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ARE CONSUMER HEALTH CONCERNS INFLUENCING DIRECT-FROM-PRODUCER PURCHASING DECISIONS?

Published online by Cambridge University Press:  21 March 2017

SUDHA THAPALIYA
Affiliation:
Department of Agricultural Economics, Mississippi State University, Mississippi State, Mississippi
MATTHEW G. INTERIS*
Affiliation:
Department of Agricultural Economics, Mississippi State University, Mississippi State, Mississippi
ALBA J. COLLART
Affiliation:
Department of Agricultural Economics, Mississippi State University, Mississippi State, Mississippi
LURLEEN M. WALTERS
Affiliation:
Department of Agricultural Economics, Mississippi State University, Mississippi State, Mississippi
KIMBERLY L. MORGAN
Affiliation:
Department of Agricultural and Applied Economics, Virginia Tech, Blacksburg, Virginia
*
*Corresponding author's e-mail: m.interis@msstate.edu

Abstract

Research has shown health concerns may motivate consumers to purchase foods sold at direct market outlets, yet connections between management of specific diseases and food purchase decisions remain unclear. We utilize a two-step decision framework to evaluate whether family incidences of six illnesses (cancer, heart disease, diabetes, obesity, back/joint pain, and Alzheimer's disease/dementia) affect decisions to buy food at farmers’ markets and farm stands. We find that cancer, diabetes, obesity, and back/joint pain influence the decision to purchase from farm stands. Disease incidences have varying directional effects on frequency of purchase for both farmers’ markets and farm stands.

Type
Research Article
Creative Commons
Creative Common License - CCCreative Common License - BYCreative Common License - NCCreative Common License - SA
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution, and reproduction in any medium, provided the original work is properly cited. The written permission of Cambridge University Press must be obtained for commercial re-use or in order to create a derivative work.
Copyright
Copyright © The Author(s) 2017

1. Introduction

Health motivations are a major driver of consumer food purchasing decisions (e.g., Chen et al., Reference Chen, Shogren, Orazem and Crocker2002; Food and Marketing Institute, 2013; Nayga, Lipinski, and Savur, Reference Nayga, Lipinski and Savur1998). Health motivation may be seen as a multidimensional system including the processes of choice, desire, and need for competency and self-determinism regarding one's health (Cox, Reference Cox1982). Consumers have become more conscious about health and nutrition over time (Darian and Tucci, Reference Darian and Tucci2011), and this increasing concern for health may be attributed to a rising prevalence of food-related chronic diseases such as diabetes, obesity, heart disease, cancer, and so forth (Darian and Tucci, Reference Darian and Tucci2011; McFadden and Low, Reference McFadden and Low2012; Meyerhoefer and Leibtag, Reference Meyerhoefer and Leibtag2010). Maples et al. (Reference Maples, Morgan, Interis and Harri2013) were among the first to examine the effect of family illness on the decision to purchase food directly from a producer. The authors found that presence of any illness they examined (cancer, heart disease, diabetes and obesity) in the respondent's family increased the likelihood of buying foods directly from producers; however, it was not possible to identify which of the specific diseases were driving the purchasing decision as they were aggregated into a single variable. Darian and Tucci (Reference Darian and Tucci2011) found that high nutritional value and the potential to reduce the risk of cancer or heart disease play a vital role in consumers’ purchase intentions. Similarly, Nayga, Lipinski, and Savur (Reference Nayga, Lipinski and Savur1998) found that consumers, particularly those on special diets, placed importance on nutrition and on following dietary guidelines while shopping.

There is also evidence that purchases of food directly from the producer specifically are partially determined by health concerns (Govindasamy, Italia, and Liptak, Reference Govindasamy, Italia and Liptak1997; Maples et al., Reference Maples, Morgan, Interis and Harri2013; Onozaka, Nurse, and McFadden, Reference Onozaka, Nurse and McFadden2010; Schneider and Francis, Reference Schneider and Francis2005; Thilmany, Bond, and Bond, Reference Thilmany, Bond and Bond2008; Wolf, Spittler, and Ahern, Reference Wolf, Spittler and Ahern2005; Zepeda and Li, Reference Zepeda and “2006). The U.S. Centers for Disease Control and Prevention (CDC) specifically targets increased fruit and vegetable consumption as a way to combat obesity, and has supported incentive programs designed to encourage purchase of healthy foods at local outlets such as farmers’ markets (Payne et al., Reference Payne, Wethington, Olsho, Jernigan, Farris and Walker2013). Studies have also shown that the density of local food outlets such as farmers’ markets and community-supported agriculture (e.g., Berning, Reference Berning2012; Salois, Reference Salois2012) or promotion of local food consumption (Conner and Levine, Reference Conner and Levine2007; Thompson, Harper, and Kraus, Reference Thompson, Harper and Kraus2008) are associated with positive health outcomes. Zepeda and Leviten-Reid (Reference Zepeda and Leviten-Reid2004) find that people perceive that local foods have direct benefits to their personal health, although hard science is inconclusive about whether local food is indeed healthier than less local food (Martinez et al., Reference Martinez, Hand, Da Pra, Pollack, Ralston, Smith and Vogel2010; Vogt and Kaiser, Reference Vogt and Kaiser2008).

Our study seeks to understand the impact of family disease incidence and of other health-related variables on purchases of food directly from a producer. We use online survey data of primary household food shoppers from six southeastern states. First, we evaluate how the occurrence of six particular illnesses (cancer, heart disease, diabetes, obesity, back or joint pain, and Alzheimer's disease or dementia) affects the decision to buy food at farmers’ markets and farm stands. As opposed to allowing respondents to indicate a general health concern or perceived likelihood of contracting illnesses in the future as has been done in existing studies, we capture self-reported occurrences of specific diseases in the respondents or their family. Second, we elicit whether consumers follow a special diet for treating illnesses, fitness, or dietary preferences to examine how diet affects decisions to purchase food directly from a producer. Third, we elicit additional health-related variables that may affect food purchasing decisions, such as lifestyle changes for health reasons or food safety concerns and current levels of physical activity.

Our study seeks to address the current lack of understanding of precise health motivations that may drive consumers to spend additional time and resources to seek out and purchase food directly from producers. A particular focus is on whether, and how frequently, southeastern consumers buy foods at farmers’ markets or farm stands, and we analyze these separate decisions in a two-step decision framework. Our findings add to the existing literature on factors influencing local food purchasing behavior as respondents were asked to report direct purchases from producers within the past 6 months. Findings from our study show different results for two markets. In the case of farm stands, most of the diseases have a positive and significant effect on the likelihood of food purchases. In the case of farmers’ markets, this likelihood, although positive, is not statistically significant. Apart from diseases, most of the other health variables positively and significantly affect the likelihood and frequency of purchases in both markets.

2. Data

We used data from an online survey of consumers living in Alabama, Florida, Georgia, Louisiana, Mississippi, and Texas who had recently purchased foods from local food outlets such as farmers’ markets and farm stands. The survey was administered by Research Now (based in Plano, TX), a large and well-known digital data collection company that has a large database of respondents who can be screened to reach a specific target audience. Potential respondents were screened to be over the age of 18 and to be the primary food shoppers in their households. In total, 4,707 respondents completed the surveyFootnote 1 in August 2013. Our sample was contrasted with respective state populations across demographic variables (Table 1) and determined to be fairly representative except that the sample is older than the population, likely because respondents were screened for adults who are primary food shoppers.

Table 1. Survey Respondent Demographics Compared with 2010 U.S. Census Bureau Data by State

Respondents were asked to indicate whether they had bought any food at least once in the past 6 months at farmers’ markets or farm stands and, if responding in the affirmative, the number of times they had made a purchase in the previous 30 days. Respondents were asked to indicate if they or any of their family members (spouse, siblings, father, mother, children, or grandparents) had been treated for cancer, heart disease, diabetes, back or joint pain, Alzheimer's disease or dementia, or obesity. Respondents were asked whether someone in their household follows a special diet to treat illness or stay fit or because of dietary preference (vegan or vegetarian) or religious reasons and whether they had made any changes to their own lifestyle for health reasons. Respondents were asked to indicate their level of concern relative to their friends and family members on a five-point Likert scale about the safety of fresh produce items that are produced in the United States and in countries other than the United States and about whether they consider themselves to be less active (an equivalent of less than 1.5 miles of brisk walking daily), active (an equivalent of 1.5–3 miles of brisk walking daily), or more active (an equivalent of more than 3 miles of brisk walking daily).

In addition to health-related questions, respondents were asked to indicate the number of times they shopped for food per month at any outlet and the number of meals prepared at home per week. Respondents who grocery shop or cook more frequently are expected to purchase at local outlets such as farmers’ markets and farm stands relatively more often. Because those who travel more frequently might be more likely to encounter local food outlets, respondents were asked to report the average number of days per month spent on travel for work or pleasure.

Seven true/false questions regarding U.S. fruit and vegetable production were asked to examine whether respondents’ knowledge about agriculture increased consumer purchases at farmers’ markets and farm stands.Footnote 2 In addition, whether respondents were concerned about the price of food, the distance it travels from where it is produced to where it is sold, and the amount of pesticide residue on food was elicited.

Abello et al. (Reference Abello, Palma, Waller and Anderson2014) found a negative effect of the distance to a farmers’ market on consumer visits to such markets. To capture this effect, data from the U.S. Department of Agriculture, Agricultural Marketing Service (2014) were used to determine the number of farmers’ markets within 5 miles of each respondent's zip code. Data on farm stands within 15 miles of respondent zip codes were identified on the LocalHarvest Inc. (2014) website. Finally, respondents were asked to indicate gender, age, education, race, whether U.S. or foreign born, number of people in the household, and family income.

3. Conceptual and Empirical Model

The impact of health-related variables on the decision to purchase food directly from the producer is presented as two separate decisions. The first decision is whether to buy food directly from growers at outlets such as farmers’ markets or farm stands, and the second decision is how many times to purchase foods from those outlets for a given time period.

As for how local food purchases relate to disease incidence, we suppose the following: the principal food purchaser of a household considers many factors when deciding where to buy food and what type of food to buy. In particular, she may be concerned about managing an existing health issue of a household member (e.g., a son who is overweight for his age), or she may be concerned about preventing a health issue (e.g., her father has diabetes, so she believes she is at greater risk herself). We take as granted that food sold at farmers’ markets and farm stands (e.g., generally produce, with meats and cheeses to a lesser extent) is generally offered in a fresh or minimally processed form (and contains little or no additives, preservatives, or artificial colorings). Much of this food is also sold at traditional outlets such as grocery stores, but perhaps there is a behavioral aspectFootnote 3 in that by purchasing from a farmers’ market or farm stand she knowingly intends to purchase relatively fresher food items directly from the producer. In any event, the food purchaser decides to purchase food from these outlets in order to manage disease within her household or to prevent future disease in her household, with particular attention to diseases incurred by her extended family members (sibling, parents, and grandparents) to which she and her household might be more susceptible.

Given evidence of the linkages between diet and incidences of diseases (e.g., obesity) (U.S. Department of Health and Human Services [USDHHS], 2003), rising numbers of health-conscious consumers (Darian and Tucci, Reference Darian and Tucci2011), and consumer perceptions that locally produced foods may be healthier (Zepeda and Leviten-Reid, Reference Zepeda and Leviten-Reid2004), we expect respondents who report illnesses to be more likely to purchase directly from producers more frequently.Footnote 4 Indeed, studies (e.g., World Health Organization, 2003, pp. 54–71) have shown that heart disease, diabetes, obesity, and cancer might be closely related to dietary decisions. We do allow for a possible caveat: if a given respondent does not tend to purchase healthy food, that may itself contribute to disease incidence. In other words, there is a possible endogeneity issue of disease incidence in the household, which we examine subsequently.

3.1. Econometric Model

Different modeling assumptions can be made about the relationship between the two decisions of whether and how often to purchase from local food outlets. Two common models that can be used for a discrete decision and a count decision are the Tobit model and the double-hurdle model (Gao, Wailes, and Cramer, Reference Gao, Wailes and Cramer1995). A Tobit model assumes that the factors affecting whether to purchase from a farmers’ market or farm stand have the same effect on how often to purchase from these outlets, whereas a double-hurdle model allows these effects to differ. To allow this flexibility, we adopt the double-hurdle model, which is a modified count data model that relaxes the assumption that the zero counts and positive counts come from the same data-generating processes (Cameron and Trivedi, Reference Cameron and Trivedi1998). If the number of counts is strictly positive, the first hurdle is crossed, and the conditional distance of the positives is governed by a truncated-at-zero count data model (McDowell, Reference McDowell2003). The second hurdle represents how often they buy given that they buy at least once. Hence, we specify a probit-Poisson double-hurdle model to account for both decisions.

A convenient feature of the probit-Poisson double-hurdle model is that the likelihood function can be separated across the two decisions with respect to the parameters to be estimated (McDowell, Reference McDowell2003). This allows estimation of the model in two separate steps: a binomial probit model for the first decision (step 1) and a truncated-at-zero count model for the second decision (step 2). Step 1 consists of a probit model, and step 2 consists of a Poisson model conducted, without loss of information, only over observations for which the number of times a respondent purchases food from a local food source is strictly greater than zero (McDowell, Reference McDowell2003).

Using a random utility theory framework (McFadden, Reference McFadden and Zarembka1974), our model assumes for the first decision that a rational consumer buys from a local food outlet if and only if the utility she derives from buying there is greater than the utility derived from buying at another food outlet (e.g., grocery store). We assume that utility is linear in unknown parameters:

(1) $$\begin{equation} {u_{ic}} = {{{\bf x}}_i}^{\prime}{{{\bm \beta }}_{xc}} + {\varepsilon _{ic}}, \end{equation}$$

where uic is the utility of respondent i from buying from a local food outlet (c = 1) or not (c = 0); x i is a vector of characteristics of an individual i including personal and family health history, other health-related variables, and other standard demographic variables; ${{{\bm \beta }}_{xc}}$ is a dimension-appropriate vector of parameters to be estimated; and ε ic is the random component of the utility.

Defining u* i = u i1u i0, ${{\bm \beta }}_x^* = {{{\bm \beta }}_{x1}} - {{{\bm \beta }}_{x0}}$ , and ε* i = ε i1 − ε i0, we can then write:

(2) $$\begin{equation} u_i^{*} = {{{\bf x}}_i}^{\prime}{\bm \beta }_x^{*} + \varepsilon _i^{*}, \end{equation}$$

where the parameter ${{\bm \beta }}_x^*$ can be estimated in a probit model (Greene, Reference Greene2008).

A Poisson model, which is commonly used to model count decisions, is used to model the second decision of how many times to purchase from the market in a given time period. In our context, the Poisson model specifies the probability that a respondent visits a local food outlet Y times in a given time period as follows:

(3) $$\begin{equation} \Pr ({y_i} = Y) = \frac{{{{({{\bf x}}_i^{\prime}{\bm \alpha }_x^*)}^{{y_i}}}}}{{(\exp ({{\bf x}}_i^{\prime}{\bm \alpha }_x^*) - 1){y_i}!}}, \end{equation}$$

where yi is the number of times individual i purchases from a local food outlet. Both the probit and the Poisson models use maximum likelihood estimation.

3.2. Analysis of the Family and a Test for Possible Endogeneity

We chose to examine each of the six diseases separately in two family groups based on an assumption about which family members typically live in the same household and on the ideas of the family of orientation and the family of procreation from traditional marketing literature (Moore, Wilke, and Lutz, Reference Moore, Wilke and Lutz2002; Palan and Wilkes, Reference Palan and Wilkes1997). The family of orientation consists of parents and siblings, from whom a person acquires an orientation toward religion, politics, personal ambition, self-worth, and love. A more direct influence on everyday buying behavior is the family of procreation—the person's spouse and children. Therefore, our first group, the respondent's family of procreation, includes the respondent, her spouse, and children, and the second group includes the respondent's family of orientation (siblings, parents, and grandparents), who we assume are less likely to live with the respondent. In this way, we can examine how the effect of disease incidence on food purchases differs between when the disease is present within the household and when it is not. For example, respondents may purchase local foods as a preventative measure to protect their own household members from illnesses that have affected their other nonhousehold family members. On the other hand, respondents may purchase local foods as a reactive measure in order to treat or combat an illness incidence in their household. We must caution that this control is imperfect, however, as we did not directly ask which family members live in a respondent's household. Also, although we identify the respondent as the household's primary food shopper, that person may not be the exclusive decision maker of where and what to buy (Engel, Blackwell, and Miniard, Reference Engel, Blackwell and Miniard1990; Shepherd and Woodruff, 1988).

We used our assumption about the typical family members of a household to test for potential endogeneity of some explanatory variables. We hypothesize that disease incidences in the respondent's family affect whether she buys food at farmers’ markets or farm stands, but the reverse-causal effect, that buying at those markets could affect disease incidences, is also possible. In particular, obesity is caused mainly by excess intake of unhealthy foods and inadequate exercise (USDHHS, 2003), and a feature of farmers’ markets and farm stands is that they generally sell lower-calorie foods such as fresh fruits and vegetables. If obesity were thus endogenous, straightforward estimation of the model would then lead to biased parameter estimates (Greene, Reference Greene2008). Although approaches such as a two-step instrumental variable probit model or Newey's (Reference Newey1987) minimum chi-squared estimator can be used to correct for an endogenous continuous regressor, we know of no test for endogeneity when the potentially endogenous variable is binary (obesity equals 1 if disease has occurred in respondent's family of procreation, and 0 otherwise). We therefore used two other approaches to check for endogeneity in the probit regression.

First, we specified a bivariate probit model where the second equation regresses the variable obesity on whether the respondent has obese parents or obese siblings, the output of which includes a correlation parameter between the two equations (Wooldridge, Reference Wooldridge2010). The validity of these instruments rests on our assumption that respondents, who are primary shoppers, generally do not live with their parents and siblings. If this assumption holds, then there could clearly be a correlation between the respondent having obese parents or siblings and there being an obese spouse or child, but it would be unlikely that the respondent would purchase local food to address obesity of a parent or sibling.

The results from the bivariate probit model are found to be almost identical to those from the binary probit model for both local food outlets (farmers’ markets and farm stands). The correlation coefficient between the two equation error terms is –0.067 and not significant at the 10% level for farmers’ markets and is –0.144 and not significant for farm stands. This gives us some indication that endogeneity of the obesity measure, as far as it may be caused by reverse causation, might not be a problem in our model.

Another check for endogeneity is based on the idea of omitted variable bias. For this approach, we started with a simple model specification containing only the six diseases and demographic variables. We then sequentially added all the other regressors used in our final model presented herein with the idea being that the parameter estimate on an endogenous regressor would be more sensitive to the model specification. However, comparing across specifications, we found that the sign and significance of the obesity variable remained consistent. Observing no signals of likely endogeneity from either of these procedures, we proceeded under the assumption of exogeneity of the model explanatory variables.

4. Results and Discussion

Overall, slightly more than half of the respondents reported illness occurrences in their family; that is, 54% of the respondents indicated that one or more family members have been treated for cancer, 51% have been treated for heart disease, 52% have been treated for diabetes, and 56% have been treated for back or joint pain. The percentages were lower for Alzheimer's or dementia (25%) and obesity (27%).Footnote 5 Descriptive statistics for the variables used in the model are reported by family group (Table 2). In general, the majority of respondents report a minimum of moderate exercise, and most respondent households contain at least one member on a special diet.Footnote 6

Table 2. Variable Definitions and Descriptive Statistics (N = 4,706)

Note: Unless otherwise noted by a range in parentheses, each variable is a dummy variable.

4.1. Estimation Results

The parameters of the double-hurdle model in equations (2) and (3) were estimated using Stata/SE 13.1. Separate models were estimated for purchases at farmers’ markets and at farm stands. The signs of significant parameter estimates in the probit model indicate the direction of the effect of their corresponding variables on a respondent's likelihood of buying foods at farmers’ markets (Table 3) or farm stands (Table 4). For the Poisson model, the parameter estimates indicate how those variables influence the frequency of purchase at those local outlets.

Table 3. Parameter Estimates of the Double-Hurdle Model for Farmers’ Markets

Notes: Asterisks (*,**, and ***) indicate significance at the 10%, 5%, and 1% levels, respectively. Standard errors for marginal effects suppressed because of space.

Table 4. Parameter Estimates of the Double-Hurdle Model for Farm Stands

Notes: Asterisks (*,**, and ***) indicate significance at the 10%, 5%, and 1% levels, respectively. Standard errors for marginal effects suppressed because of space.

4.2. Farmers’ Markets

Of the six illnesses reported in our study, five (heart disease, diabetes, obesity, back/joint pain, and Alzheimer's disease/dementia) are not found to have a significant effect on the first decision of whether to buy foods at farmers’ markets (Table 3). Reported occurrences of cancer in the respondent's family of procreation, however, negatively affect the likelihood of buying food at farmers’ markets.

Disease incidences generally have a greater effect on the decision of how often to purchase at farmers’ markets, given that one does so. Cancer, heart disease, or obesity among the respondent's siblings, parents, or grandparent decrease purchases at farmers’ markets. Obesity among the respondent or his spouse or children increases purchases at a farmers’ market. Joint pain affects the number of farmers’ market purchases in different directions depending on whether the incidence is among the respondent, his spouse, or children, or among his siblings, parents, or grandparents.Footnote 7

Most other health-related variables that significantly affect either decision are found to have a positive effect. For example, those who are more concerned than friends or family about the safety of food grown outside of the United States are more likely to buy food from a farmers’ market and to do so more frequently, consistent with the finding that some consumers believe other countries have less strict processing and chemical use regulations in agricultural foods (Loureiro and Umberger, Reference Loureiro and Umberger2005). Respondents who exercise the equivalent of at least 1.5 miles of walking each day are also more likely to purchase from and to purchase more often from farmers’ markets. Vegetarians, vegans, or respondents who were following a special diet to stay fit were more likely to purchase food at farmers’ markets.

The presence of a farmers’ market within 5 miles of a respondent's zip code positively affects the likelihood and frequency of farmers’ markets purchases, consistent with the intuition that a lower cost (both financial cost and time cost) of travel to the market would increase market purchases. Respondents who care about the distance their food travels from production location to purchase location are also more likely to buy at farmers’ markets and to do so more frequently. This travel distance is generally shorter for farmers’ markets than for traditional markets, and respondents may prefer a shorter distance for various reasons including that it reduces vehicle carbon emissions or that foods with shorter travel distance are believed to retain more nutrients (Lea, Reference Lea2005). Similarly, respondents who care about the amount of pesticide residue on food are more likely to purchase at farmers’ markets, which supports earlier findings that consumers are concerned about negative environmental or health impacts of pesticides (Sachs, Blair, and Richter, 1987). Respondents who are more concerned about food prices are less likely to buy food at farmers’ markets, suggesting that price-sensitive consumers in our sample believe that farmers’ market prices are higher relative to traditional outlets. Although the reaction of any given consumer to farmers’ market prices may vary depending on several factors including the type and number of markets in her area and their offerings, the Project for Public Spaces and Columbia University (2013) found that 17% of respondents still considered price to be a barrier to shopping at farmers’ markets. We also find that respondents who shop for food more frequently or travel more frequently are more likely to purchase food at farmers’ markets. Consistent with Abello et al. (Reference Abello, Palma, Waller and Anderson2014),Footnote 8 demographic variables are generally found to be weak predictors of purchases at farmers’ markets.

4.3. Farm Stands

Occurrences of cancer, diabetes, obesity, or joint pain among the respondent, her spouse, or children or incidences of obesity among any family member are found to increase the probability of purchasing foods from farm stands (Table 4). The frequency of purchases at farm stands is negatively affected by incidences of cancer, heart disease, or diabetes and positively affected by incidences of obesity or joint pain among the respondent's family of orientation. However, a negative effect on purchase frequency resulted when obesity was reported to occur in either the respondent or her spouse or children. As with farmers’ markets, the effects of obesity incidence in the two family groups on purchases have the opposite direction from each other, but, strangely, across farmers’ markets and farm stands the direction of the effects are opposite across family groups. In other words, although there is evidence that obesity incidence affects purchasing decisions, there is inconsistency of the effect across markets and across family groups.

Although many factors may come into play in this situation, a plausible explanation for this difference may be the operational and locational differences of the two types of markets. The recreational nature of farmers’ markets is well documented in agrotourism literature (Farmer et al., Reference Farmer, Chancellor, Gooding, Shubowitz and Bryant2011; Onyango, Govindsamy, and Alsup Egbers, Reference Onyango, Govindsamy and Egbers2015). In the case of obesity in the family of procreation, this recreational aspect, which frequently includes children's activities, may facilitate introducing more farmers’ market purchases into the family's schedule, but not necessarily so for farm stands. New bonus programs offering extended benefits for fruit and vegetable purchases for households that are eligible for the Supplemental Nutrition Assistance Program (SNAP) and Women, Infants, and Children Farmers’ Market Nutrition Program (WIC-FMNP), such as the Double Dollars Program in Texas, may also offer additional incentives for a household to patronize a farmers’ market. For example, through the WIC-FMNP, eligible pregnant and postpartum women and children up to 5 years of age can each receive up to $30 in FMNP vouchers in addition to their regular WIC benefits. The value of these vouchers can then be further increased for purchases at markets supported by a bonus program. In contrast, although extended family members may benefit from additional incentives for farmers’ markets purchases, they may value more highly features such as convenience and direct and focused interactions with a single vendor, which may be more easily facilitated at farm stands.

Incentive programs that encourage greater participation at both outlet types and across all family groups may be worthwhile initiatives for policy makers to implement. Such initiatives have been documented in the nutrition literature (McCormack et al., Reference McCormack, Laska, Larson and Story2010; Payne et al., Reference Payne, Wethington, Olsho, Jernigan, Farris and Walker2013) and are credited with enhancing health and profitability outcomes for consumers and producers, respectively. Additionally, a better understanding of the roles and influences on the family food buyer and the impact of joint decision making by household members on food purchases would serve to clarify direct-from-producer purchases at varying market outlets (Lackman and Lanasa, Reference Lackman and Lanasa1993).

Apart from self-reported illnesses, physical activity levels are significant in the second decision model. Respondents who consider themselves active (exercise equivalent to walking 1.5 miles to 3 miles a day or more) are likely to purchase more frequently at farm stands compared with those who consider themselves less active. Respondents who are concerned about the distance food travels from production location to purchase location are more likely to buy at farm stands, and those who care more about pesticide residue are likely to purchase more often at farm stands. Respondents who shop for food more frequently per month and travel more in a month are more likely to purchase foods at farm stands. Similarly to farmers’ markets, more price-sensitive respondents are less likely to purchase from farm stands. In contrast to the findings of Zepeda and Li (Reference Zepeda and “2006) who found no effect of age on local food purchases, we find that respondents who are older are more likely to visit farm stands and likely to visit such stands more frequently. As with farmers’ markets, those with a higher income purchase more frequently from farm stands.Footnote 9

The number of markets, purchase decisions, health variables, and types of family members examined in this analysis make for a complex and nuanced story, and we summarize several main findings that hold generally in our study in Table 5. Because this is the first time many of these variables have been examined in this context at this level of detail, we did not begin the study with ex ante hypotheses regarding these findings. Instead, we list possible explanations for these findings, possible implications for farmers and local-food market managers, and avenues for future research that would shed more light on these findings. We also note that, assuming that the marginal effects of the variables on purchase decisions are independent, they can be added to determine the cumulative effect of, for example, incidence of more than one disease in a household on the probability of a local-food market purchase or on the quantity of purchases.

Table 5. Summary of Findings, Implications, and Future Research Opportunities Related to Understanding the Influence of Consumer Health Concerns on Direct-from-Producer Purchase Decisions

5. Conclusions

Although existing studies have shown that general health motivations are a significant driver of local food purchases, our findings address current knowledge gaps by explicitly exploring the effects of specific diseases on purchases of food directly from producers. The positive association of the diseases with direct-from-producer food purchase in the first decision is consistent with the idea of perceived lower health risk of local foods often found in the literature. However, a negative effect on the frequency of purchases is revealed in some cases, given that at least one purchase is made. A possible explanation might be that diet is only one way to address (either through prevention or treatment) the family illnesses included in this study. Management of these illnesses may require more time to be devoted to other health-related activities, such as doctor visits, hospitalization, or physical therapy, which displace, among other things, food shopping events. Other variables examined (food safety concern, physical activity level, concerns about food miles and pesticide residue, and special diet) are found to increase both the likelihood of purchasing at farmers’ markets and the frequency of purchases at farmers’ markets, and several of these positively affect purchasing from farm stands.

Further research is recommended to explore what types of foods are purchased at farmers’ markets and roadside stands, as offerings at these locations vary widely from fresh produce picked that morning to deep-fried pies containing locally grown apples and peaches, skewing the underlying assumption that these venues provide healthier food choices. Although our survey recorded the respondent's choice of food outlet, we did not capture exact food choices made at these or other outlets that feature locally sourced food and food products—retail or specialty grocers, community-supported agriculture shares, and so forth—in this study. As more and more traditional food stores expand their offerings of locally grown and healthier food options, additional survey efforts are needed to deepen our understanding of the connection between consumer health considerations, household composition, food choices, family roles and joint decision-making processes, and food purchased directly from producers.

Our study contributes to the existing literature that seeks to understand how consumers’ current health situations and concerns may affect an individual's decision to purchase food directly from producers at either a farmers’ market or a roadside stand. Findings are expected to provide those producers with improved awareness of the specific preferences underlying customer demand for their food offerings at direct market outlets. Producers are encouraged to emphasize the health benefits of their food products and explore customer incentives to encourage repeat purchase decisions. Moreover, marketing efforts and branding programs that allow producers to better demonstrate their understanding of the motivations and characteristics of consumers who seek out products sold by the grower may result in improved customer satisfaction, increased market share, and long-term profitability.

Footnotes

This research was funded by the U.S. Department of Agriculture Specialty Crop Block Grant Program and administered by the Mississippi Department of Agriculture and Commerce. We thank three anonymous reviewers for suggestions that helped improve the manuscript.

1 Research Now asks members in its database to complete a survey until a given number of responses are collected. Because of the nature of this recruitment strategy, a standard response rate cannot be calculated, and neither would one be meaningful in the traditional sense because respondents have previously indicated their willingness to participate in surveys.

2 The statements were as follows: One-half of all U.S. fruit acreage is located in California. Fresh fruit and vegetables grown in the southern United States are more susceptible to insect and plant diseases compared with northern or western production zones. For every $1 U.S. consumers spend on fruits and vegetables, the U.S. farmer receives greater than one-third of that dollar. The 2011 Food Safety Modernization Act was established to provide a legislative mandate to require comprehensive, science-based preventative controls across the food supply. An acre of fresh tomatoes typically requires more water than is needed to provide an acre of wheat. Rinsing fresh fruits and vegetables with water removes all chemical and bacterial residues. All farmers’ market managers are required to certify that their vendors sell only the fruits and vegetables grown on their own farm.

3 We do not directly model the possibility of this behavioral component but take it as an underlying assumption of the econometric model. Other assumptions that would lead to a similar relationship between health and local foods might be that the person believes it is a healthier choice to expend the effort needed to source and purchase food at outdoor markets or that the person lives in a food desert where fresh produce is not readily available.

4 In the psychology literature (e.g., Vermeir and Verbeke, Reference Vermeir and Verbeke2006), consumer behavior is often modeled as depending on perceived consumer effectiveness, which is a measure of how much the consumer believes a particular action (buying a product) will help address a problem (improve health). We did not elicit any such measures in our survey, however.

5 In the U.S. population, 8.5% of adults have ever been diagnosed with cancer, 11.5% of adults have been diagnosed with heart disease, 9.3% of people in the United States have diabetes (diagnosed or undiagnosed), 13.9% of adults have osteoarthritis, 34.9% of adults are obese, and 5.3 million Americans currently have Alzheimer's disease (CDC, 2016).

6 In 2012, 3% of adults in the United States followed a special diet (examples given were Zone, vegan, and Ornish) as a complementary health approach (Peregoy et al., Reference Peregoy, Clarke, Jones, Stussman and Nahin2014). We asked not about specific diets, but about specific reasons for dieting. That, and the fact that our data are measured at the household level, may account for the discrepancy between the CDC statistic and our numbers.

7 One reviewer wondered whether some diseases being significant when occurring outside the household but not when occurring within the household was because of few observations within the household. Roughly 10%–16% of respondents (450–700) had a household member who was treated for cancer, heart disease, or diabetes, whereas 43%–49% had a nonhousehold family member who was treated. The percentages are about equal for family members within the household for obesity and back or joint pain, with 17% for obesity and 35% for back or joint pain outside the household. Less than 1% (about 38 people) had a household member who was treated for Alzheimer's or dementia, whereas 24% had a nonhousehold member who was treated.

8 Although Abello et al. (Reference Abello, Palma, Waller and Anderson2014) find that education level and certain age categories affect farmers’ market visits, they find no relationship to income, sex, whether children live in the household, and older age categories.

9 Taylor and Villas-Boas (Reference Taylor and Villas-Boas2016) find that low-income consumers are willing to pay more for access to more conventional food outlets (superstores and grocery stores) and relatively less for access to farmers’ markets and may need to be incentivized to buy at farmers’ markets.

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Figure 0

Table 1. Survey Respondent Demographics Compared with 2010 U.S. Census Bureau Data by State

Figure 1

Table 2. Variable Definitions and Descriptive Statistics (N = 4,706)

Figure 2

Table 3. Parameter Estimates of the Double-Hurdle Model for Farmers’ Markets

Figure 3

Table 4. Parameter Estimates of the Double-Hurdle Model for Farm Stands

Figure 4

Table 5. Summary of Findings, Implications, and Future Research Opportunities Related to Understanding the Influence of Consumer Health Concerns on Direct-from-Producer Purchase Decisions