Introduction
Bees (Hymenoptera: Apoidea) are, by far, the most important pollinators of wildflowers and agricultural crops (Free Reference Free1993; Kevan and Philips Reference Kevan and Phillips2001; Aizen et al. Reference Aizen, Garibaldi, Cunningham and Klein2009; Ollerton et al. Reference Ollerton, Winfree and Tarrant2011). Recent declines in managed honeybees (NRC 2007), native bumble bees (Goulson et al. Reference Goulson, Hanley, Darvill, Ellis and Knight2005; Kosior et al. Reference Kosior, Celary, Olejniczak, Fijal, Król and Solarz2007; Colla and Packer Reference Colla and Packer2008), and other pollinators (Biesmeijer et al. Reference Biesmeijer, Roberts, Reemer, Ohlemüller, Edwards and Peeters2006) have led to increased interest in native bees (e.g., Winfree et al. Reference Winfree, Williams, Dushoff and Kremen2007, Reference Winfree, Williams, Gaines, Ascher and Kremen2008; Tuell et al. Reference Tuell, Fiedler, Landis and Isaacs2008). Bee declines in America and Europe have been associated in part with habitat loss and agricultural practices including expansion (Goulson et al. Reference Goulson, Lye and Darvill2008), intensification (Kremen et al. Reference Kremen, Williams, Bugg, Fay and Thorp2004), and increased pesticide use (Banaszak Reference Banaszak1992; Steffan-Dewenter et al. Reference Steffan-Dewenter, Münzenberg, Bürger, Thies and Tscharntke2002; Kremen et al. Reference Kremen, Williams, Bugg, Fay and Thorp2004; Biesmeijer et al. Reference Biesmeijer, Roberts, Reemer, Ohlemüller, Edwards and Peeters2006).
Coffee production is ecologically significant in terms of land area and also economically important as the top earner of foreign capital in developing countries (Donald Reference Donald2004). Coffee plantations cover ∼11 million ha worldwide with Latin America producing ∼34% of the world's supply (Perfecto and Armbrecht Reference Perfecto and Armbrecht2003). Coffee-growing regions of Latin America and elsewhere are biodiversity hotspots known for their high species richness and endemism (Myers et al. Reference Myers, Mittermeier, Mittermeier, da Fonseca and Kent2000), making studies of their impacts on biodiversity particularly important.
There has been significant research focused on the impacts of agricultural expansion of or habitat conversion to coffee agroecosystems (Perfecto and Armbrecht Reference Perfecto and Armbrecht2003). Such systems have been categorised based on criteria of floral diversity or complexity and pesticide use (Moguel and Toledo Reference Moguel and Toledo1999). These categories, in order of increasing intensification are: (1) traditional rustic, (2) traditional polyculture, (3) commercial polyculture, (4) shaded monoculture, and (5) unshaded monoculture (Moguel and Toledo Reference Moguel and Toledo1999). Previous studies have compared traditional polyculture, commercial polyculture, and shaded monoculture coffee farms to nonagricultural habitats, examining the differences in the diversity of birds (Wunderle and Latta Reference Wunderle and Latta1994; Greenberg et al. Reference Greenberg, Bichier and Sterling1997), mammals (Estrada et al. Reference Estrada, Coates-Estrada and Merrit1993; McCann et al. Reference McCann, Williams-Guillén, Koontz, Roque, Martínez and Koontz2003; Pineda et al. Reference Pineda, Moreno, Escobar and Halffter2005), frogs (Pineda et al. Reference Pineda, Moreno, Escobar and Halffter2005), and various insect groups (Ibarra-Núñez et al. Reference Ibarra-Núñez, García and Moreno1995; Armbrecht and Perfecto Reference Armbrecht and Perfecto2003; Horner-Devine et al. Reference Horner-Devine, Daily, Ehrlich and Boggs2003; Ricketts Reference Ricketts2004; Pineda et al. Reference Pineda, Moreno, Escobar and Halffter2005). Responses to intensification differ among animal taxa and this prevents generalisations on the impact of the type of coffee production on biodiversity as a whole (Moguel and Toledo Reference Moguel and Toledo1999; McCann et al. Reference McCann, Williams-Guillén, Koontz, Roque, Martínez and Koontz2003; Perfecto et al. Reference Perfecto, Mas, Dietsch and Vandermeer2003; Tejeda-Cruz and Sutherland Reference Tejeda-Cruz and Sutherland2004; Pineda et al. Reference Pineda, Moreno, Escobar and Halffter2005; Estrada et al. Reference Estrada, Damon, Sanchez Hernandez, Soto Pinto and Ibarra Núñez2006).
Bee diversity and abundance can be important for successful coffee pollination (Roubik Reference Roubik2002; Klein et al. Reference Klein, Steffan-Dewenter and Tscharntke2003a; Ricketts Reference Ricketts2004; Vergara and Badano Reference Vergara and Badano2009). Pollinators can increase coffee yield by as much as 50% (Roubik Reference Roubik2002). Large forest fragments adjacent to coffee farms in Costa Rica are a source of bee pollinators (feral honeybees, stingless bees, and native wild bees) (Ricketts Reference Ricketts2004; Brosi et al. Reference Brosi, Daily and Ehrlich2007), and can result in higher visitation rates to coffee flowers and increased pollen deposition rates, at least within 100 m of a forest fragment (Ricketts Reference Ricketts2004). In Indonesian coffee agroecosystems, solitary bees were more effective pollinators than social bees on a per visit basis but were much less abundant comprising only 33% of total flower visits (Klein et al. Reference Klein, Steffan-Dewenter and Tscharntke2003a). Higher pollinator diversity and species richness has been related to increased coffee production (percentage fruit set) in Mexico (Vergara and Badano Reference Vergara and Badano2009).
Most studies of bee diversity in coffee agroecosystems have focused on coffee and pollination from the perspective of coffee yield (Florez et al. Reference Florez, Muschler, Harvey, Finegan and Roubik2002; Roubik Reference Roubik2002; Klein et al. Reference Klein, Steffan-Dewenter and Tscharntke2003a; Vergara and Badano Reference Vergara and Badano2009). The impact of different coffee management practices on bees has not been studied with one exception (Florez Reference Florez2001). Our first objective was to quantify bee diversity and community composition in different levels of intensification in Costa Rican coffee farms using common diversity indices for samples obtained using Malaise traps. Bee functional groups are known to respond differently to landscape effects (Cane Reference Cane2001; Grixti and Packer Reference Grixti and Packer2006; Williams et al. Reference Williams, Crone, Roulston, Minckley, Packer and Potts2010), our second objective was to compare patterns among bees with different functional groups across our sites. Our final objective was to propose feasible management strategies for small-scale coffee farmers to increase bee diversity for improved pollination and coffee production.
Methods
This study was conducted from January to April in both 2005 and 2006 in the southwestern region of Costa Rica at elevations ranging from 700 to 1200 m (Fig. 1). The three communities where sampling took place were Santa Elena, Quizarrá and Montecarlo, located ∼14 km northeast of San Isidro in the El General Valley (Fig. 1); all are part of the Los Cusingos Las Nubes Biological corridor (Daugherty Reference Daugherty2005). This region of Costa Rica is considered premontane/tropical moist forest according to the Holdridge Life Zones scheme (Janzen Reference Janzen1983). The landscape is composed of forest fragments and farms, primarily coffee farms and sugarcane fields (Daugherty Reference Daugherty2005). Like the rest of Costa Rica, this area has two distinct seasons: dry (January–May) and rainy (June–December). The mean annual rainfall is ∼4000 mm; the average maximum and minimum temperatures are 29.2 °C and 18.7 °C, respectively.
Each year there are three to four massive synchronous blooming events, or flushes, of coffee flowers, which typically lasts two to three days. At our study sites, all coffee flushes were separated by two to three weeks; the onset of a coffee flush was dependent on rainfall. During each flush in 2005 and 2006 we sampled bees in three sites; each of a different treatment type: (1) shaded coffee farms, (2) unshaded coffee farms, and (3) nonagricultural sites. The fourth and final flush in 2005 was an exception in that only one shaded and one unshaded coffee farm could be sampled at that time. During the four flushes in 2005, we collected from 11 sites: four shaded coffee farms, four unshaded coffee farms, and three nonagricultural sites. Each collection lasted for the entire duration of the flush. There were three flushes in 2006 and nine of the previous year's 11 sites were sampled again: three shaded coffee farms, three unshaded coffee farms, and three nonagricultural sites (see Table 1).
Note: *Approximation of coordinates.
All sites were separated by at least 600 m (mean distance >1 km) from each other. A majority of the coffee farms in this region are <10 ha with sun-tolerant strains of Coffea arabica Linnaeus (Rubiaceae) (Caturra, Catuai, and Catimor) (Hall Reference Hall2001). In each shaded coffee farm, the main shade tree was Poró (Erythrina poeppigiana (Walpers) Cook; Fabaceae) (Merino et al., personal communication) with the exception of one farm, which had Poró and Amarillon (Terminalia amazonia (Gmelin) Exell; Combretaceae). In unshaded coffee farms, rows of coffee plants were spaced 2 m apart and plants were separated by 1 m within rows. In the monospecific shaded coffee farms, Poró was arranged in a grid of either 4 m × 4 m, or 6 m × 6 m. The one site with both Poró and Amarillon trees had a similar planting scheme (i.e., 6 m × 6 m) but alternating tree species; thus the density of shade trees did not vary among sites. Shade management practices consist of pruning the Poró trees twice a year (Hall Reference Hall2001). Farms were chosen based on the cooperation of farm owners, farm size (>5 ha), synchronous blooming times and feasibility in terms of proximity to other farms sampled. Nonagriculture controls were selected in plots of land >5 ha which had been fallow for at least five years and were dominated by shrubs. Shrubs and plants from the family Asteraceae dominated these nonagricultural plots followed by some Rubiaceae (other than coffee). All nonagricultural sites were ∼1 km from the closest shaded or unshaded coffee farm. Attempts were made to sample all site types on the same days.
For each site, one Townes’ Style Malaise trap (Sante Traps, Lexington, Kentucky, United States of America) was set up for insect collection. They were placed along an insect flight path (Gressit and Gressit Reference Gressit and Gressit1962) (i.e., perpendicular to the rows of coffee) and each trap was positioned so that the collecting head faced in the direction that would receive the most sunlight throughout the day (Noyes Reference Noyes1989). The Malaise traps were set up in coffee fields the day before the first day of the coffee flush. The opening of ∼2–5% of the flowers indicated the onset of a major flowering period. The Malaise traps were left up for three days, the length of the coffee flush, and replenished with propylene glycol as a collecting solution every day during the coffee flowering period. All bee specimens (Apoidea, excluding the four predatory wasp families) were pinned and identified for analyses.
Data analysis
The Shannon-Wiener (H′) and Shannon Evenness (J′) indices were used to quantify bee diversity at each site for each year (n = 20). Hill's diversity index (N1) was also calculated in order to confirm the pattern of diversity shown with the Shannon-Wiener values. SPSS 15.0 Statistical software (SPSS Inc., Chicago, Illinois, United States of America) was used to test for normality for the following dependent variables: species richness, number of individuals, biodiversity (H′), and evenness (J′). Consequently, evenness and number of individuals were subject to arcsin and square root transformations, respectively. All other data were normally distributed.
An initial three-factor analysis of variance (ANOVA) was used to determine the main effects and interactions of year, site type, and flush (nested within year) (PROC MIXED, SAS 1999) on bee species richness, number of individuals, biodiversity, and evenness. As the sites were not exactly the same in the two years, the “year” and “year” × “site type” were included as random effects in the model. Neither “year” nor “year” × “site type” were significant sources of variability. This initial analysis also showed no significant effect of flush on the response variables. ANOVA analyses were followed by Bonferroni's post hoc correction of multiple pair-wise comparisons on means. Higher-order interactions were used as the error term in testing these fixed main effects (Kirk Reference Kirk1982). Each effect was tested over the error term, and all the F-tests involve Type III sum of squares. All data analyses for ANOVA were performed using SAS Version 8 (1999) statistical software (SAS Institute, Cary, North Carolina, United States of America).
To compare observed species richness with unequal abundances across sites, individual-based rarefied estimates (±SE) were pooled by site type and used to calculate the number of expected species in each site (Magurran Reference Magurran1988). The number of individuals in the smallest sample determined the standardised sample size to allow a common sampling effort among three site types. All rarefaction estimates were obtained using Species Diversity and Richness IV (Pisces Conservation Ltd., Lymington, United Kingdom) with the default setting of 1000 iterations.
Four bee functional groups were defined: social versus solitary, ground versus aboveground nesters, small (<6 mm) versus medium to large-bodied bees (≥6 mm), and nest makers versus cleptoparasites. We examined how the proportion of these observed bee functional groups was distributed among site types. Both species observed richness (S) and number of bee individuals (N) were compared for each of the four functional group categories. Certain taxa were excluded from these analyses either because their ecology was unknown or the number of individuals collected for that entire functional group was too small to generate meaningful values for comparison. Otherwise, each bee species was assigned to a specific group category for each analysis (Appendix A). χ 2 contingency tables (2 × 3) were used to investigate relationships between bee functional group and site type.
Last, we estimated the number of shared species or community similarity of bees using Jaccard and Morisita-Horn indices, respectively, for each pairwise site type comparison for each year. Both indices seek to measure the differences in diversity between two or more sites, also known as β diversity or complementarity (Magurran Reference Magurran2004). The Jaccard index is based on presence/absence of data, whereas the Morisita-Horn index is a quantitative method of comparing sites based on species abundance. Stepwise cluster analysis using unweighted pair group method with arithmetic mean (UPGMA) was then performed based on a matrix of the dissimilarity values.
Results
A total of 1012 bee individuals were caught in 20 sites over two years and 980 of them were used in the analyses: 32 males of the subgenus Lasioglossum (Dialictus) were excluded because we could not associate them with females. We identified all bees to 113 morphospecies belonging to 34 different genera. By far, the most abundant higher-level taxon collected was Lasioglossum (Dialictus), consisting of ∼49% of all individuals. Trigona Jurine followed with ∼11.5% and Augochlora Smith with 7% (Appendix B).
In the overall ANOVA model there were no significant effects due to year, coffee flush within year, or site type upon species diversity or abundance (F 2,14 = 1.72, P = 0.22).
Biodiversity index data are summarised in Table 2. Average bee diversity was highest in unshaded coffee farms, followed by shaded coffee farms, and finally the nonagricultural sites. ANOVAs of diversity indices found no significant differences among site types (F = 1.72, P = 0.2240) (Table 2).
Note: Shannon-Wiener (H′), Evenness (J′) species richness (S and standard deviation), and abundance (n and standard deviation) data and Hill's diversity (N1).
Again it was the unshaded coffee farms that had the highest average number of bee species followed by shaded coffee farms and then the nonagricultural sites. The results of the ANOVA analyses on observed species richness showed differences among sites were significant (F 5,14 = 3.24, P = 0.038) with a highly significant effect of site type (F 2,14 = 7.46, P = 0.006). The Bonferroni post hoc adjustment for multiple comparisons shows the significant difference to be primarily between unshaded and nonagricultural sites (P = 0.007), whereas that between coffee farm types was marginally nonsignificant (P = 0.055). Site type explained 54% of the variation in observed bee species richness among all sites in both years combined.
The rarefaction curves (Fig. 2) show that if sample size was standardised to 109 bees, the nonagricultural site would have the highest observed species richness, followed by the unshaded coffee farms and lastly the shaded coffee farms.
Average bee abundance over the two collecting seasons was highest in unshaded coffee farms, followed by the shaded coffee farms, and lastly the nonagricultural sites (Table 2). The overall ANOVA model was significant (F 2,14 = 15.52, P = 0.003). The post hoc Bonferroni adjustment for multiple comparisons shows that unshaded coffee farms were significantly different from both nonagricultural sites and shaded coffee farms (P = 0.0002 and P = 0.017, respectively). Site type explained 71% of the variance in number of bee individuals collected among site types.
Average Shannon evenness (J′) value was lowest for unshaded coffee farms, followed by shaded coffee farms, and then nonagricultural sites (Table 2). There was no significant overall model effect for evenness (F 5,14 = 1.96, P = 0.148) but a marginally significant site effect (F 2,14 = 3.94, P = 0.044). The post hoc Bonferroni correction for multiple comparisons shows that the only significant comparison was between unshaded coffee farms and nonagricultural sites (P = 0.042).
There were some significant associations among certain bee functional groups and site types (Table 3 and Fig. 4). The number of species (S) of aboveground versus ground-nesting bees was significantly associated with site type with more of the former found in unshaded coffee farms, whereas abundance (N) in these functional groups was not associated with site type. The number of social versus solitary bee individuals was associated with site type with a higher average of social bees individuals found in unshaded coffee farms, whereas the number of species was not associated with site type. Lastly, the number of small-bodied versus large-bodied bees was associated with site type but the number of species in these functional groups was not. There was no association between site type and the nester and cleptoparasitic bee functional group for either species richness or abundance. A closer examination of different bee functional groups and site types supports the idea that the distribution of bee functional groups is not random across site types and bees with different functional groups respond differently to environmental changes (Brosi et al. 2008).
Notes: This test shows whether the categorical variables (functional groups) are distributed equally across all site types (Hθ). df = 2, α = 0.05, and critical value = 5.99. At values >5.99 we reject the null hypothesis (Hθ). Totals are reported with χ2-values in brackets.
*Indicate that χ 2values were statistically significant.
Similarities among sites are shown graphically for number of individuals using the Jaccard and Morisita-Horn indices (Figs. 3A, 3B). Both show a similar pattern with a stronger association among agricultural sites.
Discussion
Most previous studies of coffee agroecosystems and bees focused mainly on pollination and coffee production, not the impact of coffee agroecosystems on bees (Roubik Reference Roubik2002; Klein et al. Reference Klein, Steffan-Dewenter and Tscharntke2003a, Reference Klein, Steffan-Dewenter and Tscharntke2003b; Ricketts Reference Ricketts2004; Vergara and Badano Reference Vergara and Badano2009) with one exception (Florez Reference Florez2001). Florez (Reference Florez2001) studied both the effect of shade conditions and surrounding forest fragments on bee abundance and richness in coffee farms. However, Malaise traps were not used in this study, instead, nets, aspirators, and chemical attractants were used to sample bees. He found honeybees and stingless bees (Hymenoptera: Apidae) to be the most abundant coffee flower visitors. In this study, Florez (Reference Florez2001) also collected halictid bees (Hymenoptera: Halictidae), but the abundance of these bees was unrelated to distance from forest fragments or shade conditions. Instead, the extent of weedy plants was the strongest predictor of halictid bee abundance.
A large proportion of bee individuals (49%) collected in our study belong to the subgenus Lasioglossum (Dialictus). Dialictus is the largest subgenus in the family Halictidae (Moure and Hurd Reference Moure and Hurd1987) and are mostly ground-nesters (Moure and Hurd Reference Moure and Hurd1987; Cane Reference Cane2001). The ground between rows of coffee plants in Costa Rican coffee farms is normally cleared of any other plants and grasses, exposing soil and thus providing a suitable habitat for many ground-nesting bees such as Dialictus, which seem to prefer sparsely vegetated or bare ground (Sakagami and Michener Reference Sakagami and Michener1962; Michener Reference Michener1974). Dialictus has never been reported as dominant in coffee agroecosystems. Dialictus may be potentially important in coffee pollination, as they have been observed visiting coffee flowers and are present in large numbers in coffee agroecosystems. Alternatively, Dialictus may only be a minor coffee pollinator, primarily visiting the weeds among the coffee plants or at farm edges. Further studies may help shed light on the true role of Dialictus as a coffee pollinator.
Previous studies, mainly based on visual observations, have found honeybees (Apis species) to be dominant visitors of coffee in Brazil (Nogueira-Neto et al. Reference Nogueira-Neto, Carvalho and Antunes1959; Amaral Reference Amaral1972; Malerbo-Souza and Nogueira-Couto Reference Malerbo-Souza and Nogueira-Couto1997), Costa Rica (Ricketts Reference Ricketts2004), Ecuador (Veddeler et al. Reference Veddeler, Klein and Tscharntke2006, Reference Veddeler, Olschewski, Tscharntke and Klein2008), Indonesia (Klein et al. Reference Klein, Steffan-Dewenter and Tscharntke2003a), Jamaica (Raw and Free Reference Raw and Free1977), Mexico (Vergara and Badano Reference Vergara and Badano2009), Panama (Roubik Reference Roubik2002), and Papua New Guinea (Willmer and Stone Reference Willmer and Stone1989; Martins Reference Martins2007; Karanja et al. Reference Karanja, Njoroge, Gikungu and Newton2010). In almost every case, stingless bees (Hymenoptera: Apidae: Apinae: Meliponini) were also found to be major coffee visitors, second only to Apis. These social bees are generalist foragers that display floral constancy, a temporary preference to one single floral source, when foraging (Linsley and MacSwain Reference Linsley and MacSwain1958; Wilson and Stine Reference Wilson and Stine1996). This floral constancy may explain the large number of social bees found on coffee flowers during mass blooms (Free Reference Free1963; Waser Reference Waser1986; Grüter et al. Reference Grüter, Moore, Firmin, Helanterä and Ratnieks2010). Our data showed Dialictus to be most abundant in coffee farms followed by stingless bees (Trigona). The visual observation method used in the earlier studies is potentially biased towards bees that are easier to see due to their size and foraging behaviour. Dialictus can be relatively difficult to see on flowers; however, passive sweep netting can yield large numbers even when visual observations fail to detect them in abundance. The limitations of visual observation could explain the relatively low number of small halictids found in previous studies. Dialictus are broadly polylectic (sensu Cane and Sipes Reference Cane and Sipes2006) and are known to visit various genera in the Rubiaceae among others (Moure and Hurd Reference Moure and Hurd1987). For this reason it would be unexpected for Dialictus not to visit coffee unless there was a significantly more attractive resource in the vicinity. It is worth noting that the short duration of coffee flushes would provide insufficient resources for bees to specialise upon coffee pollen, especially for social bees that are generally active for a longer proportion of the year than are solitary bees (Minckley and Roulston Reference Minckley and Roulston2006).
Some of the differences between bee communities as recorded in this study compared to other studies may be attributed to our sampling method; ours is the first to use Malaise traps to survey bees, despite them being a commonly employed passive insect sampling method (e.g., Matthews and Matthews Reference Matthews and Matthews1971; Kerr et al. Reference Kerr, Sugar and Packer2000). Some argue that it is the best method of trapping insects in tropical biodiversity surveys (Brown Reference Brown2005; Missa et al. Reference Missa, Basset, Alonso, Miller, Curletti and De Meyer2009). Compared to the sampling biases of visual observations, the Malaise trap is more likely to catch smaller bees such as Dialictus. Several other studies that compare insect traps confirm that the Malaise trap is relatively efficient at catching a diverse and representative array of arthropods (Oxbrough et al. Reference Oxbrough, Gittings, Kelly and O'Halloran2010) including Hymenoptera (Noyes Reference Noyes1989; Bartholomew and Prowell Reference Bartholomew and Prowell2005; Smith-Pardo and Gonzalez Reference Smith-Pardo and Gonzalez2007).
Integrating multiple surveying methods (e.g., sweep netting, Malaise trapping and pan-trapping) in diversity studies is recommended (Leong and Thorp Reference Leong and Thorp1999; Bartholomew and Prowell Reference Bartholomew and Prowell2005; Campbell and Hanula Reference Campbell and Hanula2007; Westphal et al. Reference Westphal, Bommarco, Carré, Lamborn, Morison and Petanidou2008; Missa et al. Reference Missa, Basset, Alonso, Miller, Curletti and De Meyer2009) in order to counteract the various biases present in sampling methods (Cane Reference Cane2001; Wilson et al. Reference Wilson, Griswold and Messinger2008). In this study, the short flowering flush of coffee plants precluded the use of more labour intensive survey methods that would have been necessary to sample so many sites simultaneously. Nonetheless, the bee community compositions we found are strikingly different from those obtained through visual observations (Nogueira-Neto et al. Reference Nogueira-Neto, Carvalho and Antunes1959; Amaral Reference Amaral1972; Raw and Free Reference Raw and Free1977; Willmer and Stone Reference Willmer and Stone1989; Malerbo-Souza and Nogueira-Couto Reference Malerbo-Souza and Nogueira-Couto1997; Roubik Reference Roubik2002; Klein et al. Reference Klein, Steffan-Dewenter and Tscharntke2003a; Ricketts Reference Ricketts2004; Veddeler et al. Reference Veddeler, Klein and Tscharntke2006, Reference Veddeler, Olschewski, Tscharntke and Klein2008; Vergara and Badano Reference Vergara and Badano2009).
We found that land-use activities (agriculture) and shade trees in agroecosystems were important in shaping bee communities. Unshaded coffee sites had significantly higher observed bee species richness and a greater number of bee individuals compared to shaded coffee farms and nonagricultural sites. However, bee evenness was significantly lower for unshaded sites. This suggests that the absence of shade trees benefited only a small proportion of the regional bee fauna and the functional group analysis showed that the affected group was primarily ground nesting bees of the subgenus Dialictus. The only dependent variable that did not show a significant difference between the unshaded coffee farms and the nonagricultural sites was the Shannon-Wiener biodiversity index (H′). However, the small range of Shannon-Wiener values (normally between 1.5 and 3.5 based on empirical data), often makes significant differences difficult to detect with this index (Margalef Reference Margalef1972; Magurran Reference Magurran2004).
Bee functional group analyses showed unshaded coffee farms had the highest observed species richness and abundance in every functional group category compared to shaded coffee farms and nonagricultural sites (Fig. 4). The distribution of number of species of aboveground versus ground-nesting bees was significantly associated with site type with more species (above and below ground) in the unshaded coffee farms, whereas the distribution of the individuals in these functional group categories was not. The stronger presence of ground nesting bee species in unshaded coffee farms is expected given that availability of nesting sites is higher. The presence of higher aboveground bee species in coffee farms may be due to the synchronous bloom of coffee creating a sudden abundance of nectar. Aboveground nesting bee species may not necessarily have their nests within the coffee farms but may be flying from adjacent areas to obtain floral resources.
The observed abundance of social bees was higher than expected in both the shaded and unshaded coffee farms. This is likely a result of social bee foraging behaviour. Highly social bees, such as honeybees and stingless bees, have advanced recruitment behaviours that improve their foraging efficiency (Nieh Reference Nieh2004). This could explain our observation of higher abundance of highly social bees without a concomitant increase in their observed species richness.
Last, the observed abundance of small and large-bodied bees was significantly different from expected values; both shaded and unshaded coffee farms had a larger number of small-bodied bees, mostly attributable to Dialictus. A few species clearly dominate in abundance followed by many with only a few individuals. The abundance of Dialictus in our samples is likely related to sociality and the availability of nesting sites. The nesting biology of Dialictus has not been studied for many species but most are expected to be primitively eusocial (Danforth et al. Reference Danforth, Conway and Ji2003; Gibbs et al., 2012). Social bees usually have more foraging individuals per nest than solitary ones (Michener Reference Michener1974); therefore, the presence of suitable nesting sites for Dialictus may have led to a disproportionately large increase in Dialictus foragers. Although the observed species-richness distribution of small and large-bodied bees was higher in unshaded coffee farms, it was not significantly different from the expected species richness calculated based on our control sites.
If further research can link the diversity of non-Apis species, especially Dialictus, to coffee crop yield we would recommend a shift towards more bee-diverse, sustainable shade coffee farming strategies. We recommend integrating nesting habitats for native bees in coffee plantations. A diverse assemblage of shade trees could provide nesting sites for both cavity-nesting and twig-nesting bees. Bees with these nest site preferences are relatively abundant in tropical areas (Michener Reference Michener1979) where coffee is grown and includes taxa important for pollination (Heard Reference Heard1999; Bosch and Kemp Reference Bosch and Kemp2002). Shade trees are also beneficial for other animal taxa (Moguel and Toledo Reference Moguel and Toledo1999) and their use improves coffee quality (Muschler Reference Muschler2001). We agree with Klein et al. (Reference Klein, Steffan-Dewenter and Tscharntke2003a) that integrating areas of open soil into the farm matrix in a shaded system will encourage ground-nesting bees to occupy coffee farms. Specifically, Dialictus are known not to have very specific edaphic requirements (Kim et al. Reference Kim, Williams and Kremen2006); therefore, providing suitable nesting areas for them in agricultural settings could be an easy strategy for increasing their numbers (Williams et al. Reference Williams, Crone, Roulston, Minckley, Packer and Potts2010). The majority of bee species are ground nesters but this is less so in tropical areas (Michener Reference Michener1979). High humidity and heavy rainfall can waterlog soils, leading to brood mortality (Packer and Knerer Reference Packer and Knerer1986). High intensity land use and tree removal on coffee farms may decrease ground-level humidity (Klein et al. Reference Klein, Steffan-Dewenter, Buchori and Tscharntke2002) and improve conditions for ground-nesting bees. A combination of open space and shaded areas would provide nesting habitats for both bee functional groups and increase habitat complexity to benefit overall biodiversity.
To attract more bees to coffee farms, there should be minimal weed control to that other flowers can grow alongside the coffee plants providing additional resources for bees outside the restricted periods of coffee flushes. Noncrop food plants can be essential in building and maintaining sustainable pollinator populations in agroecosystems. For example, Sheffield et al. (Reference Sheffield, Westby, Smith and Kevan2008) found that lupine, Lupinus polyphyllus Lindley (Fabaceae), was an important alternative food source for pollinators in Nova Scotia, Canada apple orchards because apple trees flower for such a short period of time that pollinator populations dwindled without the alternative food source. Similar strategies might be beneficially applied to sustain pollinator populations for coffee production.
Acknowledgements
The authors thank Dr. C. Praz and two anonymous reviewers for providing insightful comments. They acknowledge the following institutions in Costa Rica: Instituto Nacional de Biodiversidad (INBio), CoopeAgri R. L. in Pérez Zeledón, Centro Científico Tropical (CCT), Ministerio del Ambiente y Energía (MINAE), and La Universidad Nacional (UNA) Sede Region Brunca. The authors thank all of the Costa Rican farmers who cooperated in this project. They also thank Teresa Cartín, Dr. M. Otterstatter, Dr. C. Sheffield, S. Dumesh, the late Dr .H. Daugherty, the Department of Biology at York University, and the Natural Sciences and Engineering Research Council of Canada grants awarded to Dr. L. Packer.