| Literature DB >> 33082738 |
Abstract
Intersectionality has received an increasing amount of attention in health inequalities research in recent years. It suggests that treating social characteristics separately-mainly age, gender, ethnicity, and socio-economic position-does not match the reality that people simultaneously embody multiple characteristics and are therefore potentially subject to multiple forms of discrimination. Yet the intersectionality literature has paid very little attention to the nature of ageing or the life course, and gerontology has rarely incorporated insights from intersectionality. In this paper, we aim to illustrate how intersectionality might be synthesised with a life course perspective to deliver novel insights into unequal ageing, especially with respect to health. First we provide an overview of how intersectionality can be used in research on inequality, focusing on intersectional subgroups, discrimination, categorisation, and individual heterogeneity. We cover two key approaches-the use of interaction terms in conventional models and multilevel models which are particularly focussed on granular subgroup differences. In advancing a conceptual dialogue with the life course perspective, we discuss the concepts of roles, life stages, transitions, age/cohort, cumulative disadvantage/advantage, and trajectories. We conclude that the synergies between intersectionality and the life course hold exciting opportunities to bring new insights to unequal ageing and its attendant health inequalities.Entities:
Keywords: Cumulative disadvantage; Health inequalities; Intersectionality; Life course; Unequal ageing
Year: 2020 PMID: 33082738 PMCID: PMC7561228 DOI: 10.1007/s10433-020-00582-7
Source DB: PubMed Journal: Eur J Ageing ISSN: 1613-9372
Initial guidelines for using intersectionality in research on inequality
| Topic | Description | Guidelines and key issues |
|---|---|---|
| Defining intersections | Researchers need to decide which axes of inequality are included, how categories within each axis will be defined, and which resulting intersectional subgroups to focus on | Gender, ethnicity, socio-economic position, and age are fundamental dimensions of inequality and should be considered as a minimum. Efforts should be made to include further dimensions such as nationality and sexuality given gaps in knowledge in relation to these inequalities Taken-for-granted categorisations such as male/female and White/non-White should be questioned given their potential exclusion of marginalised people Two approaches are (i) mapping advantage/disadvantage across multiple axes of inequality and (ii) focussing on more specific intersections, informed by existing knowledge/theory. Both are justified depending on the topic/aims Too much complexity loses sight of commonalities between people and may weaken the basis for collective action |
| Individual heterogeneity | Even within tightly defined intersections, substantial individual heterogeneity will remain, in terms of unequal ageing/health outcomes or otherwise | It is important to distinguish between individual prediction and population level patterns; belonging to an intersectional position does not define or determine individual experience. Rather, intersectional patterning is shaped by societal factors, which can generate evidence for inequity policy People have agency and resilience to resist structural power and sources of oppression acting on their intersectional position/identity An intersectional perspective can itself inadvertently lead to stereotyping if heterogeneity is not kept in mind Intracategorical approaches, e.g. using qualitative methods are well-suited to exploring the richness of individual experience within intersectional subgroups |
| Use of interaction terms | Interaction terms are the main way in which researchers have so far analysed intercategorical intersectionality | Interaction terms should be specified to account for multiplicative intersectionality; otherwise, erroneous subgroup comparisons can result However, the absence of a significant interaction term does not falsify intersectionality, as it is above all a framework to understand heterogeneity and social power rather than a hypothesis Interaction terms can be specified in a range of models, but their interpretation varies for linear versus nonlinear models |
| Multilevel analysis of individual heterogeneity and discriminatory accuracy (MAIHDA) | An approach to analysing intersectionality specifically focussed on subgroup inequalities and heterogeneity | MAIHDA distinguishes individual versus intersectional variation, i.e. the extent to which intersections discriminate between individuals It is an alternative approach to specifying interaction terms, focussing instead on granular subgroup differences It is so far limited to cross-sectional analyses; uses age categories It can handle small or empty intersectional cells, which are problematic when using interaction terms It can distinguish additive/multiplicative effects both for individual intersections and across the whole sample. Careful interpretation of these effects is required Existing studies provide syntax examples for most popular software Inherently exploratory with regard to finding specific intersectional effects. Replication is crucial |
Synthesising intersectionality and life course analyses to understand unequal ageing
| Areas of synergy | Description | Examples and potential approaches |
|---|---|---|
| People change intersectional subgroups over the life cycle and could therefore be said to follow an ‘intersectional trajectory’ | People occupy a series of structural positions/social identities over the life cycle Social axes of inequality are both causes and consequences of social stratification Gender and ethnicity are relatively stable characteristics, while SEP changes over the life cycle Intersectional trajectories might be consistent with age as leveller, persistent inequality, or cumulative disadvantage/advantage patterns of unequal ageing Social roles in relation to reproduction and production, as well as personal relationships, are intertwined with intersectional trajectory Social roles and relationships channel individual actions and decisions The norms and meanings regarding key roles and transitions may be intersectionally patterned | Examine how people navigate role transitions and intersectional patterning in this Analyse ethnicity by gender outcomes depending on time spent in certain SEPs (duration) at what age (timing/critical periods), how the order of SEP statuses might influence health (sequential effects), or how certain SEP transitions might constitute a big life change (turning points) Aisenbrey and Fasang ( Dressel et al. ( Richardson and Brown ( |
| People employ agency to resist discrimination and shape their own identities across the life cycle, within given constraints | Resource constraints and institutional structures limit the possibilities for agency Risks in relation to knowledge and information, e.g. in relation to the pension system may be intersectionally patterned People actively shape their positions/identities over time based on their age, gender, ethnicity, class, and other characteristics | Holman et al. ( Walker and Naegele ( |
| Intersectional patterning and its significance for unequal ageing varies by historical time and spatial context | Different schools, neighbourhoods, regions, or countries have different intersectional diversity, which changes over time (e.g. changing numbers of professional ethnic minority women) Intersectional subgroups take on different meanings in different contexts. It means something different to be a working-class 55-year-old Black woman in 1920 versus 2020, and in the UK versus the USA Intersectional patterning may have more explanatory power with respect to unequal ageing in certain historical times and spatial contexts than in others From an intersectionality perspective, discriminatory norms, policies, and institutions are key explanations for why intersectional outcomes vary by context (see below) | Examine time/place differences in intersectional diversity Conduct MAIHDA analysis to examine within and between intersectional variation in different historical times and spatial locations to understand explanatory power of intersectional patterning Examine the ageing of different cohorts of disabled people and people with intellectual disabilities Compare relevance of area deprivation versus individual SEP in explaining health inequalities, and how this varies by age, gender, and other axes of inequality Examine the relevance of age in deprived neighbourhoods or deprivation in neighbourhoods with a high average age Conduct intersectional analyses on a local or regional scale to generate place-specific evidence Informal care role of older adults may change in neighbourhoods with high unemployment (Dressel et al. |
| People are affected by multiple forms of discrimination over the life cycle and according to historical time and spatial context | The impact of discrimination on unequal ageing depends on life course dynamics, e.g. duration, timing/critical periods, sequential effects Sustained discrimination over the life cycle on the basis of characteristics other than age influences how later life age discrimination is experienced Meso-level discriminatory mechanisms, e.g. labelling of individual potential, and the social-psychological dynamics of internalised incompetence reproduce inequalities over the life cycle Individuals experience differential ‘institutional imbrication’, i.e. exposure to multiple policies/institutions/stereotypes not only based on their intersectional position/identity, but on their country, age, and cohort Experiences of discrimination varies by time and place depending on the prevalent ‘matrix of domination’ (see below) | Analyse inequalities in life expectancy and healthy life expectancy according to age, cohort, gender, race, and ethnicity Examine differences in reported interpersonal discrimination across time and place Examine how individuals experience multiple forms of discrimination across different contexts, e.g. ageism in one policy and sexism in another, and multiplicative forms of discrimination, e.g. some policies are both sexist and ageist Policy contexts can be used to interpret individual outcomes, can be directly linked to individual data, or cross-national panel data can be used for a comparative perspective of changing policy contexts over time Bécares and Zhang ( Dressel and Barnhill ( |
| Ageism, sexism, racism, and other forms of discrimination and their interconnections (the ‘matrix of domination’) vary by historical time and spatial context | Social policies and institutional practices, such as the welfare state, education, immigration, social care, and retirement are more or less discriminatory depending on historical time and spatial context Such policies and practices can discriminate on the basis of single or multiple social characteristics The wider socio-political context, e.g. austerity and neoliberalism shapes discrimination and oppression The nature and prevalence of stereotypes changes over time | Policy analysis of how policies discriminate based on both single and multiple axes of inequality at a time, e.g. ageism and stereotypes of older men versus women The transformation from ‘worn out’ older workers of the early twentieth century to the ‘productive ageing’ of the early twenty-first century (Macnicol Shifts in the visual stereotypes of older women over time (Warren The cultural turn in ageist stereotypes from physical limitations to cosmetic appearance, with a particularly severe impact on older women (Twigg |