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1 – 10 of over 37000
Article
Publication date: 19 May 2022

Jun Liu, Yunyun Yu, Fuad Mehraliyev, Sike Hu and Jiaqi Chen

Despite a significant focus on customer evaluation and sentiment analysis, limited attention has been paid to discrete emotional perspective in terms of the emotionality used in…

1622

Abstract

Purpose

Despite a significant focus on customer evaluation and sentiment analysis, limited attention has been paid to discrete emotional perspective in terms of the emotionality used in text. This paper aims to extend the general-sentiment dictionary in Chinese to a restaurant-domain-specific dictionary, visualize spatiotemporal sentiment trends, identify the main discrete emotions that affect customers’ ratings in a restaurant setting and identify constituents of influential emotions.

Design/methodology/approach

A total of 683,610 online restaurant reviews downloaded from Dianping.com were analyzed by a sentiment dictionary optimized by the authors; the main emotions (joy, love, trust, anger, sadness and surprise) that affect online ratings were explored by using multiple linear regression methods. After tracking these sentiment review texts, Latent Dirichlet Allocation (LDA) and LDA models with term frequency-inverse document frequency as weights were used to find the factors that constitute influential emotions.

Findings

The results show that it is viable to optimize or expand sentiment dictionary by word similarity. The findings highlight that love and anger have the highest effect on online ratings. The main factors that constitute consumers’ anger (local characteristics, incorrect food portions and unobtrusive location) and love (comfortable dining atmosphere, obvious local characteristics and complete supporting services) are identified. Different from previous studies, negativity bias is not observed, which poses a question of whether it has to do with Chinese culture.

Practical implications

These findings can help managers monitor the true quality of restaurant service in an area on time. Based on the results, restaurant operators can better decide which aspects they should pay more attention to; platforms can operate better and can have more manageable webpage settings; and consumers can easily capture the quality of restaurants to make better purchase decisions.

Originality/value

This study builds upon the existing general sentiment dictionary in Chinese and, to the best of the authors’ knowledge, is the first to provide a restaurant-domain-specific sentiment dictionary and use it for analysis. It also reveals the constituents of two prominent emotions (love and anger) in the case of restaurant reviews.

Details

International Journal of Contemporary Hospitality Management, vol. 34 no. 10
Type: Research Article
ISSN: 0959-6119

Keywords

Article
Publication date: 21 April 2023

Samsur Rahaman, Punita Govil, Daud Khan and Tanja D. Jevremov

The emotion regulation research has drawn considerable attention from academicians and scholars in the contemporary world. As a result, the publications that are specifically…

Abstract

Purpose

The emotion regulation research has drawn considerable attention from academicians and scholars in the contemporary world. As a result, the publications that are specifically dedicated to emotion regulation research are rapidly escalating. Therefore, this study aims to conduct a bibliometric analysis of research articles that have been published in the field of “emotion regulation.” The study primarily examines the growth and development of scholarly publications, seminal studies, influential authors, productive journals, research production and collaboration among countries, emerging research themes, research hotspots and thematic evolution of emotion regulation research.

Design/methodology/approach

The Web of Science Core Collection database was used to gather the study’s data, which was then analysed using VOSviewer and Bibliometrix, Biblioshiney open-source package of the R language environment.

Findings

The study’s results reveal that the research on emotion regulation has grown significantly over the last three decades. Notably, Emotion and Frontiers in Psychology are the most dominant and productive journals in the field of emotion regulation research. The most prominent author in the area of emotion regulation is identified as James Gross, followed by Gratz, Wang and Tull. The USA is at the forefront of research on emotion regulation and has collaborated with most of the developed countries like Germany, England and Canada. The keyword analysis revealed that the most potential research areas in the field of emotion regulation are functional magnetic resonance imaging, amygdala, post-traumatic stress disorder, borderline personality disorder, alexithymia, emotion dysregulation, depression, anxiety, functional connectivity, neuroimaging, mindfulness, self-regulation, resilience and coping. The thematic evolution reflects that the research on emotion regulation has recently focused on issues including Covid-19, non-suicidal self-injury, psychological distress, intimate partner violence and mental health.

Originality/value

The results of this study highlighted the current knowledge gaps in emotion regulation research and suggested areas for further investigation. The present study could be useful for researchers, academicians, planners, publishers and universities engaged in emotion regulation research.

Details

Information Discovery and Delivery, vol. 52 no. 1
Type: Research Article
ISSN: 2398-6247

Keywords

Article
Publication date: 12 April 2022

Jun Deng, Chuyi Zhong, Shaodan Sun and Ruan Wang

This paper aims to construct a spatio-temporal emotional framework (STEF) for digital humanities from a quantitative perspective, applying knowledge extraction and mining…

Abstract

Purpose

This paper aims to construct a spatio-temporal emotional framework (STEF) for digital humanities from a quantitative perspective, applying knowledge extraction and mining technology to promote innovation of humanities research paradigm and method.

Design/methodology/approach

The proposed STEF uses methods of information extraction, sentiment analysis and geographic information system to achieve knowledge extraction and mining. STEF integrates time, space and emotional elements to visualize the spatial and temporal evolution of emotions, which thus enriches the analytical paradigm in digital humanities.

Findings

The case study shows that STEF can effectively extract knowledge from unstructured texts in the field of Chinese Qing Dynasty novels. First, STEF introduces the knowledge extraction tools – MARKUS and DocuSky – to profile character entities and perform plots extraction. Second, STEF extracts the characters' emotional evolutionary trajectory from the temporal and spatial perspective. Finally, the study draws a spatio-temporal emotional path figure of the leading characters and integrates the corresponding plots to analyze the causes of emotion fluctuations.

Originality/value

The STEF is constructed based on the “spatio-temporal narrative theory” and “emotional narrative theory”. It is the first framework to integrate elements of time, space and emotion to analyze the emotional evolution trajectories of characters in novels. The execuability and operability of the framework is also verified with a case novel to suggest a new path for quantitative analysis of other novels.

Details

Aslib Journal of Information Management, vol. 74 no. 6
Type: Research Article
ISSN: 2050-3806

Keywords

Article
Publication date: 8 February 2021

Alejandra Segura Navarrete, Claudia Martinez-Araneda, Christian Vidal-Castro and Clemente Rubio-Manzano

This paper aims to describe the process used to create an emotion lexicon enriched with the emotional intensity of words and focuses on improving the emotion analysis process in…

Abstract

Purpose

This paper aims to describe the process used to create an emotion lexicon enriched with the emotional intensity of words and focuses on improving the emotion analysis process in texts.

Design/methodology/approach

The process includes setting, preparation and labelling stages. In the first stage, a lexicon is selected. It must include a translation to the target language and labelling according to Plutchik’s eight emotions. The second stage starts with the validation of the translations. Then, it is expanded with the synonyms of the emotion synsets of each word. In the labelling stage, the similarity of words is calculated and displayed using WordNet similarity.

Findings

The authors’ approach shows better performance to identification of the predominant emotion for the selected corpus. The most relevant is the improvement obtained in the results of the emotion analysis in a hybrid approach compared to the results obtained in a purist approach.

Research limitations/implications

The proposed lexicon can still be enriched by incorporating elements such as emojis, idioms and colloquial expressions.

Practical implications

This work is part of a research project that aids in solving problems in a digital society, such as detecting cyberbullying, abusive language and gender violence in texts or exercising parental control. Detection of depressive states in young people and children is added.

Originality/value

This semi-automatic process can be applied to any language to generate an emotion lexicon. This resource will be available in a software tool that implements a crowdsourcing strategy allowing the intensity to be re-labelled and new words to be automatically incorporated into the lexicon.

Details

The Electronic Library , vol. 39 no. 1
Type: Research Article
ISSN: 0264-0473

Keywords

Article
Publication date: 4 October 2019

Carlos Molina Beltrán, Alejandra Andrea Segura Navarrete, Christian Vidal-Castro, Clemente Rubio-Manzano and Claudia Martínez-Araneda

This paper aims to propose a method for automatically labelling an affective lexicon with intensity values by using the WordNet Similarity (WS) software package with the purpose…

Abstract

Purpose

This paper aims to propose a method for automatically labelling an affective lexicon with intensity values by using the WordNet Similarity (WS) software package with the purpose of improving the results of an affective analysis process, which is relevant to interpreting the textual information that is available in social networks. The hypothesis states that it is possible to improve affective analysis by using a lexicon that is enriched with the intensity values obtained from similarity metrics. Encouraging results were obtained when an affective analysis based on a labelled lexicon was compared with that based on another lexicon without intensity values.

Design/methodology/approach

The authors propose a method for the automatic extraction of the affective intensity values of words using the similarity metrics implemented in WS. First, the intensity values were calculated for words having an affective root in WordNet. Then, to evaluate the effectiveness of the proposal, the results of the affective analysis based on a labelled lexicon were compared to the results of an analysis with and without affective intensity values.

Findings

The main contribution of this research is a method for the automatic extraction of the intensity values of affective words used to enrich a lexicon compared with the manual labelling process. The results obtained from the affective analysis with the new lexicon are encouraging, as they provide a better performance than those achieved using a lexicon without affective intensity values.

Research limitations/implications

Given the restrictions for calculating the similarity between two words, the lexicon labelled with intensity values is a subset of the original lexicon, which means that a large proportion of the words in the corpus are not labelled in the new lexicon.

Practical implications

The practical implications of this work include providing tools to improve the analysis of the feelings of the users of social networks. In particular, it is of interest to provide an affective lexicon that improves attempts to solve the problems of a digital society, such as the detection of cyberbullying. In this case, by achieving greater precision in the detection of emotions, it is possible to detect the roles of participants in a situation of cyberbullying, for example, the bully and victim. Other problems in which the application of affective lexicons is of importance are the detection of aggressiveness against women or gender violence or the detection of depressive states in young people and children.

Social implications

This work is interested in providing an affective lexicon that improves attempts to solve the problems of a digital society, such as the detection of cyberbullying. In this case, by achieving greater precision in the detection of emotions, it is possible to detect the roles of participants in a situation of cyber bullying, for example, the bully and victim. Other problems in which the application of affective lexicons is of importance are the detection of aggressiveness against women or gender violence or the detection of depressive states in young people and children.

Originality/value

The originality of the research lies in the proposed method for automatically labelling the words of an affective lexicon with intensity values by using WS. To date, a lexicon labelled with intensity values has been constructed using the opinions of experts, but that method is more expensive and requires more time than other existing methods. On the other hand, the new method developed herein is applicable to larger lexicons, requires less time and facilitates automatic updating.

Details

The Electronic Library, vol. 37 no. 6
Type: Research Article
ISSN: 0264-0473

Keywords

Article
Publication date: 20 July 2022

Tingting Li, Ziming Zeng, Jingjing Sun and Shouqiang Sun

The deployment of vaccines is the primary task in curbing the COVID-19 pandemic. The purpose of this paper is to understand the public’s opinions on vaccines and then design…

Abstract

Purpose

The deployment of vaccines is the primary task in curbing the COVID-19 pandemic. The purpose of this paper is to understand the public’s opinions on vaccines and then design effective interventions to promote vaccination coverage.

Design/methodology/approach

This paper proposes a research framework based on the spatiotemporal perspective to analyse the public opinion evolution towards COVID-19 vaccine in China. The framework first obtains data through crawler tools. Then, with the help of data mining technologies, such as emotion computing and topic extraction, the evolution characteristics of discussion volume, emotions and topics are explored from spatiotemporal perspectives.

Findings

In the temporal perspective, the public emotion declines in the later stage, but overall emotion performance is positive and stabilizing. This decline in emotion is mainly associated with ambiguous information about the COVID-19 vaccine. The research progress of vaccines and the schedule of vaccination have driven the evolution of public discussion topics. In the spatial perspective, the public emotion tends to be positive in 31 regions, whereas local emotion increases and decreases in different stages. The dissemination of distinctive information and the local epidemic prevention and control status may be potential drivers of topic evolution in local regions.

Originality/value

The analysis results of media information can assist decision-makers to accurately grasp the subjective thoughts and emotional expressions of the public in terms of spatiotemporal perspective and provide decision support for macro-control response strategies and risk communication.

Details

The Electronic Library , vol. 40 no. 4
Type: Research Article
ISSN: 0264-0473

Keywords

Article
Publication date: 22 September 2020

Arghya Ray, Pradip Kumar Bala and Rashmi Jain

Social media channels provide an avenue for expressing views about different services/products. However, unlike merchandise/company websites (where users can post both reviews and…

Abstract

Purpose

Social media channels provide an avenue for expressing views about different services/products. However, unlike merchandise/company websites (where users can post both reviews and ratings), it is not possible to understand user's ratings for a particular service-related comment on social media unless explicitly mentioned. Predicting ratings can be beneficial for service providers and prospective customers. Additionally, predicting ratings from a user-generated content can help in developing vast data sets for recommender systems utilizing recent data. The aim of this study is to predict ratings more accurately and enhance the performance of sentiment-based predictors by combining it with the emotional content of textual data.

Design/methodology/approach

This study had utilized a combination of sentiment and emotion scores to predict the ratings of Twitter posts (3,509 tweets) in three different contexts, namely, online food delivery (OFD) services, online travel agencies (OTAs) and online learning (e-learning). A total of 29,551 reviews were utilized for training and testing purposes.

Findings

Results of this study indicate accuracies of 58.34%, 57.84% and 100% in cases of e-learning, OTA and OFD services, respectively. The combination of sentiment and emotion scores showed an increase in accuracies of 19.41%, 27.83% and 40.20% in cases of e-learning, OFD and OTA services, respectively.

Practical implications

Understanding the ratings of social media comments can help both service providers as well as prospective customers who do not spend much time reading posts but want to understand the perspectives of others about a particular service/product. Additionally, predicting ratings of social media comments will help to build databases for recommender systems in different contexts.

Originality/value

The uniqueness of this study is in utilizing a combination of sentiment and emotion scores to predict the ratings of tweets related to different online services, namely, e-learning OFD and OTAs.

Details

Benchmarking: An International Journal, vol. 28 no. 2
Type: Research Article
ISSN: 1463-5771

Keywords

Article
Publication date: 4 September 2019

Agnieszka Landowska

The purpose of this paper is to explore uncertainty inherent in emotion recognition technologies and the consequences resulting from that phenomenon.

Abstract

Purpose

The purpose of this paper is to explore uncertainty inherent in emotion recognition technologies and the consequences resulting from that phenomenon.

Design/methodology/approach

The paper is a general overview of the concept; however, it is based on a meta-analysis of multiple experimental and observational studies performed over the past couple of years.

Findings

The main finding of the paper might be summarized as follows: there is uncertainty inherent in emotion recognition technologies, and the phenomenon is not expressed enough, not addressed enough and unknown by the users of the technology.

Practical implications

Practical implications of the study are formulated as postulates for the developers, users and researchers dealing with the technologies of automatic emotion recognition.

Social implications

As technologies that recognize emotions are becoming more and more common, and perhaps more decisions influencing people lives are to come in the next decades, the trustworthiness of the technology is important from a scientific, practical and ethical point of view.

Originality/value

Studying uncertainty of emotion recognition technologies is a novel approach and is not explored from such a broad perspective before.

Details

Journal of Information, Communication and Ethics in Society, vol. 17 no. 3
Type: Research Article
ISSN: 1477-996X

Keywords

Article
Publication date: 31 January 2018

Carmen Valor, Paolo Antonetti and Isabel Carrero

Research on sustainable consumption (SC) has shown how, faced with barriers that prevent them from embracing a sustainable lifestyle, consumers experience classic symptoms of…

1206

Abstract

Purpose

Research on sustainable consumption (SC) has shown how, faced with barriers that prevent them from embracing a sustainable lifestyle, consumers experience classic symptoms of distress. Although distress emerges as a constitutive dimension of sustainable lifestyles, research has not yet provided a comprehensive account of how consumers cope with it. This paper aims to provide such an account.

Design/methodology/approach

In-depth interviews were conducted with 25 people who defined themselves as sustainable consumers. A hermeneutic approach was adopted for the analysis.

Findings

The analysis shows that consumers enact two different coping strategies: adjustment or episodic coping and structural coping or deradicalization. Both sets encompass reappraisals and meaning-making strategies to maintain motivation while simultaneously appeasing tensions. They also comprise the strategic enactment of emotions to energize the self and/or to appease distress. Coping influences how SC is appraised and lived, as these practices are dynamically changed to navigate structural constraints.

Practical implications

SC campaigns have traditionally focused on cognitive empowerment. However, the evidence suggests that emotional empowerment could be a more effective way to promote the practice.

Originality/value

This paper provides the first in-depth examination of the strategies adopted to cope with distress. The analysis shows that consumers reconfigure how SC is appraised and implemented, while emphasizing the crucial role of emotion work in the coping repertoire. Although SC is stressful due to structural and social constraints, consumers are able to remain committed to it to varying degrees.

Details

European Journal of Marketing, vol. 52 no. 3/4
Type: Research Article
ISSN: 0309-0566

Keywords

Article
Publication date: 28 January 2014

Leonidas A. Zampetakis

The purpose of this paper is to develop a consumer taxonomy based on experienced emotions during non-deceptive counterfeit consumption situations, which could be useful for public…

2778

Abstract

Purpose

The purpose of this paper is to develop a consumer taxonomy based on experienced emotions during non-deceptive counterfeit consumption situations, which could be useful for public policy makers, marketers, and anti-counterfeiting service providers trying to devise strategies so as to inhibit the problem of counterfeit consumption.

Design/methodology/approach

The paper is based on a questionnaire survey/analysis of a sample of 312 randomly selected consumers. Surveys were administrated individually to consumers, through personal contact by the study authors. Data analysis was conducted in three steps: first, descriptive analyses; second, analysis of variance; and third, hierarchical cluster analysis.

Findings

Results suggest that during non-deceptive counterfeit consumption situations, consumers experience complex emotions including both positive and negative affect. Furthermore, four different subgroups of consumers experienced relative specific but different emotional reactions.

Research limitations/implications

The reported research relied on self-reports and on a sample from Greek consumers. Moreover, data were cross-sectional and alternatives relationships may exist. Future research should be multinational and longitudinal to test the assumptions of the present study and should encompass variables of actual emotions felt during non-deceptive counterfeit consumption situations.

Practical implications

Results suggested that four different subgroups of consumers experienced relative specific but different emotional reactions. As a result, the study may help marketers and anti-counterfeiting service providers to establish more refined and more effective marketing strategies.

Originality/value

Results of the present research are original and unique and provide new insights for marketing managers in their efforts to decrease counterfeit consumption of their products.

Details

Marketing Intelligence & Planning, vol. 32 no. 1
Type: Research Article
ISSN: 0263-4503

Keywords

1 – 10 of over 37000