Im Rahmen der IAB-Stellenerhebung werden Betriebe einmal jährlich zu konkreten sozialversicherungspflichtigen Neueinstellungen befragt. Auf dieser Basis lassen sich repräsentative Aussagen zu Ausmaß von Befristungen und damit verbundenen Sachgründen bei sozialversicherungspflichtigen Neueinstellungen treffen. Die zentralen Ergebnisse werden jährlich aktualisiert und an dieser Stelle publiziert.
Jahr: 2020
Perspectives on (Un-)Employment
Methodische Herausforderungen beim Übergang von persönlichen zu web-basierten Interviews in einer laufenden Panelstudie
Das Beziehungs- und Familienpanel pairfam steht vor tiefgreifenden Veränderungen: Im Zuge der Fusion mit dem Generations and Gender Program (GGP) zur gemeinsamen Forschungsinfrastruktur FReDA (Family Research and Demographic Analysis) wird auch das Erhebungsdesign der Panelstudie umgestellt. Die bisherigen Face-to-face-Interviews wird ab 2021 eine Mixed-mode-Befragung ersetzen, in der die Befragten zwischen einem web-basierten Interview und einem Papierfragebogen entscheiden können. Diese Entscheidung zieht weitere Veränderungen im Design nach sich, etwa hinsichtlich Frageprogramm und Filterführung, Verwendung von Preloads und Event-History-Calendar bis hin zum zeitlichen Verlauf der Studie. Gerade in einer laufenden Studie ergibt sich hierdurch das Problem, dass Moduseffekte Längsschnittanalysen verzerren können. In diesem Vortrag werden methodische Herausforderungen eines derartigen Moduswechsels in einer laufenden Panelstudie sowie unsere Vorbereitungen und methodische Begleitung des Moduswechsels dargestellt.
Different Paths to Success – Habitus, Career-patterns and the Reproduction of Social Inequality
Starting with a comparison between the life-course approach and Bourdieu, the study focuses the relation between social origin and habitus on typical patterns of education- and employment trajectories. Therefore, it tries to provide a test of the social reproduction theory of Pierre Bourdieu using a subsample of longitudinal data from the adult cohort of the German National Educational Panel Study (NEPS). Theoretically, we assume that the social class of one’s origin-family defines the process of socialization and hence the habitus of its members and is cumulative predictive for the generalizable patterns of educational- and employment sequences starting with school entry up to age 30. The individual or class-specific habitus as a “whole set of practices (or those of a whole set of agents produced by similar conditions)” (Bourdieu 1984:170) should hence correspond to differences in successful sequence-patterns, measured personality-traits and attitudes suggesting a stable class-specific realization of the habitus.
Patterns of occupational mobility – cyclical earnings inequality, unemployment and its duration distribution
The presentation is about the nature and how to clean errors in occupational coding in order to measure patterns of occupational mobility (US, UK and Canada). Furthermore it is shed light on how occupational mobility matters for cyclical earnings inequality (based on Carrillo-Tudela, Visschers and Wiczer, 2019), unemployment and its duration distribution (based on Carrillo-Tudela and Visschers, 2019) and cleansing and sullying effects of the business cycle (based on Carrillo-Tudela, Sumerfield and Visschers, 2019).
What is the Value Added by Using Causal Machine Learning Methods in a Welfare Experiment Evaluation?
Recent studies have proposed causal machine learning (CML) methods to estimate conditional average treatment effects (CATEs). In this study, I investigate whether CML methods add value compared to conventional CATE estimators by re-evaluating Connecticut’s Jobs First welfare experiment. This experiment entails a mix of positive and negative work incentives. Previous studies show that it is hard to tackle the effect heterogeneity of Jobs First by means of CATEs. I report evidence that CML methods can provide support for the theoretical labor supply predictions. Furthermore, I document reasons why some conventional CATE estimators fail and discuss the limitations of CML methods.
Sustainable growth in the EU: enhancing productivity growth while respecting the planetary boundaries
In the light of global megatrends such as ageing, globalisation, technological transformation and climate change, the 2019 ESDE is dedicated to sustainability.
One of the major sustainability challenges is sluggish productivity growth despite accelerating technological change and the increasing qualification levels of the EU labour force. We explore the preconditions for sustained economic growth, based on region-level and firm-level data analysis, focusing on complementarities between efficiency, innovation, human capital, job quality, fairness and working conditions. We identify policies that could boost productivity without increasing inequality.
We examine the impact of climate action on the economy and on employment, income and skills. In the light of EU welfare losses from climate inaction, we examine the sectors in which employment and value generation are taking place in the EU economy, estimate the overall impact of climate action in EU Member States, following a full implementation of the Paris agreement, on GDP and employment, as well as its potential impact on job polarisation.
Our main conclusion is that tackling climate change and preserving growth go hand in hand. We highlight a number of policy options to preserve the EU's competitiveness, sustain growth and spread its benefits to the entire EU population, while pursuing an ambitious transition to a climate-neutral economy.
CANCELLED – Higher Education Dropout and Labor Market Integration: Experimental Evidence
Thousands of students leave higher education without graduating, and worry about the negative consequences of dropping out on labour market success. However, research on how employers evaluate higher education dropouts is lacking. And while studies on school-to-work transitions are plentiful, most of them focus on the consequences of successfully attained educational qualifications – and ignore the consequences of unsuccessfully attempted qualifications.
Drawing on human capital, signalling, and credentialism theories, we conducted a series of factorial survey experiments with random samples of employers (N = 1350) to answer the following research questions: First, what is the causal effects of a dropout on the hiring prospects for different types of positions? Second, which factors facilitate labor market entry for dropouts?
Our findings indicate that employment chances depend heavily on the type of job dropouts compete for, and on the mode and duration of the study episode.
ABGESAGT – New Work – Ideen, Umsetzung, Stolpersteine in Wissenschaft, Unternehmen und Behörden
Statistical Profiling and Machine Learning in the area of Labour Market Policy
I will talk a bit on how we use machine learning in general in the area of labour market policy in DK, and how we relate this to our core business of producing results on employment and education.
As a specific example of our work, I will illustrate our statistical profiling of newly unemployed, both the technical/methodological side as well as the practical implementation and general experiences in this area, and some thoughts on further development.
Finally I will talk a bit on other more recent areas of developing datadriven solutions in the field of labour market policy, drawing perspectives to new possibilities deriving from machine-learning and modern Technology