Leisure Inequality in the US: 1965-2003 Almudena Sevilla Sanz (with J Gershuny and Ignacio Gimenez Nadal) Centre for Time Use Research Department of Sociology.

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Presentation transcript:

Leisure Inequality in the US: Almudena Sevilla Sanz (with J Gershuny and Ignacio Gimenez Nadal) Centre for Time Use Research Department of Sociology and Economcis University of Oxford

“The basis on which good repute in any highly organized industrial community ultimately rests is pecuniary strength; and the means of showing pecuniary strength, and so of gaining or retaining a good name, are leisure and a conspicuous consumption of goods” Thorstein Veblen (1953), Chapter 4.

Introduction The amount of leisure has increased in the US over the period , but more for low-educated adults than for highly educated adults Wages, income, and consumption have increased relatively more for highly educated adults

Motivation Understanding why less-educated adults have increased their relative consumption of leisure in the last twenty years, the same period in which wages and consumption expenditures increased faster for highly educated adults, can help us in interpreting well-being inequality in the US

This Paper Three classes of indicators that capture the quality of leisure: –“Pure leisure” – “Co-present leisure” With spouse With other adults – “Leisure fragmentation” Leisure intervals Poverty in the duration of leisure

Contributions Our work expands the existing literature on measuring changes in the allocation of time in the US by providing a more comprehensive account of leisure Our work also contributes to a recent broadening of focus from production to the measurement of well-being and quality of life (Stiglitz et al (2009)) Our indicators provide a basis for weighing the relative growth of leisure for the less educated against the simultaneous decline in relative wages and consumption

Diff Leisure Time (<0.01) (0.71)(0.58)(0.71)(0.52)(0.33) Percentage Pure Leisure (<0.01) (0.86)(0.80)(0.98)-- Percentage Leisure with Spouse (0.01) (1.36)(1.26)--(0.67) Percentage Leisure with Adults (<0.01) (1.16)(1.07)--(0.59) Normalized number of Leisure Intervals (<0.01) (0.36)(0.26)(0.33)(0.21)(0.13) Poverty in the Duration of Leisure Intervals (<0.01) (0.70)(0.87)(0.56)(0.48)(0.41) Nº Observations 8541, ,4976,182 Table 1-A. US Leisure Trends, Men

Diff Leisure Time (<0.01) (0.54)(0.46)(0.60)(0.44)(0.27) Percentage Pure Leisure (<0.01) (0.79)(0.60)(0.93)-- Percentage Leisure with Spouse (<0.01) (1.27)(1.05) Percentage Leisure with Adults (<0.01) (1.09)(0.86)--(0.51) Normalized number of Leisure Intervals (<0.01) (0.27)(0.20)(0.28)(0.18)(0.11) Poverty in the Duration of Leisure Intervals (<0.01) (0.61)(0.63)(0.62)(0.54)(0.42) Nº Observations 1,0481, ,8887,557 Table 1-B. US Leisure Trends, Women

Empirical Specification Y it is the dependent variable measuring the quantity/quality of leisure for individual i in survey t D it is a vector of year dummies that are equal to one if the individual i participated in the time-use survey conducted in year t and zero otherwise The superscript e represents our education categories We follow Aguiar and Hurst (2009) and consider two different educational levels: less than a high school diploma (less than 12 years of schooling, i.e. E=<12), and some college and a college degree or more (13 or more years of schooling, i.e. E=13+) Demographic controls in the vector X it include a vector of age dummies (whether individual i is in his or her 20s, 30s, 40s, 50s or 60s in year t), a dummy variable that takes value one if the respondent i has at least one child and zero otherwise, and dummy variables for the different days of the week (ref: Friday).

Low EducationHigh EducationDifference β e<= β e> β e Leisure Time 5.26***4.44***0.82 (0.03) (0.30)(0.24) Percentage Pure Leisure -6.33***-3.54***-2.79 (<0.01) (0.14)(0.16) Percentage Leisure with Spouse -5.97*** (<0.01) (0.18)(0.34) Percentage Leisure with Adults ***-6.81***-3.72 (<0.01) (0.72)(0.49) Normalized number of Leisure Intervals 1.55***0.60**0.95 (<0.01) (0.09)(0.14) Poverty in the Duration of Leisure Intervals 4.63***0.95**3.68 (<0.01) (0.08)(0.27) Table 2-A. US Leisure Trends by Education Level, Men

Low EducationHigh EducationDifference β e<= β e> β e Leisure Time 5.47***2.09***3.38 (<0.01) (0.12)(0.05) Percentage Pure Leisure -6.80***-4.35***-2.45 (<0.01) (0.38)(0.29) Percentage Leisure with Spouse 2.74**8.11***-5.37 (<0.01) (0.41)(0.11) Percentage Leisure with Adults -4.69***-4.89***0.19 (0.05) (0.06)(0.08) Normalized number of Leisure Intervals 3.98***3.33***0.66 (<0.01) (0.06)(0.02) Poverty in the Duration of Leisure Intervals 5.79***6.89***-1.10 (<0.01) (0.11)(0.05) Table 2-B. US Leisure Trends by Education Level, Women

Low EducationHigh EducationDifference β e<= β e> β e Leisure Time 6.98***5.04***1.94 (<0.01) (0.11)(0.02) Percentage Pure Leisure -7.70*** (<0.01) (0.33)(0.83) Percentage Leisure with Spouse 4.16***10.58***-6.43 (<0.01) (0.17)(0.41) Percentage Leisure with Adults -1.08**-3.41**2.33 (<0.01) (0.14)(0.36) Normalized number of Leisure Intervals 4.41***4.62***-0.20 (<0.01) (0.04)(0.02) Poverty in the Duration of Leisure Intervals 7.32***5.98***1.34 (<0.01) (0.04)(0.11) Table 2-C. USLeisure Trends by Education Level, Working Women

Importance of TV Time spent watching television represents the highest proportion of total leisure time (44% of leisure time for highly educated individuals, and 52% of leisure time for low educated individuals) One of the most important contributors to the increase in leisure during this period To the extent that watching television can be considered low quality leisure, the fact that the time devoted to this activity has increased slightly more for low educated individuals over this period may explain why the quality of leisure declined more for low than for highly educated adults

Low EducationHigh EducationDifference β e<= β e> β e Leisure Time ***0.36 (<0.01) (0.06)(0.08) Percentage Pure Leisure -6.43**-5.48***-0.96 (0.36) (0.80)(0.52) Percentage Leisure with Spouse -3.99***1.86**-5.84 (<0.01) (0.26)(0.36) Percentage Leisure with Adults -3.02**-4.45***1.43 <0.01) (0.47)(0.28) Normalized number of Leisure Intervals -1.44***-1.96***0.52 (<0.01) (0.02)(0.09) Poverty in the Duration of Leisure Intervals 12.66***3.70***8.96 (<0.01) (0.10)(0.28) Table 3-A. US Leisure Trends without TV, Men

Low EducationHigh EducationDifference β e<= β e> β e Leisure Time -1.81***-3.77***1.96 (<0.01) (0.09)(0.03) Percentage Pure Leisure -8.70***-3.64***-5.06 (<0.01) (0.60)(0.19) Percentage Leisure with Spouse -1.35***4.12***-5.46 (<0.01) (0.07)(0.13) Percentage Leisure with Adults -6.58***-6.43***-0.15 (0.58) (0.28)(0.09) Normalized number of Leisure Intervals -0.39***-0.48***0.10 (0.13) (0.07)(0.02) Poverty in the Duration of Leisure Intervals 11.93***11.33***0.59 (<0.01) (0.14)(0.12) Table 3-B. US Leisure Trends without TV, Women

Validation Exercise using Enjoyment Data where i is the individual (or a diary) and j is the episode in the diary characterized by a unique primary activity. E i,j is the activity enjoyment “rating”. A linear transformation ((5.5-rate)*2) of the UK activity rating scores produces a 5 point, 1-9 positive scale centered similarly to the US rating. Treating the rating scales (for the purpose of this validation exercise but not elsewhere in this paper) as if they have equal intervals, the transformed UK ratings mean score is of 6.86 and standard deviation of 2.13, which compares neatly with the US mean of 6.99 and standard deviation of The UK survey collected 5 days of data from each diarist, we thus present the more conservative robust standard errors clustered at the respondent level as the basis for significance testing.

I i,j vector contains a dummy variable indicating whether the episode of leisure is being done at the same time as a work activity, whether a particular leisure episode is being done with the spouse, and whether it is being done with other adults. It also contains the number of leisure episodes in the diary.

X i,j includes socio-economic variables of the individual, which include age, age squared, sex, an indicator variable for part time and full time work, an indicator variable that takes value one if there is a child under 5 at home, and another indicator variable that takes value one if there is a child between 5 and 18 years old living in the household.

A i,j includes six dummy variables indicating the nature of the leisure activity being done. These are classified into “out of home leisure”, “active sport and exercise”, “read and listening to music”, “watch television” (reference activity), “other leisure at home” and “writing”

Leisure dilution Demographic variablesLeisure Activity variables primary leisure secondary workDWomanDCprimary in-home leisureD AgeCprimary out of home leisureD Leisure fragmentationage squaredCprimary active sport exerciseD daily number leisure periods Cemployed full timeDCprimary read, listen to musicD employed part timeDCprimary watch televisionD Co-present leisure (UK only)has child aged under 5DCprimary writing, paperwork etcD spouse present during activityDhas child age 5-18DC friend present during activityD Variables Used in the Validation Exercise

Rating(1)(2)(3)(4) Number of leisure Intervals-0.065***-0.075*** *** (0.010) (0.016)(0.009) Leisure combined with work-0.480***-0.306***-0.306**-0.226** (0.106)(0.105)(0.149)(0.101) Leisure with no Secondary Activity Spouse present during activity Adults present during activity Out-of-home leisure (Ref.: TV)-0.768*** 1.009*** -(0.065)(0.099)(0.067) Exercise (Ref.: TV)-0.909*** 1.117*** -(0.070)(0.092)(0.073) In-home leisure (Ref.: TV)-0.403*** 0.486*** -(0.054)(0.077)(0.052) Reading/Listening (Ref.: TV)-0.185***0.185**0.190*** -(0.066)(0.082)(0.063) Writting/Paperwork (Ref.: TV) * (0.064)(0.083)(0.064) Table 4-1. Regressions on activity enjoyment rating, the US 1985

Rating(1)(2)(3)(4) Number of leisure Intervals-0.049***-0.053***-0.053*-0.062*** (0.014) (0.027)(0.018) Leisure combined with work-0.200**-0.154* (0.085)(0.083)(0.111) Leisure with no Secondary Activity-0.165***-0.149**-0.149*(0.134) (0.063)(0.062)(0.090)(0.084) Spouse present during activity0.139***0.197*** 0.231*** (0.035) (0.066)(0.047) Adults present during activity0.430***0.136***0.136*0.177** (0.047)(0.049)(0.077)(0.073) Out-of-home leisure (Ref.: TV)-0.697*** 1.101*** -(0.043)(0.080)(0.060) Exercise (Ref.: TV)-1.105*** 1.702*** -(0.088)(0.106)(0.149) In-home leisure (Ref.: TV)-0.445*** 0.705*** -(0.051)(0.110)(0.068) Reading/Listening (Ref.: TV)-0.449*** 0.584*** -(0.068)(0.096)(0.089) Writting/Paperwork (Ref.: TV) (0.149)(0.184)(0.183) Table 4-1. Regressions on activity enjoyment rating, the UK 1986