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Heterogeneity of the labour input: methodological issues in constructing labour quality measures By Mary OMahony, Catherine Robinson, Michela Vecchi Helsinki.

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Presentation on theme: "Heterogeneity of the labour input: methodological issues in constructing labour quality measures By Mary OMahony, Catherine Robinson, Michela Vecchi Helsinki."— Presentation transcript:

1 Heterogeneity of the labour input: methodological issues in constructing labour quality measures By Mary OMahony, Catherine Robinson, Michela Vecchi Helsinki June 2005

2 Importance of labour quality In productivity studies: different types of labour have different productivities Estimates of the Solow residual Importance of skills Increasing importance of education in the IT economy

3 Computation of a quality adjusted labour input Where h are labour force characteristics Education/qualification Age Gender

4 Data used in this study UK LFS, 1996-2002, 47 industries Five skill groups have been identified

5 Data Gender distinction 3 age bands: under 30, between 30 and 45, over 45 Estimated returns to skills: Use LFS microdata and Mincer wage equation (OMahony and Stevens 2005)

6 Inconsistent or missing data

7 Outliers in the data

8

9 Employment data

10 Summary of the problem Desirable data Ws1a1g1 Ws2a1g1 Ws1a2g1 Ws2a2g1 Available data Wa1g1 Wa2g1 Example: 2 skill groups, 2 agebands, 2 genders

11 Estimated quality adjusted labour Mincer equation (Mincer 1974):

12 Derivation of the correction term Generalised to N skill groups:

13 Corrected data Available data Wa1g1 Wa2g1 Desirable data Ws1a1g1 Ws2a1g1 Ws1a2g1 Ws2a2g1 Corrected data Wa1g1* Wa2g1*

14 Estimated quality adjusted labour wage bill share Average wage by skill, age and gender

15 Figure 2

16 Figure 3

17 Figure 4

18 Aggregate quality adjusted labour Data for the distributive sector (d) to calculate the returns to education For each skill, age and gender group

19 Figure 5

20 Figure 6

21 Figure 7

22 Figure A.1

23 Figure A.2

24 Figure A.3

25 Conclusions The two methodologies give a good approximation of the actual data Estimated QAL: allows to account for other factors affecting the returns to education but assumes equal returns across all industries Aggregate QAL: less refined but allows for different returns in more broadly defined industry groups


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