• Refine Query
  • Source
  • Publication year
  • to
  • Language
  • 9
  • 5
  • 1
  • 1
  • 1
  • 1
  • 1
  • 1
  • Tagged with
  • 27
  • 27
  • 24
  • 21
  • 14
  • 13
  • 11
  • 11
  • 9
  • 9
  • 8
  • 8
  • 8
  • 8
  • 8
  • About
  • The Global ETD Search service is a free service for researchers to find electronic theses and dissertations. This service is provided by the Networked Digital Library of Theses and Dissertations.
    Our metadata is collected from universities around the world. If you manage a university/consortium/country archive and want to be added, details can be found on the NDLTD website.
11

Säljande samspel : en sociologisk studie av privat servicearbete

Abiala, Kristina January 2000 (has links)
Interaction between people can be seen as a distinctive feature of 'post-industrial society'. In this study I investigate some of the conditions for this encounter in private service work in Sweden. I start by discussing some important concepts: service, service encounter and emotional labour. Three parties in an interactional triangle can be perceived: the service enterprise, the service worker and the customer. The service encounter is embedded in organisational frames. Recruiting for social competence and training for selling interaction are two facets of these frames. In interactive service work, control is complicated by the fact that a third party, the customer, is involved and that the borders between worker, work process and result are somewhat indistinct. Indirect forms of control can be used to affect workers' attitudes and thinking, as well as behaviour. Service work can be described as a form of acting. Different service workers will identify differently with their work role. In my study I observe both positive and negative experiences of work. A majority report that they sometimes are so tired of people that they want to be alone after work. I distinguish two dimensions of interactive service work: type of interaction and sales situation. Interaction can be more or less important, and the sales situation can be more or less concealed. Based on these dimensions I suggest a typology to illustrate some differences between different service occupations. Four types are suggested: (1) Work first, and customer later; (2) Personalised services; (3) Routine selling; and (4) Persuasive selling. In the second group we find the experts of interaction, but also the strongest signs of social strain.
12

Emotion work and well-being of human resource personnel in a mining industry / T. Beyneveldt

Beyneveldt, Tanya January 2009 (has links)
Human Resource personnel as part of their daily jobs provide a service to other employees within a mining industry. These service workers may experience dissonance between their actual feelings and the feelings they are expected to display. For these service workers to be more engaged at work, emotional intelligence and social support is vital. If these factors are not in place, their well-being may be in jeopardy. The objective of this research was to determine the relationship between Emotion Work, Emotional Intelligence, Well-being and Social Support of service workers in a human resource field within a mining industry. A cross-sectional survey design was used. The study population (n = 229) consisted of human resource personnel in the Limpopo and North West Province. The Greek Emotional Intelligence Scale (GEIS), Frankfurt Emotion Work Scales, Utrecht Work Engagement Scale, Oldenburg Burnout Inventory and Social Support Scale, as well as a biographical questionnaire, were used as measuring instruments. Cronbach alpha coefficients, factor analysis, inter-item correlation coefficients, Pearson product moment correlation coefficient and stepwise multiple regression analysis were used to analyse the data. An analysis of the data indicated that correlations between the following constructs are statistically and practically significant. The results show that Positive Display is statistically and positively practically significantly related (medium effect) to Interaction Control. Caring/Empathy is positively practically significantly related to Positive Display (medium effect). Furthermore the Control of Emotions (medium effect) and Emotion Management (large effect) are both positively practically significantly related to Caring/Empathy. Emotional Resilience however is negatively practically significantly related to Caring and Empathy (medium effect). Emotion Expression Recognition is positively practically significantly related to Control of Emotion (medium effect). However, both Exhaustion (medium effect) and Emotional Resilience (medium effect) are negatively practically significantly related to Control of Emotions. Engagement is positively practically significant (medium effect) to Emotion Management. Emotion Resilience (medium effect) positively correlates with Exhaustion while Engagement (medium effect) negatively correlates with Exhaustion. Engagement positively practically correlates with Resilience (medium effect). Social Support of both supervisor and co-workers positively relates to engagement to a medium effect. Principal component analysis performed on the GEIS resulted in a four-factor solution. The first factor was Caring and Empathy, which includes the willingness of an individual to help other people and understand others' feelings. The second factor was Control of Emotion, which is the ability of the individual to control and regulate emotions within themselves and others. Emotion Expression/Recognition, which is the ability of the individual to express and recognise his or her own emotional reactions, was the third factor, and the fourth was Emotion Management, which is the ability of an individual to process emotional information with regard to perception, assimilation, understanding and management of emotions. All four factors correlate with that of the GEIS originally developed by Tsaousis (2007) and accounted for 31% of the total variance in emotional intelligence. A Multiple Regression Analysis with Exhaustion as dependent variable was carried out. The results show that Emotion Work factors accounted for 2% of the total variance and Emotional Intelligence factors for 12% of the total variance. More specifically it seems that the lack of Caring and Empathy and Emotion Management predicted Exhaustion in this regard. However, when Emotional Intelligence factors were entered into the model, an increase of 10% variance was shown of the variance explained in Exhaustion. Emotion Work, Emotional Intelligence and Social Support predicted 14% of the variance explained in the level of Exhaustion by participants. A Multiple Regression analysis with Emotional Resilience as dependent variable was carried out. The results show that Emotion Work factors accounted for 6% of the total variance. More specifically; it seems that Dissonance predicted the level of Emotional Resilience. When Emotional Intelligence factors were entered into the model, an increase of 15% was shown. Caring and Empathy and Control of Emotions predicted Emotional Intelligence the best. Lastly, when Social Support factors were entered into the regression analysis, the variance explained showed an increase of 5%. Support of Family and Others predicted Emotional Resilience the best. In total, Emotion Work, Emotional Intelligence and Social Support factors explained 20% of the variance in Emotional Resilience. A Multiple Regression Analysis with Engagement as dependent variable with Emotion Work factors, Emotional Intelligence factors and Social Support as predictors of Engagement was done. Entry of Emotion Work factors at the first step of the regression analysis did not produce a statistically significant model and only accounted for 1% of the variance. However, when Emotional Intelligence factors were entered in the second step of the analysis, it accounted for approximately 7% of the variance. More specifically, it seems that Caring and Empathy predicted Engagement. When Social Support factors were entered into the third step of the analysis, an increase of 27% was found. All the Social Support factors (Social Support of Family and Others, Supervisors and Co-workers) accounted for 27% of the variance explained in Engagement. Emotion Work, Emotional Intelligence and Social Support predicted 33% of the total variance explained in the level of Engagement. Limitations within the study were identified, and recommendations were made for human resource personnel in a mining industry, as well as for future research. / Thesis (M.A. (Industrial Psychology))--North-West University, Potchefstroom Campus, 2009.
13

Emotion work and well-being of human resource personnel in a mining industry / T. Beyneveldt

Beyneveldt, Tanya January 2009 (has links)
Human Resource personnel as part of their daily jobs provide a service to other employees within a mining industry. These service workers may experience dissonance between their actual feelings and the feelings they are expected to display. For these service workers to be more engaged at work, emotional intelligence and social support is vital. If these factors are not in place, their well-being may be in jeopardy. The objective of this research was to determine the relationship between Emotion Work, Emotional Intelligence, Well-being and Social Support of service workers in a human resource field within a mining industry. A cross-sectional survey design was used. The study population (n = 229) consisted of human resource personnel in the Limpopo and North West Province. The Greek Emotional Intelligence Scale (GEIS), Frankfurt Emotion Work Scales, Utrecht Work Engagement Scale, Oldenburg Burnout Inventory and Social Support Scale, as well as a biographical questionnaire, were used as measuring instruments. Cronbach alpha coefficients, factor analysis, inter-item correlation coefficients, Pearson product moment correlation coefficient and stepwise multiple regression analysis were used to analyse the data. An analysis of the data indicated that correlations between the following constructs are statistically and practically significant. The results show that Positive Display is statistically and positively practically significantly related (medium effect) to Interaction Control. Caring/Empathy is positively practically significantly related to Positive Display (medium effect). Furthermore the Control of Emotions (medium effect) and Emotion Management (large effect) are both positively practically significantly related to Caring/Empathy. Emotional Resilience however is negatively practically significantly related to Caring and Empathy (medium effect). Emotion Expression Recognition is positively practically significantly related to Control of Emotion (medium effect). However, both Exhaustion (medium effect) and Emotional Resilience (medium effect) are negatively practically significantly related to Control of Emotions. Engagement is positively practically significant (medium effect) to Emotion Management. Emotion Resilience (medium effect) positively correlates with Exhaustion while Engagement (medium effect) negatively correlates with Exhaustion. Engagement positively practically correlates with Resilience (medium effect). Social Support of both supervisor and co-workers positively relates to engagement to a medium effect. Principal component analysis performed on the GEIS resulted in a four-factor solution. The first factor was Caring and Empathy, which includes the willingness of an individual to help other people and understand others' feelings. The second factor was Control of Emotion, which is the ability of the individual to control and regulate emotions within themselves and others. Emotion Expression/Recognition, which is the ability of the individual to express and recognise his or her own emotional reactions, was the third factor, and the fourth was Emotion Management, which is the ability of an individual to process emotional information with regard to perception, assimilation, understanding and management of emotions. All four factors correlate with that of the GEIS originally developed by Tsaousis (2007) and accounted for 31% of the total variance in emotional intelligence. A Multiple Regression Analysis with Exhaustion as dependent variable was carried out. The results show that Emotion Work factors accounted for 2% of the total variance and Emotional Intelligence factors for 12% of the total variance. More specifically it seems that the lack of Caring and Empathy and Emotion Management predicted Exhaustion in this regard. However, when Emotional Intelligence factors were entered into the model, an increase of 10% variance was shown of the variance explained in Exhaustion. Emotion Work, Emotional Intelligence and Social Support predicted 14% of the variance explained in the level of Exhaustion by participants. A Multiple Regression analysis with Emotional Resilience as dependent variable was carried out. The results show that Emotion Work factors accounted for 6% of the total variance. More specifically; it seems that Dissonance predicted the level of Emotional Resilience. When Emotional Intelligence factors were entered into the model, an increase of 15% was shown. Caring and Empathy and Control of Emotions predicted Emotional Intelligence the best. Lastly, when Social Support factors were entered into the regression analysis, the variance explained showed an increase of 5%. Support of Family and Others predicted Emotional Resilience the best. In total, Emotion Work, Emotional Intelligence and Social Support factors explained 20% of the variance in Emotional Resilience. A Multiple Regression Analysis with Engagement as dependent variable with Emotion Work factors, Emotional Intelligence factors and Social Support as predictors of Engagement was done. Entry of Emotion Work factors at the first step of the regression analysis did not produce a statistically significant model and only accounted for 1% of the variance. However, when Emotional Intelligence factors were entered in the second step of the analysis, it accounted for approximately 7% of the variance. More specifically, it seems that Caring and Empathy predicted Engagement. When Social Support factors were entered into the third step of the analysis, an increase of 27% was found. All the Social Support factors (Social Support of Family and Others, Supervisors and Co-workers) accounted for 27% of the variance explained in Engagement. Emotion Work, Emotional Intelligence and Social Support predicted 33% of the total variance explained in the level of Engagement. Limitations within the study were identified, and recommendations were made for human resource personnel in a mining industry, as well as for future research. / Thesis (M.A. (Industrial Psychology))--North-West University, Potchefstroom Campus, 2009.
14

Examining the Emotional Labor Process: A Moderated Model of Emotional Labor and Its Effects on Job Performance

Chau, Samantha Le 02 October 2007 (has links)
No description available.
15

Impact des régulations émotionnelles au travail sur l'épuisement professionnel des soignants en gériatrie : étude des effets de la méthode Gineste et Marescotti / Emotional impact of regulations on burnout in geriatric nursing : the effects of Gineste and Marescotti method.

Guilbon, Gérard 02 December 2013 (has links)
L’objectif de cette thèse est d’étudier les impacts de la régulation émotionnelle sur l’épuisement professionnel des soignants en gériatrie et plus particulièrement en mesurant les effets de la méthode Gineste et Marescotti. Lors d’une première étude, nous avons observé les états émotionnels psychologiques et physiologiques induits par deux séquences de film chez 25 sujets. Au cours de deux autres études, nous avons étudié les liens entre les régulations émotionnelles au travail, les variables de personnalité, les variables dispositionnelles et les variables contextuelles puis le rôle des régulations émotionnelles au travail dans la prédiction de la détresse psychologique chez 885 étudiants en IFSI et IFAS et dans la prédiction du burnout chez 157 professionnels en gériatrie. Enfin une quatrième étude nous a permis d’étudier les impacts de la méthode Gineste et Marescotti sur un échantillon de soignants en gériatrie. Les résultats montrent que la dissonance émotionnelle génère un stress signalé par une augmentation de la fréquence cardiaque. Le jeu en surface et le jeu en profondeur dépendent à la fois des caractéristiques de personnalité, des stratégies de régulations émotionnelles dispositionnelles et des prescriptions internes et externes, mais pas des stratégies de coping. De plus, le travail émotionnel contribue réellement à prédire le burnout mais pas la détresse psychologique. Enfin, la méthode agit sur les professionnels formés et satisfaits et plus spécifiquement sur le coping émotionnel, le jeu en surface, la demande psychologique, le burnout et le conflit de valeurs. La satisfaction associée à la capacité à mettre en œuvre la formation influence le burnout. / The objective of this thesis is to study the impact of emotion regulation on burnout in geriatric nursing, especially in measuring the effects of Gineste and Marescotti method. In a first study we observed the psychological and physiological emotional states induced by two movie clips in 25 subjects. In two other studies we investigated the relationship between emotional regulation at work, personality variables , dispositional variables and contextual variables and the role of emotional regulation at work in the prediction of psychological distress among 885 students IFSI and IFAS and the prediction of burnout among 157 professionals in geriatrics. Finally, a fourth study, we study the impacts of Gineste and Marescotti method on a sample of geriatric caregivers. The results show that emotional dissonance creates a stress indicated by an increase in heart rate. The surface acting and deep acting depend on both the characteristics of personality, emotional regulation strategies dispositional and internal and external requirements but not coping strategies. In addition, the emotional labour actually helps predict burnout but not psychological distress. Finally, the method is trained and satisfied on the level of emotional coping professionals, surface acting, psychological demand, burnout and conflict of values. Satisfaction associated with the ability to implement training influences burnout.
16

Emotion work and well-being of human-resource employees within the chrome industry / A. du Preez

Du Preez, Arenda January 2008 (has links)
Thesis (M.A. (Human Resource Management))--North-West University, Potchefstroom Campus, 2009.
17

Emotion work and well-being of client service workers within small and medium enterprises / Sonja Joubert

Joubert, Sonja January 2008 (has links)
Frontline client service workers are central to the service elements of any small and medium enterprise. People who have much customer or client contact are seen to be subject to stronger emotional display rules. These display rules may result in compromising the psychological and/or physical health of workers, because they often lead to a disturbing dissonance between felt emotions and the emotions one must exhibit. It is, therefore, of vital importance for service workers to exhibit Emotional Intelligence, which will enable them to manage both their own emotions and their interactions with other people. Their inability to do so may result in stress as well as physical and emotional exhaustion, also known as Burnout. The objective of this research was to determine the relationship between Emotion Work, Emotional Intelligence, Well-being and Social Support of client service workers within small and medium enterprises, A cross-sectional survey design was used. An availability sample was taken from small and medium enterprises employing client service workers in the Mpumalanga Province (N = 145). The Greek Emotional Intelligence Scale (GEIS), Frankfurt Emotion Work Scales (FEWS), Utrecht Work Engagement Scale (UWES), Oldenburg Burnout Inventory (OLBI) and Social Support Scale, as well as a biographical questionnaire were used as measuring instruments. Cronbach alpha coefficients, factor analysis, inter-item correlation coefficients, Pearson product moment correlation coefficients, stepwise multiple regression analysis, and Multivariate analysis of variance (MANOVA) were used to analyse the data. Principal component analysis resulted in a one-factor solution for Engagement labelled Work Engagement, and a two factor solution for Burnout namely: Disengagement and Emotional Exhaustion. Regarding Social Support, a three factor model was extracted namely; Social Support - Co-worker, Social Support -Supervisor and Social Support - Family. A three factor model was extracted for Emotion Work namely: Emotional Dissonance, Display of Client Care and Extent of Client Interaction. A four-factor solution was extracted for Emotional Intelligence namely: Emotional Expression/Recognition, Use of Emotions to Facilitate Thinking, Control of Emotion as well as Caring and Empathy. An analysis of the data indicated that all of the correlations between the different constructs mentioned below are statistically and practically significant, Disengagement was positively related to Emotional Exhaustion and negatively related to Emotional Expression/Recognition, Emotion Use to Facilitate Thinking and Work Engagement. Emotional Exhaustion was positively related to Emotional Dissonance and negatively related to Emotional Expression/Recognition. Emotional Dissonance was positively related to Display of Client Care, while Display of Client Care was positively related to Extent of Client Interaction, as well as Caring and Empathy. Emotional Expression/Recognition was positively related to both Emotion Use to Facilitate Thinking and Work Engagement. Emotion Control was positively related to Emotion Use to Facilitate Thinking, while it in turn was positively related to Work Engagement. Finally, Social Support from Co-workers was positively related to Social Support from Supervisors and Family, and Social Support from Supervisors was positively related to Social Support from Family. A multiple regression analysis indicated that Emotion Work, Social Support and Emotional Intelligence predicted 29% of the variance in Work Engagement, 30% of the variance explained in Disengagement and 37% of the variance in Emotional Exhaustion. A multivariate analysis of variance (MANOVA) which was used to determine differences between the departmental, age, race, qualification, language and gender groups with regard to Emotion Work, Emotional Intelligence, Well-being and Burnout, indicated no statistical significant differences (p < 0,05). The results indicated a correlation between Emotional Intelligence, Emotion Work and Well-being factors. Emotional Intelligence factors predicted Work Engagement and Emotion Work predicted Emotional Exhaustion. Recommendations were made for the profession of client service work in small and medium enterprises, as well as for future research purposes. / Thesis (M.A. (Industrial Psychology))--North-West University, Potchefstroom Campus, 2008.
18

Emotion work and well-being of human-resource employees within the chrome industry / A. du Preez

Du Preez, Arenda January 2008 (has links)
Things develop quickly in today's internet-linked global economy and competition is intense. Speed, cost, and quality are no longer the trade-offs they once were. Today's consumers demand immediate access to high-quality products and services at a reasonable price. Thus, Managers are challenged to speed up the product creation and delivery cycle, while cutting costs and improving quality. Regardless of the size and purpose of the organisation and the technology involved, people are the common denominator when facing this immense challenge. Success or failure depends on the ability to attract, develop, retain, and motivate the employees. The human-resource employee is the drive behind all these voice-to-voice and face-to-face interactions, attempting to represent the emotions, attitudes, and behaviours required by the organisation. The objective of this research study was to determine the relationship between Emotion Work and Well-being among human-resource employees in the chrome industry. The research method consisted of a literature review and an empirical study. A cross-sectional survey design was used to collect the data. A non-probability convenience sample was taken from human-resource employees in the chrome industry. The Utrecht Work Engagement Scale, Oldenburg Burnout Inventory, the Frankfurt Emotion Work Scales, Greek Emotional Intelligence Scale, Emotional Labour Scale, and Social Support Scale were used as measuring instruments. The data was analysed by making use of descriptive statistics, Cronbach alpha coefficients, factor-analysis, Pearson product-moment correlation coefficients, and multiple regression analyses of variance (multivariate analysis of variance and ANOVA), calculated using SPSS. Compared to the the guidelines of a > 0,07 (Nunnally & Bernstein, 1994), all of the scales of the measuring instruments have normal distributions except for Engagement where the kurtosis was positively skewed. Compared to the guidelines of a > 0,07 (Nunnally & Bernstein, 1994), the Cronbach alpha coefficient of all the constructs is considered to be acceptable. A factor analysis confirmed four factors of Emotion Work, consisting of Emotional Dissonance, the Display of Positive/Pleasant Emotions, the Display of Empathy, and the Display of Negative/Unpleasant Emotions. Emotional Intelligence also consists of four factors namely the Use of Emotion, Caring Empathy, the Control of Emotions, and Expression Recognition. Well- being consists of two factors namely Exhaustion and Engagement. Finally, Social Support consists of three factors Co-worker Support, Supervisor Support, and Family Support. An analysis of the data indicated that all of the correlations between the different constructs mentioned below are statistically and practically significant. The Display of Positive/Pleasant Emotions and the Display of Empathy is positively related to Emotional Dissonance. The Display of Empathy is positively related to Emotional Dissonance as well as to the Display of Positive/Pleasant Emotions. The Display of Negative/Unpleasant Emotions is negatively related to the Display of Positive/Pleasant Emotions and the Display of Empathy. Exhaustion is negatively related to Engagement, the Use of Emotions, and the Control of Emotions. Engagement is positively related to Co-worker Support, the Use of Emotion as well as to the Control of Emotions. Family Support is positively related to both Supervisor Support and Co-worker Support. Supervisor Support is positively related to Co-worker Support. The Use of Emotion is positively related to Caring Empathy and the Control of Emotions. Caring Empathy is positively related to the Control of Emotions, the Display of Positive/Pleasant Emotions, and the Display of Empathy, while it in turn is negatively correlated to the Display of Negative/Unpleasant Emotions. The Control of Emotions is negatively related to the Display of Negative/Unpleasant Emotions. Emotional Dissonance is positively related to both the Display of Positive/Pleasant Emotions and the Display of Empathy. Finally, the Display of Positive/Pleasant Emotions is positively related to the Display of Empathy. In a multiple regression analysis with Emotional Dissonance as dependant variable and with demographic variables, as independent variable a statistically significant model was produced. More specifically, 11% of the variance predicted in Emotional Dissonance was explained by gender, age and ethnicity. In a multiple regression analysis indicated that Emotional Intelligence (specifically the Use of Emotion), Emotion Work (specifically Emotional Dissonance), and Social Support (specifically Co-worker Support) predicted 31% of the total variance in Engagement. Emotional Intelligence (specifically the Use of Emotion and the Control of Emotions), Emotion Work (specifically Emotional Dissonance and the Display of Negative/Unpleasant Emotions), and Social Support (specifically Co-worker Support) predicted 43% of the total variance in Exhaustion A multivariate analysis of variance, which was used to determine differences between ethnic, age, and gender groups with regard to Emotion Work, indicated that participants in the African ethnic group experienced higher levels of Emotional Dissonance than participants in the White ethnic group. Female participants display higher levels of Emotional Dissonance, the Display of Positive/Pleasant Emotions, and the Display of Empathy, while male participants experienced higher levels of the Display of Negative/Unpleasant Emotions. The age group of 42 to 51 experienced lower levels of Emotion Work owing to the experience of Emotional Dissonance, than participants in the age groups of 21 to 31, 32 to 41, and 52 to 66. / Thesis (M.A. (Human Resource Management))--North-West University, Potchefstroom Campus, 2009.
19

Emotion work and well-being of client service workers within small and medium enterprises / Sonja Joubert

Joubert, Sonja January 2008 (has links)
Frontline client service workers are central to the service elements of any small and medium enterprise. People who have much customer or client contact are seen to be subject to stronger emotional display rules. These display rules may result in compromising the psychological and/or physical health of workers, because they often lead to a disturbing dissonance between felt emotions and the emotions one must exhibit. It is, therefore, of vital importance for service workers to exhibit Emotional Intelligence, which will enable them to manage both their own emotions and their interactions with other people. Their inability to do so may result in stress as well as physical and emotional exhaustion, also known as Burnout. The objective of this research was to determine the relationship between Emotion Work, Emotional Intelligence, Well-being and Social Support of client service workers within small and medium enterprises, A cross-sectional survey design was used. An availability sample was taken from small and medium enterprises employing client service workers in the Mpumalanga Province (N = 145). The Greek Emotional Intelligence Scale (GEIS), Frankfurt Emotion Work Scales (FEWS), Utrecht Work Engagement Scale (UWES), Oldenburg Burnout Inventory (OLBI) and Social Support Scale, as well as a biographical questionnaire were used as measuring instruments. Cronbach alpha coefficients, factor analysis, inter-item correlation coefficients, Pearson product moment correlation coefficients, stepwise multiple regression analysis, and Multivariate analysis of variance (MANOVA) were used to analyse the data. Principal component analysis resulted in a one-factor solution for Engagement labelled Work Engagement, and a two factor solution for Burnout namely: Disengagement and Emotional Exhaustion. Regarding Social Support, a three factor model was extracted namely; Social Support - Co-worker, Social Support -Supervisor and Social Support - Family. A three factor model was extracted for Emotion Work namely: Emotional Dissonance, Display of Client Care and Extent of Client Interaction. A four-factor solution was extracted for Emotional Intelligence namely: Emotional Expression/Recognition, Use of Emotions to Facilitate Thinking, Control of Emotion as well as Caring and Empathy. An analysis of the data indicated that all of the correlations between the different constructs mentioned below are statistically and practically significant, Disengagement was positively related to Emotional Exhaustion and negatively related to Emotional Expression/Recognition, Emotion Use to Facilitate Thinking and Work Engagement. Emotional Exhaustion was positively related to Emotional Dissonance and negatively related to Emotional Expression/Recognition. Emotional Dissonance was positively related to Display of Client Care, while Display of Client Care was positively related to Extent of Client Interaction, as well as Caring and Empathy. Emotional Expression/Recognition was positively related to both Emotion Use to Facilitate Thinking and Work Engagement. Emotion Control was positively related to Emotion Use to Facilitate Thinking, while it in turn was positively related to Work Engagement. Finally, Social Support from Co-workers was positively related to Social Support from Supervisors and Family, and Social Support from Supervisors was positively related to Social Support from Family. A multiple regression analysis indicated that Emotion Work, Social Support and Emotional Intelligence predicted 29% of the variance in Work Engagement, 30% of the variance explained in Disengagement and 37% of the variance in Emotional Exhaustion. A multivariate analysis of variance (MANOVA) which was used to determine differences between the departmental, age, race, qualification, language and gender groups with regard to Emotion Work, Emotional Intelligence, Well-being and Burnout, indicated no statistical significant differences (p < 0,05). The results indicated a correlation between Emotional Intelligence, Emotion Work and Well-being factors. Emotional Intelligence factors predicted Work Engagement and Emotion Work predicted Emotional Exhaustion. Recommendations were made for the profession of client service work in small and medium enterprises, as well as for future research purposes. / Thesis (M.A. (Industrial Psychology))--North-West University, Potchefstroom Campus, 2008.
20

Emotion work and well-being of human-resource employees within the chrome industry / A. du Preez

Du Preez, Arenda January 2008 (has links)
Things develop quickly in today's internet-linked global economy and competition is intense. Speed, cost, and quality are no longer the trade-offs they once were. Today's consumers demand immediate access to high-quality products and services at a reasonable price. Thus, Managers are challenged to speed up the product creation and delivery cycle, while cutting costs and improving quality. Regardless of the size and purpose of the organisation and the technology involved, people are the common denominator when facing this immense challenge. Success or failure depends on the ability to attract, develop, retain, and motivate the employees. The human-resource employee is the drive behind all these voice-to-voice and face-to-face interactions, attempting to represent the emotions, attitudes, and behaviours required by the organisation. The objective of this research study was to determine the relationship between Emotion Work and Well-being among human-resource employees in the chrome industry. The research method consisted of a literature review and an empirical study. A cross-sectional survey design was used to collect the data. A non-probability convenience sample was taken from human-resource employees in the chrome industry. The Utrecht Work Engagement Scale, Oldenburg Burnout Inventory, the Frankfurt Emotion Work Scales, Greek Emotional Intelligence Scale, Emotional Labour Scale, and Social Support Scale were used as measuring instruments. The data was analysed by making use of descriptive statistics, Cronbach alpha coefficients, factor-analysis, Pearson product-moment correlation coefficients, and multiple regression analyses of variance (multivariate analysis of variance and ANOVA), calculated using SPSS. Compared to the the guidelines of a > 0,07 (Nunnally & Bernstein, 1994), all of the scales of the measuring instruments have normal distributions except for Engagement where the kurtosis was positively skewed. Compared to the guidelines of a > 0,07 (Nunnally & Bernstein, 1994), the Cronbach alpha coefficient of all the constructs is considered to be acceptable. A factor analysis confirmed four factors of Emotion Work, consisting of Emotional Dissonance, the Display of Positive/Pleasant Emotions, the Display of Empathy, and the Display of Negative/Unpleasant Emotions. Emotional Intelligence also consists of four factors namely the Use of Emotion, Caring Empathy, the Control of Emotions, and Expression Recognition. Well- being consists of two factors namely Exhaustion and Engagement. Finally, Social Support consists of three factors Co-worker Support, Supervisor Support, and Family Support. An analysis of the data indicated that all of the correlations between the different constructs mentioned below are statistically and practically significant. The Display of Positive/Pleasant Emotions and the Display of Empathy is positively related to Emotional Dissonance. The Display of Empathy is positively related to Emotional Dissonance as well as to the Display of Positive/Pleasant Emotions. The Display of Negative/Unpleasant Emotions is negatively related to the Display of Positive/Pleasant Emotions and the Display of Empathy. Exhaustion is negatively related to Engagement, the Use of Emotions, and the Control of Emotions. Engagement is positively related to Co-worker Support, the Use of Emotion as well as to the Control of Emotions. Family Support is positively related to both Supervisor Support and Co-worker Support. Supervisor Support is positively related to Co-worker Support. The Use of Emotion is positively related to Caring Empathy and the Control of Emotions. Caring Empathy is positively related to the Control of Emotions, the Display of Positive/Pleasant Emotions, and the Display of Empathy, while it in turn is negatively correlated to the Display of Negative/Unpleasant Emotions. The Control of Emotions is negatively related to the Display of Negative/Unpleasant Emotions. Emotional Dissonance is positively related to both the Display of Positive/Pleasant Emotions and the Display of Empathy. Finally, the Display of Positive/Pleasant Emotions is positively related to the Display of Empathy. In a multiple regression analysis with Emotional Dissonance as dependant variable and with demographic variables, as independent variable a statistically significant model was produced. More specifically, 11% of the variance predicted in Emotional Dissonance was explained by gender, age and ethnicity. In a multiple regression analysis indicated that Emotional Intelligence (specifically the Use of Emotion), Emotion Work (specifically Emotional Dissonance), and Social Support (specifically Co-worker Support) predicted 31% of the total variance in Engagement. Emotional Intelligence (specifically the Use of Emotion and the Control of Emotions), Emotion Work (specifically Emotional Dissonance and the Display of Negative/Unpleasant Emotions), and Social Support (specifically Co-worker Support) predicted 43% of the total variance in Exhaustion A multivariate analysis of variance, which was used to determine differences between ethnic, age, and gender groups with regard to Emotion Work, indicated that participants in the African ethnic group experienced higher levels of Emotional Dissonance than participants in the White ethnic group. Female participants display higher levels of Emotional Dissonance, the Display of Positive/Pleasant Emotions, and the Display of Empathy, while male participants experienced higher levels of the Display of Negative/Unpleasant Emotions. The age group of 42 to 51 experienced lower levels of Emotion Work owing to the experience of Emotional Dissonance, than participants in the age groups of 21 to 31, 32 to 41, and 52 to 66. / Thesis (M.A. (Human Resource Management))--North-West University, Potchefstroom Campus, 2009.

Page generated in 0.092 seconds