Arindam Chaudhuri
Chapter 5. Visual and Text Sentiment Analysis
Abstract
he information on text has been analysed rigorously in several areas pertaining to business decision-making (Miller et al. in Sentiment flow through hyperlink networks, pp 550–553, 2011, [1]). A tweet for images is shown in Fig. 5.1. The visual information analysis covering information retrieval from images has not made much progress relatively. Several studies have suggested that more than one-third of social blogs’ data are images.
Arindam Chaudhuri
Chapter 6. Experimental Setup: Visual and Text Sentiment Analysis Through Hierarchical Deep Learning Networks
Abstract
The experimental setup consists of performing visual and text sentiment analysis through hierarchical based deep learning networks. A brief discussion on the deep learning networks is presented for the interested readers. The cross-media bag-of-words model (CBM) is used as the baseline method. The basic aspects of the gated feedforward recurrent neural networks (GFRNN) are illustrated. The mathematical abstraction of HGFRNN is vividly explained. The chapter concludes with hierarchical gated feedforward recurrent neural networks for multimodal sentiment analysis.
Arindam Chaudhuri
Chapter 7. Experimental Results
Abstract
The experimental results are highlighted in this chapter using Twitter, Instagram, Viber and Snapchat datasets. HGFRNN is evaluated through 2-class (+ve, −ve) as well as 3-class (+ve, −ve, unbiased) propositions.
Arindam Chaudhuri
Chapter 8. Conclusion
Abstract
In this research, a novel hierarchical GFRNN-based model for analysing sentiments on multimodal content is presented. Giving due consideration for leveraging huge volume of blog contents available towards sentiment analysis, multimodal techniques are utilized here. The learning algorithm of GFRNN is based on different timescales which work as temporal convolution, and it is basically 1D convolution which is similar to 2D spatial convolution.
Arindam Chaudhuri
Backmatter
Metadaten
Titel
Visual and Text Sentiment Analysis through Hierarchical Deep Learning Networks
verfasst von
Dr. Arindam Chaudhuri
Copyright-Jahr
2019
Verlag
Springer Singapore
Electronic ISBN
978-981-13-7474-6
Print ISBN
978-981-13-7473-9
DOI
https://doi.org/10.1007/978-981-13-7474-6

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