This paper focused on estimating the participation rate of care giving to elders. We used a theoretical model frame that was in common use for analyzing activity in the labor market and adjusted it for analyzing the care giving rate in elders. Using data of the rate of start taking care and the rate of end taking care in elders from the Survey of Health, Aging and Retirement in Europe we evaluated the rate of "caregivers" in whole population at age over 50 and among males, females, people in labor force and out of labor force. According to our results, the lowest care rate is among men 16.8%, and the highest is among females 18.88%, while for whole population at age over 50, the care rate is 18.2%. According to our findings, there is a very high end of care rate from treatment in all population groups, pointing to the existence of a very large substitution among caregivers, mainly among people not in labor force (76.2%).
Given global population aging and increased longevity, the oldest old (over 85) is the fastest-growing segment, and so family care has become a near universal experience (WHO, 2002) [
By 2014, Israeli society comprised about 8.7 million people, among them 10%, 870,000, were aged over 65 and older (Brodskym Shnoor & Béer, 2014) [
In order to improve our understanding of the state of care givers, we suggest concentrating attention on two groups: the first is elders in need of care and the second is people who potentially can take care of the first group.
Assuming that each elder is taken care of by one care giver1, group 2a and 1a are identical.
In this paper, we intend to evaluate the rate of individuals aged over 50 who give care to elders (group 2a in
The change in the rate of elder care according to the flows in and out of care largely resembles the process that changes the rate of unemployment in the labor market. In this paper, we use a frame of a model that has already been used by economists for estimating the main factors affecting the labor market. The matching function model with two-sided search (developed by Pissarides (1984) [
Assuming that transition probabilities in and out of care are determined endogenously (but are also affected by exogenous changes), we can apply the basic frame of the search model in order to estimate the rate of care giving for elders.
Elders needing care and potential caregivers are matched with each other according to prevailing matching technology. We assume that the number of matches formed at any moment of time is a well-behaved function of the economic, social, and health characteristics of the elder and of the potential care givers. In steady state, one flow persists out of the stock of “members who are caregivers” and one flow in. The flow out is due to the destruction of existing matches and the flow of dying elders and the flow in is the number of elders who are matched to new care givers.
There are L homogeneous number of potential care givers and let ui denote the rate of “members who are taking care of someone”.
The probability of new match,
where
Given elders’ and potential caregivers’ attributes, the matching function, (1) defines the probability that a new match will occur.
We assume that the end of care rate from a match, St, is defined by (2):
where
Let the natural rate of growth of the potential care givers be n3 and let us define:
ut: the rate of members who are taking care of someone out of the total number of potential care givers4;
Lt: the total number of potential care givers.
We get that
Given that
In steady state, the mean rate of caregivers (
Rearranging Equation (3), in steady state, the rate of “caregivers” is determined in equilibrium as a function of the natural growth rate the population of the potential caregivers, the end of care rate, and the probability that a new match will occur between a caregiver and an elder:
The current study is based on data from the first two waves of SHARE-Israel, tracking the provision of support by persons aged over 50 from the population interviewed in both waves (hereinafter: the traced population).
The Survey of Health, Aging and Retirement in Europe (SHARE) is a longitudinal survey launched more than ten years ago to study Europe’s changing demographic trends. SHARE-Europe seeks to better understand the dynamics of the growing population of persons aged over 50. In addition, it aims to provide a research infrastructure for public policy making on behalf of the aging population. Its data provides a unique way to compare the economic situation, health, and welfare of older people in different European countries over time. Twenty countries across Europe have taken part thus far (including Israel) and over 85,000 men and women aged 50+ and their spouses have been interviewed. Israel joined the SHARE project in 2005 and has participated in the first wave (2005-2006) which queried more than 2500 respondents and the second wave (2009-2010) which canvassed a similar number. The traced population numbers 1710 respondents, of whom 1250 are aged 50 - 69. The Wave 1 interviews took place between September 2005 and August 2006.
The respondents were asked, among other things, whether they had provided any individual (household member or otherwise) at least one of the following three types of assistance in the preceding twelve months: 1) personal help in matters such as dressing, bathing or showering, feeding, getting out of bed, and using the toilet; 2) practical household help such as repairs, taking care of the garden, transport, shopping, and housework; 3) help with paperwork, e.g., filling out forms or settling financial or legal affairs. The Wave 2 interviews were conducted between August 2009 and August 2010; the interval between the interviews in the two waves ranged from thirty-seven months to fifty-seven months. The descriptive statistics of the transitions among support-care- giving situations are based on weights of households in Wave 1. Respondents’ self-reportage about having provided support includes the following situations: “gave support” relates to a person who reported having another person (member of household or otherwise) providing at least one of the following three types of support in the preceding twelve months: personal care, practical household help, or help with paperwork. “Did not give support” relates to a person who reported not having given any person (household member or otherwise) at least one of the aforementioned three types of assistance in the preceding twelve months.
Using the longitudinal SHARE-Israel data base, we calculated the proportion of individuals who were taking care of an elder in wave 1, but did not take care of anyone in wave 2 and the proportion of individuals who did not take care of elders in wave 1, but started to take care of an elder in wave 2.
According to the results presented in
Substituting the data of
The result for the whole population is lower than reported data from Israel (Brodsky, Resnizky, & Citron, 2011) [
End of care Probability (took care of someone in Wave 1 Didn’t take care of someone in wave 2) | Probability to Start taking care of someone (didn't take care of someone in Wave 1 take care in wave 2) | |
---|---|---|
Whole population | 69.6 | 16.4 |
Male | 67.3 | 14.4 |
Female | 71.2 | 17.5 |
In Labor Force | 63.4 | 15.3 |
Not In Labor Force | 76.2 | 16.9 |
rate of “caregivers” | |
---|---|
18.22% | Whole population |
16.80% | Male |
18.88% | Female |
18.50% | In Labor Force |
17.40% | Not In Labor Force |
The high end of care rate from treatment points to the existence of a very large substitution among caregivers, mainly among people not in labor force (76.2%). Additionally, the possibility that in a period where the start taking care rate is low, a larger portion of elders will not be taken care of. A analogous situation has been noticed by researchers who studied the labor market. The findings concerning the labor market pointed to the fact that business cycles are driven primarily by large episodes of job destruction, with relatively stable levels of job creation (e.g., Davis and Haltiwanger (1990, 1992, 1999) [
Although there is a large interest in identifying transition probabilities and care rates among various social groups, data about care trajectories, and about the rate of people at age over 50 who are giving care to elders are sparse. In this paper, for the first time, we suggest a theoretical model that will enable the estimation of the proportion of the population engaged in taking care of the aged, among various population groups. Using data for Israel taken from the Survey of Health, Aging and Retirement in Europe (SHARE), we calculated the transition probabilities into and out of care in elder for several population groups.
Our main findings regarding individuals at age over 50 are that probability of start taking care is higher for females while the probability of ending care is higher for males leading to a higher care rate for females 18.9% comparing to 16.8% among males. These results are in line with the findings of (Uhlenberg & Cheuk (2008) [
According to our findings, there is a very high end of care rate from treatment in all population groups, pointing to the existence of a very large substitution among caregivers. The substitution in care is especially large among people out of labor force, whose probability to stop taking care is 76.2% (comparing to 63.4% among people in labor force).
This research was supported by an Israeli Science Foundation Grant.
The authors have contributed equally.
Ben David Nissim,Halperin Daphna,Kats Ruth,Lowenstein Ariela,Tur Sinai Aviad, (2016) A Method for Estimating the Participation Rate of Elder Care. Theoretical Economics Letters,06,474-479. doi: 10.4236/tel.2016.63054