Labor market accessibility and unemployment Therese Norman Maria Börjesson, Christer Anderstig Purpose • How do increased labor market accessibility due to transport investments induce changes in the unemployment rate? Mechanisms/Hypothesis • Generosity of welfare system; income taxation increases unemployment. • Transport system can correct for this distortion (Ihlanfeldt & Sjoquist, 1998; Brueckner & Martin, 1997; Brueckner & Zenou, 2003) • Reservation wages (Åslund, Öst & Zenou; 2010) • Search costs (Mortensen, 1987; Isacsson, 2003; Duranton & Puga, 2004; Pilegaard & Fosgerau, 2008; Smith & Zenou, 2003; Stoll, 1998) Lower transport costs -> may reduce commuting cost, hence decrease unemployment Data ΔAT A 1985 1993 ΔAE 1997 ΔE 2002 • A: Initial job accessibility (1985) • • ΔAT: Changes in job accessibility due to changes in the transport system (85-97) (changes in generalized travel costs) ΔE: Employment rate change (93-02) • ΔAE: Changes in job accessibility due to employment changes (93-02) Data Grouped data of individuals based on (34503 segments): • • • • • Municipality of residence Gender Age (6 categories) Education (4 categories) Native (Swedish, Nordic, Non-nordic) Dependent variable: Model 3 πΈπ,π = exp(π’) , 1+exp(π’) π’ 1 0−2 2 = πΌ + β1 πΈπ,π + π½2 ln π΄0π + π½3 Δπ΄0−2 + π½ Δπ΄ + π½5 Δπ΄1−3 4 π,π π,π πΈ,π + β6 π΄πππ,π + π½7 πππππ,π + π½8−10 πΈππ’π,π + π½11−12 πππππππ,π + π½13 ΔπΏπ_π πππ,π + β15 βπΏπ_ππππ + β15 πΆππ‘π¦π + ππ,π Ei,r = Employment rate in group i and municipality r Ar = Initial accessibility AT,r = Accessibility change due to transport system AE,r = Accessibility change due to employment Accessibility • π΄0π = 1 π πΈπ ππ₯ π • πππ = π∈π π∈π π∈π 0 ππππ π ππππ ππππ π∈π π ππππ • ο² is a negative sensitivity parameter • Accessibility change due to changes in transport • Δπ΄0−2 π,π = 1 π πΈπ 1 π πΈπ 2 ππ₯π ππππ 0 ππ₯π ππππ , • Accessibility change due to changes in employment • Δπ΄1−3 πΈ,π = 1 π πΈπ 3 π πΈπ 0 ππ₯π ππππ 0 ππ₯π ππππ , Data LMR DEPENDENT VAR. MEAN Small MIN Large MAX MIN Small MAX Large 0.95 0.95 0 1 0 1 π¨ππ 8.57 10.47 7.00 9.28 9.28 12.78 π«π¨π−π π»,π 1.30 1.09 0.85 5.57 0.46 3.75 π«π¨π−π π¬,π 1.01 1.08 0.84 1.23 0.86 1.17 βπ·πππ -0.06 0.03 -0.19 0.30 -0.13 0.30 0.88 0.89 0 1 0 1 π¬ππ,π MUNICIPAL EXPLANATORY VAR. SEGMENTAL EXPLANATORY VAR. π¬ππ,π Employment Job accessibility All municipalities Small LMR Large LMR (1) (3) (4) 0.165*** 0.020 0.302*** (0.007) (0.021) (0.010) βAT 0.358*** 0.248*** 0.344*** (0.038) (0.050) (0.073) βAT2 -0.062*** -0.048*** -0.061*** (0.008) (0.010) (0.018) 0.707*** 1.235*** 0.437** (0.128) (0.209) (0.182) Indep. Var. lnA0 Improvements of the transport system increases the employment rate with an elasticity of 0.01. βAE D_City βLS_agg -0.507*** (0.017) (0.020) -0.739*** 3.020*** -1.423*** (0.119) (0.251) (0.141) ΔLS_seg -1.621*** 0.111 -2.854*** (0.152) (0.296) (0.214) E93 3.012*** 2.736*** 3.026*** (0.051) (0.083) (0.066) -0.018* -0.045** -0.012 (0.010) (0.020) (0.012) -0.115*** -0.173*** -0.100*** (0.004) (0.008) (0.005) 0.207*** 0.129*** 0.221*** (0.013) (0.026) (0.015) 0.468*** 0.596*** 0.455*** (0.017) (0.043) (0.020) 0.744*** 0.923*** 0.722*** (0.019) (0.055) (0.021) -0.809*** -0.635*** -0.829*** (0.014) (0.039) (0.017) -0.265*** -0.436*** -0.250*** (0.024) (0.040) (0.030) 0.165*** 0.020 0.302*** (0.007) (0.021) (0.010) 29,869 13,478 16,391 0.228 0.243 0.225 D_Male Age Diminishing returns -0.409*** D_Education2 D_Education3 D_Education4 D_Non-nordic D_Nordic Constant Observations AIC Segmented on education level Education level Elasticity of E w.r.t. AT Primary 0.013 Secondary 0.010 Higher level: ≤ 3 years 0.010 Higher level: ≥ 4 years 0.005 Education level proxy for wage prospects Reservation wages more important for low income groups . Methodological issues • Reflecting the transport system by using detailed data: -The accessibility measures is taken directly from a transport model, taking into account commuting behavior and perceived generalized costs of all travel modes in use. This also makes it compatible with measures used in standard cost-benefit analyses. -Reducing endogeneity: -The change in job accessibility from a previous period is estimated rather than the level. -The accessibility measures are divided into two variables in order to pinpoint the accessibility change induced by (i) changes in the transport system rather than (ii) changes in the number of jobs. -Controlling for changes in the socio-economic composition of the population by use of disaggregated data. Case study “Åtgärdsplanen 2010-2020” Conclusions • Improvements in job accessibility due to changes in the transport system have a positive impact on employment level, elasticity 0.01 • The impact increases with lower education level (income level) • Consistent with theories on reservation wages