Labour force surveys for measuring employment in the informal sector and informal employment Ralf Hussmanns Head, Methodology and Analysis Unit Bureau.

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Presentation transcript:

Labour force surveys for measuring employment in the informal sector and informal employment Ralf Hussmanns Head, Methodology and Analysis Unit Bureau of Statistics International Labour Office

Measurement objectives (1) n Monitoring of informal (sector) employment: number & characteristics of persons involved, conditions of employment & work. n Method: household surveys (labour force surveys). n Reporting units: households. n Observation units: household members. n Periodicity: annual (if possible).

Measurement objectives (2) n Measurement of number & characteristics of IS enterprises: employment, production, income generation, organisation & functioning, constraints & potentials, etc. n Method: informal sector surveys (establishment surveys, mixed household & enterprise surveys). n Reporting units: IS entrepreneurs. n Observation units: IS enterprises. n Periodicity: every 5 years (if possible).

Measurement: informal sector employment and informal employment n Many countries have already made positive experiences in using labour force surveys as a source of data on employment in the informal sector. n Labour force surveys appear to be the best survey instrument for measuring informal employment.

LFS as source of data on employment in the informal sector and informal employment – Advantages (1) n Low cost of including some additional questions relating to the definitions and characteristics of informal sector employment/informal employment. n Periodic inclusion of such questions permits the number and characteristics of persons working in the IS or in IE, and the conditions of their employment and work, to be monitored over time. n Macro-level data linkages with corresponding data on formal sector employment/formal employment unemployment and underemploymemt.

LFS as source of data on employment in the informal sector and informal employment – Advantages (2) n Micro-level data linkages with all other data collected by the survey for the same respondent. n Total population (or WAP) can be classified into employed, unemployed and economically inactive, and the employed by status in employment, formal/informal nature of the jobs, type of production units involved (formal/ informal sector enterprises, households), etc.

LFS as source of data on employment in the informal sector and informal employment – Advantages (3) n LFS can be used as first phase of a mixed household and enterprise survey on the informal sector (Armenia, Georgia, etc.). n LFS data on informal sector employment can be used to evaluate data on informal sector employment obtained from surveys of informal sector enterprises (incl. data from 2 nd phase of a mixed survey). n LFS data on labour inputs to informal sector activities can be used to extrapolate less frequent data from specialised informal sector surveys on other characteristics (e.g. value added) of informal sector enterprises.

LFS – Design considerations (1) n Additional questions relating to the definitions and characteristics of informal sector employment/informal employment to be asked of all employed persons irrespective of their status in employment, including employees and contributing family workers. n LFS reaches employees of IS enterprises directly. But: For employees, questions on some of the enterprise characteristics may have to be formulated differently (unless estimates of employment in the IS are based on number of workers reported by owners of IS enterprises).

LFS – Design considerations (2) n To avoid underestimation: Questions for identification of informal sector employment/informal employment to be asked in respect of the respondents’ main and secondary jobs. n Self-respondents and proxy-respondents should be able to answer these questions. n Persons can be classified in the IS or IE only if they have been identified as employed in the first place:

LFS – Design considerations (3) n Special probes needed on activities/jobs that might otherwise go unreported as employment (e.g. unpaid work in small family enterprises, home-based work, unregistered work, casual jobs, informal activities done as secondary jobs, etc.). n To capture work of children in the informal sector/informal jobs, possible need to lower the age limit for measurement of the economically active population. n Sample design: need to include in the sample an adequate number of areas where informal workers live.

LFS as source of data on the informal sector and informal employment – Limitations n Unless LFS is undertaken at sufficiently frequent intervals or spread over a year, short reference period (one week) for measuring employment may not capture seasonal and other variations over time of informal sector activities/informal jobs. n Business partnerships: difference between number of IS entrepreneurs and IS enterprises makes estimation of number of IS enterprises difficult (if not impossible). n Depending on sample size and design, no detailed subclassifications of data possible (e.g. by industry).