An Improved Study of Multilevel Semantic Network Visualization for Analyzing Sentiment Word of Movie Review Data

This paper suggests a method for refining a massive amount of collective intelligence data and visualizing it with a multilevel sentiment network in order to understand the relevant information in an intuitive and semantic way. This semantic interpretation method minimizes network learning in the system as a fixed network topology only exists as a guideline to help users understand. Furthermore, it does not need to discover every single node to understand the characteristics of each clustering within the network. After extracting and analyzing the sentiment words from the movie review data, we designed a movie network based on the similarities between the words. The network formed in this way will appear as a multilevel sentiment network visualization after the following three steps: (1) design a heatmap visualization to effectively discover the main emotions on each movie review; (2) create a two-dimensional multidimensional scaling (MDS) map of semantic word data to facilitate semantic understanding of network and then fix the movie network topology on the map; (3) create an asterism graphic with emotions to allow users to easily interpret node groups with similar sentiment words. The research also presents a virtual scenario about how our network visualization can be used as a movie recommendation system. We next evaluated our progress to determine whether it would improve user cognition for multilevel analysis experience compared to the existing network system. Results showed that our method provided improved user experience in terms of cognition. Thus, it is appropriate as an alternative method for semantic understanding.

[1]  Jihye Lee,et al.  Visualization of movie recommendation system using the sentimental vocabulary distribution map , 2016 .

[2]  Gary Marchionini,et al.  A Conceptual Framework for Text Filtering , 1996 .

[3]  Andreas Kerren,et al.  The State of the Art in Sentiment Visualization , 2018, Comput. Graph. Forum.

[4]  Yang Liu,et al.  Intertrochanteric fracture visualization and analysis using a map projection technique , 2018, Medical & Biological Engineering & Computing.

[5]  Jean-Daniel Fekete,et al.  Improving the Readability of Clustered Social Networks using Node Duplication , 2008, IEEE Transactions on Visualization and Computer Graphics.

[6]  Dongwon Lim,et al.  Personal Information Overload and User Resistance in the Big Data Age , 2013 .

[7]  Download Book,et al.  Information Visualization in Data Mining and Knowledge Discovery , 2001 .

[8]  H. Keselman,et al.  Parametric Alternatives to the Analysis of Variance , 1982 .

[9]  Ben Shneiderman,et al.  Motif simplification: improving network visualization readability with fan, connector, and clique glyphs , 2013, CHI.

[10]  Uzay Kaymak,et al.  Visualizing the Computational Intelligence Field , 2006 .

[11]  Cecilia R. Aragon,et al.  Toward the operationalization of visual metaphor , 2017, J. Assoc. Inf. Sci. Technol..

[12]  Bhargav Srinivasa Desikan,et al.  Natural Language Processing and Computational Linguistics , 2018 .

[13]  Kyungwon Lee,et al.  A Study on Analysis of Affective Words in Movie Reviews and the Situation of Watching Movies , 2013 .

[14]  Yasunori Fujikoshi,et al.  Two-way ANOVA models with unbalanced data , 1993, Discret. Math..

[15]  Monther Aldwairi,et al.  Recommender System Through Sentiment Analysis , 2017 .

[16]  Ben Shneiderman,et al.  NetVisia: Heat Map & Matrix Visualization of Dynamic Social Network Statistics & Content , 2011, 2011 IEEE Third Int'l Conference on Privacy, Security, Risk and Trust and 2011 IEEE Third Int'l Conference on Social Computing.

[17]  John Riedl,et al.  Item-based collaborative filtering recommendation algorithms , 2001, WWW '01.

[18]  Wolfgang Reinhardt,et al.  Artefact-Actor-Networks as tie between social networks and artefact networks , 2009, 2009 5th International Conference on Collaborative Computing: Networking, Applications and Worksharing.

[19]  G. Bortolotti,et al.  VARIATION IN CAROTENOID-BASED COLOR IN NORTHERN FLICKERS IN A HYBRID ZONE , 2002 .

[20]  Sunyeong Park,et al.  Visualization of Movie Recommender System using Distribution Maps , 2012 .

[21]  Ben Shneiderman,et al.  Network Visualization by Semantic Substrates , 2006, IEEE Transactions on Visualization and Computer Graphics.

[22]  J. H. Park,et al.  Visualisation of efficiency coverage and energy consumption of sensors in wireless sensor networks using heat map , 2011, IET Commun..

[23]  Leland Wilkinson,et al.  The History of the Cluster Heat Map , 2009 .

[24]  Hongliang Yu,et al.  Identifying Sentiment Words Using an Optimization Model with L1 Regularization , 2016, AAAI.

[25]  Edward M. Reingold,et al.  Graph drawing by force‐directed placement , 1991, Softw. Pract. Exp..

[26]  Kyungwon Lee,et al.  CosMovis: Analyzing semantic network of sentiment words in movie reviews , 2014, 2014 IEEE 4th Symposium on Large Data Analysis and Visualization (LDAV).

[27]  Samarth Swarup,et al.  Semantic network analysis of vaccine sentiment in online social media , 2017 .

[28]  Baejeong-Shin,et al.  Semantic Network Analysis of 'Real Estate' , 2014 .

[29]  John S. Risch On the role of metaphor in information visualization , 2008, ArXiv.

[30]  Osmar R. Zaïane,et al.  Current State of Text Sentiment Analysis from Opinion to Emotion Mining , 2017, ACM Comput. Surv..

[31]  Daniel A. Keim,et al.  Visual sentiment analysis on twitter data streams , 2011, 2011 IEEE Conference on Visual Analytics Science and Technology (VAST).

[32]  Kyungwon Lee,et al.  CosMovis: Semantic Network Visualization by Using Sentiment Words of Movie Review Data , 2015, 2015 19th International Conference on Information Visualisation.

[33]  Sebastien Heymann,et al.  Knot: an interface for the study of social networks in the humanities , 2013, CHItaly '13.

[34]  S. Yamada,et al.  A movie recommender system based on inductive learning , 2004, IEEE Conference on Cybernetics and Intelligent Systems, 2004..

[35]  S. Edgell,et al.  Effect of violation of normality on the t test of the correlation coefficient. , 1984 .