Preface |
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xi | |
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1 Subjective and Social Well-Being |
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1 | (46) |
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1 | (6) |
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1.1.1 Subjective Well-Being |
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1 | (1) |
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2 | (1) |
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1.1.3 Multidimensional Indicators |
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3 | (1) |
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4 | (1) |
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1.1.5 Social Networking Sites and Data at Scale |
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4 | (2) |
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1.1.6 What You'll Find (and What You'll Not) in This Book |
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6 | (1) |
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1.1.7 Wellbeing, Well Being or Well-Being? |
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7 | (1) |
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1.2 Gross Domestic Product |
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7 | (4) |
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1.3 Well-Being as A Multidimensional Notion |
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11 | (8) |
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1.3.1 The Capability Approach |
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11 | (1) |
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1.3.1.1 Empirical Limitations of the Capability Approach |
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12 | (1) |
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1.3.2 Multidimensional Well-Being Indicators |
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13 | (1) |
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1.3.2.1 HDI: Human Development Index |
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14 | (1) |
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1.3.2.2 BLI: Better Life Index |
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14 | (1) |
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1.3.2.3 HPI: Happy Planet Index |
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15 | (1) |
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1.3.2.4 BES: Benessere Equo Sostenibile (Fair Sustainable Weil-Being) |
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15 | (1) |
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1.3.2.5 CIW: Canadian Index of Well-Being |
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16 | (1) |
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1.3.2.6 Other Initiatives for Measuring Well-Being |
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16 | (1) |
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1.3.2.7 GNH: Gross National Happiness |
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17 | (1) |
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1.3.2.8 Pros and Cons of Multidimensional Indicators |
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18 | (1) |
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1.4 Self-Reported Well-Being |
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19 | (11) |
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19 | (1) |
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1.4.1.1 Gallup World Poll |
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19 | (2) |
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1.4.1.2 Gallup-Sharecare and Global Well-Being Index |
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21 | (1) |
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1.4.1.3 Well-Being Research Based on Gallup Data |
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22 | (1) |
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1.4.2 European Social Survey |
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23 | (3) |
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1.4.3 World Values Survey |
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26 | (1) |
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1.4.4 European Quality of Life Survey |
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26 | (1) |
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1.4.5 How to Collect (and Interpret) Self-Reported Evaluations |
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27 | (3) |
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1.5 Social Networking Sites and Well-Being |
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30 | (14) |
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31 | (1) |
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1.5.2 Evaluating Subjective Well-Being on the Web |
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32 | (8) |
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1.5.3 Pros and Cons of Large-Scale Data from SNS |
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40 | (3) |
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1.5.4 International and Intercultural Comparisons |
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43 | (1) |
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1.6 Subjective Or Social Well-Being? |
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44 | (1) |
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45 | (2) |
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2 Text and Sentiment Analysis |
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47 | (44) |
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47 | (3) |
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2.1.1 Main Principles of Text Analysis |
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48 | (2) |
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2.2 Different Types of Estimation and Targets |
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50 | (1) |
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2.3 From Texts to Numbers: How Computers Crunch Documents |
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51 | (4) |
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2.3.1 Modeling the Data Coming for Social Networks |
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54 | (1) |
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2.4 Review of Unsupervised Methods |
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55 | (10) |
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2.4.1 Scoring Methods: Wordfish, Wordscores and LLS |
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55 | (3) |
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2.4.2 Continuous Space Word Representation: Word2Vec |
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58 | (3) |
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61 | (1) |
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62 | (3) |
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2.5 Review of Machine Learning Methods |
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65 | (11) |
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2.5.1 Decision Trees and Random Forests |
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66 | (3) |
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2.5.2 Support Vector Machines |
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69 | (4) |
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2.5.3 Artificial Neural Networks |
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73 | (3) |
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2.6 Estimation of Aggregated Distribution |
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76 | (3) |
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2.6.1 The Need of Aggregated Estimation: Reversing the Point of View |
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77 | (2) |
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2.6.2 The ReadMe Solution to the Inverse Problem |
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79 | (1) |
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79 | (1) |
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2.7.1 Main Advantages of iSA over the ReadMe Approach |
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80 | (1) |
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2.8 The Isax Algorithm For Sequential Sampling |
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80 | (1) |
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2.9 Empirical Comparison of Machine Learning Methods |
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81 | (8) |
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2.9.1 Confidence Intervals |
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87 | (2) |
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89 | (1) |
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89 | (2) |
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3 Extracting Subjective Well-Being From Textual Data |
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91 | (28) |
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3.1 From Sns Data to Subjective Well-Being Indexes |
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91 | (2) |
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3.1.1 Pros & Cons of Twitter Data |
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91 | (2) |
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93 | (1) |
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3.3 The Gross National Happiness Index |
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94 | (1) |
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3.4 The World Well-Being Project |
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95 | (1) |
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3.5 The Twitter Subjective Well-Being Index |
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96 | (12) |
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3.5.1 Qualitative Analysis of Texts |
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98 | (1) |
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3.5.2 Data Filtering for Training-Set Construction |
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99 | (1) |
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3.5.3 General Coding Rules |
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99 | (1) |
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3.5.4 Specific Coding Rules |
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99 | (6) |
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3.5.5 How to Construct the Index |
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105 | (1) |
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3.5.6 The Data Collection |
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106 | (1) |
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3.5.7 Some Cultural Elements of SNS Communication in Japan |
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107 | (1) |
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3.6 Preliminary Analysis of the Swb-I & Swb-J Indexes |
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108 | (3) |
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3.7 Cross-Country Analysis 2015--2018 with Structural Equation Modeling |
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111 | (5) |
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3.7.1 Interpretation of the Structural Equation Model |
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112 | (4) |
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116 | (3) |
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4 How to Control For Bias in Social Media |
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119 | (20) |
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4.1 Representativeness and Selection Bias of Social Media |
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119 | (2) |
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4.2 Small Area Estimation Method |
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121 | (4) |
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123 | (1) |
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4.2.2 The Space-Time SAE Model with Weights |
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123 | (2) |
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4.3 An Application to the Study of Well-Being at Work |
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125 | (13) |
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125 | (1) |
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4.3.2 The Construction of the Weights |
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126 | (1) |
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4.3.3 Official Statistics to Anchor the Model |
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127 | (3) |
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4.3.4 Results of the SAE Model |
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130 | (1) |
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4.3.5 A Weighted Measure of Well-Being at Work |
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131 | (2) |
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4.3.6 The Estimated Measure of Well-Being at Work from the SAE Model |
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133 | (3) |
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4.3.7 Comparison with Official Statistics |
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136 | (2) |
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138 | (1) |
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138 | (1) |
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5 Subjective Well-Being and the Covid-19 Pandemic |
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139 | (42) |
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5.1 The Year 2020 and Well-Being |
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139 | (1) |
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5.2 The Effect of Lockdown On Gross National Happiness Index |
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140 | (3) |
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5.3 Hedonometer and the Covid-19 Pandemic |
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143 | (1) |
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5.4 The World Well-Being Project and Tracking of Symptoms During the Pandemic |
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143 | (2) |
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5.5 The Decline of Swb-I & Swb-J During Covid-19 |
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145 | (4) |
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149 | (1) |
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5.6 Data Collection of Potential Determinants of the Sbw Indexes |
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149 | (4) |
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5.6.1 COVID-19 Spread Data |
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150 | (1) |
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150 | (1) |
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150 | (1) |
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150 | (2) |
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5.6.5 Google Mobility Data |
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152 | (1) |
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5.6.6 Facebook Survey Data |
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152 | (1) |
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5.6.7 Restriction Measures Data |
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152 | (1) |
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5.7 What Impacted the Subjective Well-Being Indexes? |
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153 | (17) |
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5.7.1 Preliminary Correlation Analysis |
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154 | (1) |
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5.7.2 Monthly Regression Analysis |
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154 | (7) |
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5.7.3 Dynamic Elastic Net Analysis |
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161 | (2) |
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5.7.4 Analysis of the Italian Data |
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163 | (5) |
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5.7.5 Analysis of the Japanese Data |
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168 | (1) |
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5.7.6 Comparative Analysis of the Dynamic Elastic Net Results |
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169 | (1) |
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5.8 Structural Equation Modeling |
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170 | (6) |
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5.8.1 Evidence from the Structural Equation Modeling |
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172 | (4) |
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5.9 Summary of the Results |
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176 | (2) |
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178 | (1) |
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179 | (2) |
Bibliography |
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181 | (24) |
Index |
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205 | |