key: cord-009703-ampqjbqw authors: Chacón‐Labella, Julia; García Palacios, Pablo; Matesanz, Silvia; Schöb, Christian; Milla, Rubén title: Plant domestication disrupts biodiversity effects across major crop types date: 2019-07-03 journal: Ecol Lett DOI: 10.1111/ele.13336 sha: doc_id: 9703 cord_uid: ampqjbqw Plant diversity fosters productivity in natural ecosystems. Biodiversity effects might increase agricultural yields at no cost in additional inputs. However, the effects of diversity on crop assemblages are inconsistent, probably because crops and wild plants differ in a range of traits relevant to plant–plant interactions. We tested whether domestication has changed the potential of crop mixtures to over‐yield by comparing the performance and traits of major crop species and those of their wild progenitors under varying levels of diversity. We found stronger biodiversity effects in mixtures of wild progenitors, due to larger selection effects. Variation in selection effects was partly explained by within‐mixture differences in leaf size. Our results indicate that domestication might disrupt the ability of crops to benefit from diverse neighbourhoods via reduced trait variance. These results highlight potential limitations of current crop mixtures to over‐yield and the potential of breeding to re‐establish variance and increase mixture performance. Global agricultural production needs to rise by 60-110% to accommodate the projected demands for food by 2050 (Tilman et al. 2011 ). This constitutes a major challenge, in particular if it is to be met without substantial expansion of croplands and reduced usage of synthetic fertilisers and pesticides (Foley et al. 2011; Gurr et al. 2016; Wan et al. 2018) . Therefore, farming practices that increase crop production in a sustainable way are needed. The promotion and management of biodiversity effects, that is, higher productivity of species mixtures than expected from their respective monocultures, might contribute to address this challenge (Brooker et al. 2015; Isbell et al. 2017; Martin-Guay et al. 2018) . However, while biodiversity effects have been solidly demonstrated in natural ecosystems (Loreau & Hector 2001; Tilman et al. 2001; Hooper et al. 2005; Cardinale et al. 2011) , the literature reports contrasting responses in mixtures of arable crops, ranging from positive (Kiaer et al. 2009; Lin 2011; Reiss & Drinkwater 2018) to negative (Pimentel et al. 2005; Letourneau et al. 2009; Snapp et al. 2010) , with considerable variation between years, locations and crop species (Fridley 2002; Hauggaard-Nielsen et al. 2008; Smith et al. 2008; Snapp et al. 2010) . Here, we argue that evolution of plant phenotypes after domestication might partly account for such discrepancies between the behaviour of wild and crop plants in mixtures. Experiments in agricultural and natural settings use different experimental setups, which might explain part of the disparities (Brooker et al. 2015) . For instance, biodiversity-ecosystem functioning (BEF) experiments use regular spacing among plants and keep fixed plantation densities (Trenbath 1974; Schmid & Hector 2004; Bruelheide et al. 2014; Schmid et al. 2017) . Experiments with crops use more variable spatial arrangements (e.g. intercropping patterns, Mal ezieux et al. 2009), and generally very different metrics (land equivalent ratios vs. additive partitioning of biodiversity effects; Adetiloye & Ezedinma 1983; Loreau & Hector 2001 ). Therefore, different methods might result in discordant biodiversity effects. Another cause of discrepancy might be the values of the traits of the plant species and genotypes involved in the mixtures. Crop phenotypes are different from those of their wild progenitors (Meyer et al., 2012) or other wild plants (Milla et al. 2018) . Herbaceous crops are generally larger seeded than their wild relatives, have lost seed dormancy and dispersal mechanisms, and show erect and compact growth habits (Harlan et al. 1973; Meyer et al., 2012) . Further traits that might have changed after crop domestication can be relevant for plant performance in mixtures. For example, increased plant canopy height and leaf area after domestication (Milla et al. 2014; suggest that crops are stronger competitors for light than their wild progenitors. Additionally, genetic bottlenecks (due to selection processes by early farmers) and crop breeding for maximum monoculture yield have substantially reduced the genetic diversity of crops (Tanksley & Mccouch 1997; Doebley et al. 2006; Zeder 2006) . This reduction in genetic diversity might lead to increased phenotypic uniformity, that is, constant phenotypes in different environments (Bloomfield et al. 2014) . Genetic variability and phenotypic plasticity trigger resource use complementarity in mixtures (Mal ezieux 2012; Zeller et al. 2012; Zuppinger-Dingley et al. 2014; Prieto et al. 2015) . Indeed, a recent study employing genetically divergent Arabidopsis accessions suggests that biodiversity effects can be partly tractable in the genotype (i.e. allelic mixtures at locus Chr4@16.92 were more productive in terms of biomass than the most productive monoallelic community; Wuest & Niklaus 2018) . Thus, if domestication and further breeding have reduced genetic diversity and increased constancy of phenotypes, achieving higher productivity in crop mixtures through increased niche complementarity might be compromised. In addition, recent evolution under monoculture might also have diminished the ability of crops to perform in mixtures. Current genotypes of major arable crops were selected to maximise yields in monospecific stands (Weiner et al. 2017) , which entailed adaptations to perform in an intraspecific neighbourhood (e.g. high phenological synchrony). In contrast, wild plants composing the natural and seminatural grasslands typical of BEF experiments, as well as crop wild progenitors, have evolved in mixed plant communities for their entire evolutionary history. Local adaptations to a diverse neighbourhood can evolve over short-time periods and differently depending on the biotic (Zuppinger-Dingley et al. 2014) and abiotic conditions (i.e. elevated CO 2 ; Kleynhans et al. 2016) . Indeed, competitive hierarchies and further adaptations through niche differentiation or facilitation (which are the mechanisms underlying biodiversity effects) are more likely to evolve in diverse communities than in monospecific stands (Sch€ ob et al. 2018) . A recent study found that biodiversity effects in mixtures of genotypes with a recent history of coexistence were higher than in mixtures of genotypes with a monoculture history (Zuppinger-Dingley et al. 2014) . Importantly, in a short period of 8 years of coselection history in mixtures, plants evolved adaptations to improve over-yielding (Zuppinger-Dingley et al. 2014) . Given that most crop species have been selected under monoculture conditions over centuries, the results of Zuppinger-Dingley et al. (2014) suggest that crop plants might be less suited to over-yielding in mixtures, and might benefit less from biodiversity effects than their wild progenitors. The primary goal of this study was to investigate how domestication has affected the ability of annual crops to deliver biodiversity effects. Specifically, we compared the performance and functional trait diversity of assemblages of annual crops and of their wild progenitors, set to grow in mesocosms of varying levels of diversity. We hypothesised that: (1) crop species will show lower biodiversity effects than their wild progenitors, and (2) weak biodiversity effects in crop mixtures will be driven by increased similarity in functional traits within assemblages. To test whether domestication has affected the ability of annual crops to perform in mixtures, we conducted a biodiversity-ecosystem functioning (BEF) experiment with annual crop species. We selected eight crops (two forbs, two C 3 grasses, two C 4 grasses, and two legumes), and gathered seeds of a domesticated and a wild progenitor accession of each (Table 1) . We grew and harvested each species in monoculture and in three types of mixtures, separately for wild progenitor and domesticated accessions. To calculate biodiversity effects, we followed the additive partitioning method of Loreau & Hector 2001 , and partitioned net biodiversity effects into complementarity and selection effects. Additionally, we measured a suite of plant traits (height, leaf area, leaf mass per area, and leaf mass fraction) that influence growth and plant-plant interactions in mixtures Prieto et al. 2015) . We calculated within-mixture trait differences (i.e. ratio between absolute differences and trait means) to address whether differences in the ability to over-yield are modulated by phenotypic diversity within assemblages. To include the most prominent functional groups in annual croplands, we used two species of each of the major functional groups of annual crops: C 3 grasses, C 4 grasses, legumes, and forbs (Table 1) . Plants were grown in 6L pots with a fixed density of four individuals across all treatments. Individuals of the 16 accessions were grown in monocultures and in mixtures. Each type of mixture included all possible combinations of species and functional groups in the experiment, separately for wild progenitor and domesticated accessions. We built three types of mixtures: one type of within-functional group polycultures and two types of among-functional group polycultures ( Fig. 1) . Within-functional group polycultures were composed of two individuals of two different species of a given functional group. The among-functional group polycultures consisted either of a mix of two different species of two different functional groups, or a mix of four different species, belonging each to one of the four functional groups. We implemented four levels of increasing diversity: monocultures (16 combinations, 94 pots), within-functional group two species mixtures (two species of the same functional group; 8 combinations; 63 pots), among-functional group 2-species mixtures (two species from two different functional groups; 48 combinations; 141 pots), and among-functional group 4-species mixtures (four species of four different functional groups; 32 combinations; 63 pots). Experimental design, treatments, and species combinations within each treatment are summarised in Table S2 . Detailed information about the assignment of wild progenitors, or seed accession identifiers and seed donors can be found in Table S1 . In May 2016, seeds of each accession were germinated in small individual pots (6 9 4 9 4 cm) filled with commercial topsoil (Klasmann; Traysubstrate 060). Once germinated, and as soon as transplanting was feasible without compromising plant establishment, randomly selected seedlings were transplanted to the experimental pots (25 9 15.5 9 15.5 cm, 6L). The pots were filled with conventional, washed river sand and supplemented with slow-release fertiliser (8 gdm -3 ; Basacote Plus 6M; Compo, Barcelona, Spain; see fertiliser components on Table S3 ). The amount of fertiliser was set to grow plants under high-nutrient availability conditions (Day et al. 2003) . All pots were randomly located on three greenhouse benches at Universidad Rey Juan Carlos, Mostoles-Madrid, central Spain (40°18´48″ N, 3°52´57″ W), and received full sun (mean midday photosynthetically active radiation [PAR] c. 1200 µmol m À2 Ás À1 , measured in three consecutive clear days of the experiment; LI-COR, Lincoln, NE, USA). Watering was applied regularly via sprinklers to maintain the pots at 80-90% of their field water holding capacity. Pots were regularly weeded to keep the species composition as designed. Replacement of dead seedlings took place during the first 10 days of the experiment, by seedlings of the same age. After that period, all pots lacking one or more individuals were discarded. The experiment ran until reproductive development was observed in the earliest flowering accessions, which set the harvest date of the experiment. Pesticides were not needed during the experiment. Details on the number of replicates per treatment and domestication status can be found in Table S2 . To explore how the variation in functional traits within pots (character displacement) underlies biodiversity effects, we measured plant height (h), leaf area (LA), leaf mass per area (LMA) and leaf mass fraction (LMF). Plants that hold more than optimal h or LA are competitively superior in intercepting light and generally displace shorter and smaller-leaved species (Westoby et al. 2002; Anten 2005) . High variation in h and/or LA is often associated with increased productivity via selection effects (Cadotte 2017) . LMF is directly and LMA is inversely related to plant relative growth rate (RGR; Reich et al. 1997; Poorter & Garnier 1999) . Variation in LMA in stands is related to different light-use strategies and increased productivity via complementarity (Roscher et al. 2015; Cadotte 2017) . LMF is the proportion of biomass allocated to leaves. At high densities, variation in LMF would indicate different strategies to capture light and other resources (Poorter et al. 2012) . Measurements of all traits were performed at the individual level. Plant height (h; cm) was measured just before harvest, when reproductive development started in the earliest flowering accession (5 weeks after transplanting into the experimental pots). Aboveground biomass was harvested at ground level separately for each individual in the experiment, separated into leaves and other organs, and oven dried at 65°C for 3 days prior to weighting. Leaf area was measured as the lamina area (LA, in mm 2 ) of a representative leaf by scanning a fresh leaf immediately after plant harvest, and its dry mass was used to calculate leaf mass per area (LMA, in g mm À2 ). Leaf mass fraction (LMF, unitless) was measured as the ratio of the total leaf mass to the total dry mass of each individual plant. To calculate the relative differences in height, leaf area, LMA and LMF within pots, we calculated all the absolute differences between each two individuals of a pot divided by the mean of the two, and then calculating the mean of all the values. Biodiversity effects are based on the differences between the observed yields of each species in mixtures compared to monocultures, and may be partitioned into complementarity effects (CEs) and selection effects (SEs) following the approach of Loreau & Hector 2001 . CEs measure if species' yields in a mixture are on average higher or lower than expected by the relative yields of the component species in monoculture. Positive CEs are indicative of niche partitioning and facilitative interactions resulting in an increase in total resource use, while negative complementarity effects indicate competitive interactions among plants resulting from either chemical or physical interferences (Loreau & Hector 2001) . SEs are measured as the covariance between the deviation from the expected relative yield of a species in a mixture and the yield of the same species in monoculture. SEs occur when the change in the relative yield of a species in a mixture is a function of its yield in monoculture (i.e. a species with high or low yield in a monoculture yields disproportionately more, or less, respectively, in mixture). Net effects (NEs) are the sum of CEs and SEs. All three effects can be either positive or negative. NE has an expected value of zero under the null hypothesis of no biodiversity effects (see the Supporting Information for calculation details). Biodiversity effects in crops vs. wild progenitors and across diversity levels We compared the performance of wild and domesticated plant species mixtures using mixed effects models with residual maximum likelihood estimation. Significance tests were based on approximate F-tests. Biodiversity effects (NEs, CEs and SEs; g/ pot) were the response variables in the models. Absolute values of NEs, CEs and SEs were square root-or log-transformed to meet assumptions of homoscedasticity, and after that, their original signs put back to the transformed values for analyses, which allowed maintaining the direction of the effects (Loreau & Hector 2001) . The fixed terms of the model were, in this order, bench (three levels), domestication status (DOM: crop vs. wild), species richness (SPr: two vs. four species), functional group richness (FGr: one vs. two functional groups), functional group combination (FG comb: eleven levels), and their interactions. Not all possible combinations between functional group richness and species richness existed. Several of the combinations are impossible (e.g. four functional groups and one species) while others are possible but were not included in the design (e.g. one functional group and four species, or two functional groups and two species). To deal with such a non-fully factorial design, we used a nested structure of the fixed-effect terms. Thus, FGr (one vs. two functional groups) was nested within SPr (two vs. four species), in such a way that the factor FGr only applies to one level of SPr, that is, two species. A total of 267 biodiversity effects were calculated in mixture pots (more details in Table S2 ). Species combination was used as a random intercept term. No outliers were excluded from the analyses. The full model is shown in Table 2 . To test whether the results were consistent across functional groups, we split the data into four smaller, overlapping, data sets, by the presence of each functional group (legumes, forbs, C 4 grasses or C 3 grasses) in the pots. Then, we performed the analyses for each of these new data sets and tested the effects of the different predictors on biodiversity effects separately per functional group. To test whether character displacement within pots is the underlying mechanism of biodiversity effects, we tested whether the relative differences in traits follow the same significant direction as CE or SE does for crops and wilds. For this purpose, we used the mean relative differences for a given trait in mixture pots as a response variable, using the same mixed model as the one employed for explaining the biodiversity effects (NE, CE and SE) in crops vs. wilds progenitors. The full model is presented in Table S5 . To directly test the association between biodiversity effects and the differences in particular functional traits, we ran mixed models using the biodiversity effects (NE, CE and SE) as response variable, but adding the mean differences per trait as an explanatory variable. This model is presented in Table S6 . When the variation in a given functional trait correlated with CEs or SEs, we explored these specific relationships further using standardised major axis (SMA) regressions (Warton et al. 2012) . First, we fitted SMA regressions separately for crops and for wild progenitor pots and tested for a common slope using a Bartlett-corrected likelihood ratio test (Warton & Weber 2002) . If the assumption of a common slope was justified, a Wald test was performed to identify significant differences in elevation and shifts along the common axis between crops and wild progenitors. All statistical analyses were conducted using R version 3.4.2 (R Core Team 2017). Mixed models were fitted using the function lmer from package lme4 (Bates et al. 2015) . Significance of the fixed factors was assessed with type I ANOVA tests from the package lmerTest (Kuznestsova et al. 2017) . We estimated conditional (variance explained by fixed and random factors) and marginal R 2 (variance explained by fixed factors alone) using the function r.squaredGLMM from the MuMIn package (Barton 2014) . SMA analyses were performed using the smart library in R (Warton et al. 2012) . Plots were produced using ggplot2 (Wickham 2016) . Net biodiversity effects were significantly higher in mixtures of wild progenitors than in the mixtures of their domesticated counterparts ( Fig. 2a ; Table 2 ; P = 0.029). Differences in NEs between domestication statuses were largely driven by stronger positive SEs in the mixtures of wild progenitors compared with the mixtures of crops ( Fig. 2a ; Table 2 ; P = 0.004). Biomass was 12% higher, on average, in the mixtures of wild progenitors compared to the biomass expected from monocultures (Fig. S5) . The effects of plant domestication status on SE were consistent across the four functional groups evaluated ( Fig. S1 ; Table S2 ). Complementarity effects were also generally positive, but similar among domestication statuses (Fig. 2a) . Increasing diversity from two to four species or from one to two functional groups had no significant effects on NEs ( Fig. 2b and c) . The effects of species richness (P = 0.051) and functional group richness (P = 0.021) on SE were positive in both mixtures of crops and wild progenitors (Fig. 2f , g; Table 2 ). Although CE decreased with increasing levels of species richness (Fig. 2d) , this negative effect of species richness on CE was not significant. Conversely, functional group richness increased CE in crop mixtures but decreased in mixtures of wild progenitors (interaction between domestication status and functional group richness; P = 0.06; Table 2 ). This trend was stronger in the pots containing C 4 grasses ( Fig. S2b for C 4 grasses; Table S2 ; P = 0.001). Character displacement within mixtures varied between domesticated crops and their wild progenitors in a trait-specific manner. Crop mixtures showed lower variation in leaf area than their wild progenitors ( Fig. 3b ; P < 0.001), and higher variation in LMA and LMF (P = 0.011 and P < 0.001 respectively; Fig. S4 ; Table S5 ). Variation in plant height was similar in pots of wilds and domesticated crops (P = 0.118; Figure S4 ; Table S5 ). Selection effects correlated positively with the relative differences in leaf area (P = 0.019; R 2 m ¼ 0:38; R 2 c ¼ 0:71; Fig. 3a ; Figure S4 ; Table S6 ). Therefore, given that wild mixtures showed higher variation in leaf area than crops, and that such variation correlated with SEs, we explored this relationship further using SMA regression (Warton et al. 2012) . SEs were significantly correlated with leaf area differences across domestication statuses (P < 0.001, slope = 4) and individually for both samples. SMA slopes were significantly different from zero (domestic crops: P < 0.01, slope = 3.96, wild progenitors: P < 0.01, slope = 4.12), homogeneous among domesticated and wild progenitors (P> 0.05), and with a significant shift along the common slope (P < 0.001). Thus, SMA analyses support the results (1) that SEs are partly explained by differences in leaf area within pots, and (2) that pots of wild progenitors have more diverse leaf area scores compared to domesticated crops (see Fig. 3 ). Additionally, SMA analyses show that diversity in leaf area within pots affects SEs in a similar way and intensity (i.e. slope) in domesticated and wild assemblages, though at different positions along the difference-in-leaf-area range. Our results show that diversity promotes productivity also in arable crops, but suggest that through the course of plant domestication crop varieties have lost part of their capability of delivering biodiversity effects. We found greater biodiversity effects in wild progenitors' assemblages, compared to their crop counterparts, and provide evidence that crops might have lost their ability to benefit from biodiversity effects via reduced functional trait variation within mixtures. Interestingly, the stronger biodiversity effects shown by wild progenitors are attributable to stronger selection effects, which in turn were primarily associated with larger differences in leaf size. Positive selection effects occur when species with higher than average biomass in monoculture yield higher than Figure 2 Biodiversity effects across domestication statuses and diversity levels. (a) Biodiversity effects (net, complementarity and selection effects) in the mixtures of domesticated crops and wild progenitors. Biodiversity effects were assessed by additive partitioning of net effects, and decomposed into complementarity and selection effects (n = 272). (b-g) Biodiversity effects split into net, complementarity and selection effects of crops and their wild progenitors, grouped per increasing species richness (red) and functional group richness (blue). Values are means AE standard error of the mean (sem) calculated from raw data. These data are shown separately per functional group (legumes, forbs, C 3 or C 4 grasses) in the Supporting Information (Figures S1, S2 and S3) expected in mixture. Functional differences within assemblages are relevant to plant-plant interactions and underlie biodiversity effects, either because they promote a complementary use of resources or because they trigger selection effects (Fox 2005; Mal ezieux et al. 2009; Zuppinger-Dingley et al. 2014; Prieto et al. 2015) . However, functional differences are different between crops and wild plants (Meyer et al., 2012; Milla et al. 2014 ). Thus, it is possible that some trait values, or combinations of trait values, necessary for enhancing yield in mixtures are absent or downplayed in current crop varieties, as shown here for leaf area. The consequences for fostering crop yields in a sustainable way are wide, as crops might carry an evolutionary legacy that impacts the capacity of crop mixtures to over-yield. Although wild progenitors showed higher net biodiversity effects than crops, we show that both domestication statuses over-yielded in mixtures. Our results for arable crops are in line with diversity-productivity relationships reported for other types of plant communities (Loreau & Hector 2001; Tilman et al. 2001; Hooper et al. 2005; Cardinale et al. 2011) , and concur with previous studies reporting positive biodiversity effects in crop mixtures (Li et al. 1999 (Li et al. , 2006 (Li et al. , 2007 Kiaer et al. 2009; Lin 2011; Davis et al. 2012; Reiss & Drinkwater 2018 ; but see Pimentel et al. 2005; Letourneau et al. 2009; Snapp et al. 2010) . Our study expands the current knowledge for arable crops by using a BEF experiment approach, which specifically tests the role of increasing diversity, thereby ruling out the confounding effects of disparate spatial scales (Malezieux et al. 2009; Brooker et al. 2015) , compositional differences (no balanced combination of functional types or gradients of diversity; Mal ezieux et al. 2009) and temporal scales (Smith et al. 2008 ) of agricultural trials. Biodiversity can promote over-yielding through complementarity and/or selection effects (Fox 2005 ; Barot et al. 2017), Figure 3 Relative differences in leaf area between domestication statuses and their relationships to selection effects. (a) Relationship between selection effects and the relative differences between species within mixtures pots. The solid line shows the slope of a mixed effects model. The grey area shows the 95% confidence intervals of the fit line. Data points are observed scores for crops (hollow dots) and wild progenitors (yellow). The marginal density plots for the selection effects and the relative differences in leaf area are shown split for crops (hollow area) and wild progenitors (yellow area). (b) Relative differences of leaf area within pots, for each domestication status in mixture assemblages. Values are means AE standard error of the mean, calculated from raw data. Significance of the regression slope and significant differences between domestication statuses at the inset are indicated by asterisks (***P < 0.001; **P < 0.01; *P < 0.05). The same relationships for the relative differences in height, leaf mass fraction (LMF) and leaf mass area (LMA), and the selection effect are provided in Supporting Information ( Figure S4 ). whose relative relevance varies among study cases and duration of experiments (Fargione et al. 2007 ). In our experiment, SEs were much stronger than CEs. Selection effects are frequently disregarded as relevant contributors to over-yielding because they might signal strong competitive hierarchies, and thus suppressed species and preclusion to achieve transgressive over-yielding (Loreau 2000) . However, the fact that productive species over-yield disproportionately does not necessarily come at the cost of other species under-yielding. In our experiment, the patterns of relative yields of individual species suggest that dominance was not a relevant mechanism triggering SEs (see Fig. S6 ), which highlights that SEs are useful drivers of biodiversity effects and should not be overlooked in crop mixtures. Interestingly, SEs were stronger in assemblages of wild progenitors than in assemblages of crops, consistently across species and functional group richness levels. Moreover, dissimilarity in leaf areas, which were larger in mixtures of wilds, partly accounted for the lower capacity of crops to over-yield in mixtures. There is general consensus that functional differences between co-occurring species underlie the link between diversity and productivity (Cardinale et al. 2011 ). This link strengthens over time, due to adaptations through natural selection (Zuppinger-Dingley et al. 2014) . Thus, given time, populations of diverse mixtures are expected to be better adapted to growing with interspecific partners (Dawson & Goldringer 2012) . For example, Allard & Adams 1969 found that mixtures formed by varieties of barley selected as pure lines were less productive compared to mixtures of barley lines cultivated together for many generations. This is consistent with grassland BEF experiments showing that species with a co-selection history in mixtures develop functional trait divergence and increase biodiversity effects (both complementarity and selection effects; Zuppinger-Dingley et al. 2014) . Indeed, frequent biotic interactions have been documented to impose selection on plasticity in functional traits and result in functional divergence between neighbouring plants in experimental (Lipowsky et al. 2011 ) and natural grasslands (Abakumova et al. 2016) . Our results concur with these findings and provide evidence that crop breeding, as a selection process that generally occurs in monospecific stands, might have disrupted the ability of crops to develop strong biodiversity effects in diverse environments. These differences between crop plants and wild progenitors might arise either from directional selection in crops, or from reduced plasticity after domestication in certain traits , which remains to be investigated. In addition, arable cropping systems might pose limitations to co-evolutionary adaptations that promote complementarity (Zuppinger-Dingley et al. 2014 ). CEs generally increases over time (Fargione et al. 2007; Lipowsky et al. 2011; Reich 2012; Zuppinger-Dingley et al. 2014) , which indicates co-adaptation of the genotypes at play (Zuppinger-Dingley et al. 2014) , and might facilitate transgressive over-yielding in the long term (Cardinale et al. 2007 ). Since intercrops are rarely re-seeded on-farm in arable systems, which was mirrored in our experiment by using seeds with no previous history of coexistence, such opportunities for co-adaptation are precluded. We speculate that the ability of domesticated crops to adapt to local neighbourhoods would be hampered, either because they exhibit lower genetic variation and evolutionary potential (Doebley et al. 2006; Miller & Gross 2011; Zhang et al. 2015) and/or lower potential for plasticity due to an evolutionary history of coexistence in monocultures (Abakumova et al. 2016) . In other words, mixing pure varieties that exhibit local adaptation is probably significantly advantageous in terms of monoculture yield and other ecosystem services, but not necessarily optimal for the performance in mixtures. Thus, we suggest identifying traits, or trait combinations, that make mixtures of wild progenitors more productive, and bringing back the genes underlying those phenotypes to current varieties (Zhang et al. 2015; Wuest & Niklaus 2018) . Alternatively, instead of focusing on single beneficial traits, breeding for mixing ability can be oriented to increase genetic diversity and/or plasticity within crop varieties. Such strategies can be reinforced with classical breeding on standing variation within crops, and with multi-generation programs that allow de novo adaptations to multi-specific settings. Finally, it is important to acknowledge that some specificity of our set up and study system call for caution when generalising our findings, and might explain some discrepancies with preceding literature. For instance, it is remarkable that CEs in our experiment, even if positive, were generally weak. Previous studies on intercropping suggest that CEs can be quite large (Li et al. 2006 (Li et al. , 2007 (Li et al. , 2014 Davis et al. 2012) . Free-rooting intercrop experiments allow root growth complementarity, and displacement in phenological traits, more easily than in greenhouse settings (Li et al. 2006 (Li et al. , 2007 . Other benefits of diversification, like increases in soil biodiversity or in soil carbon storage, are better captured in the long term and at larger spatial scales (Davis et al. 2012) . Additionally, in spite of our efforts to include diverse crops from diverse functional types, our set up was limited to eight crop species, and ignored varietal and geographical diversity within the gene pool of each crop. Clearly, further studies addressing more crop species, and wider genetic, varietal and domestication status diversities within species, are needed. In this sense, to test if genotypes that are more closely related to their wild progenitors also show stronger biodiversity effects a set up that includes multiple stages along a sequence of domestication of a given species would be suitable (see e.g. Roucou et al., 2018) . Such an approach would reveal if a true 'dose-response' relationship exists between biodiversity effects and domestication. Our BEF experiment on eight arable crops revealed that domestication has reduced the ability of domesticated crops to benefit from biodiversity effects. We have shown that mixtures of wild progenitors attain higher biodiversity effects than mixtures of crops, driven by larger selection effects that are associated to larger differences in leaf area within assemblages. Our analysis showed that mixing annual crops might bring yield benefits if the composing species exhibit contrasting values of key functional traits. Since crop plants have a recent history of selection under monoculture, we argue that crop breeding might have hindered the ability of crop plants to perform in interspecific neighbourhoods through reduced genetic variance or plasticity in key traits. It will be interesting to explore to what extent the different functional divergences found within crops vs. wild mixtures arise from a directional selection of certain phenotypes or from a reduced plasticity in certain traits in crops. Moreover, as the adaptations to diverse coexistence environments are expected to increase over time, we propose breeding strategies including multiple generation programs that permit local adaptations to arise. Thus, further breeding programs should re-establish genetic diversity and plasticity to increase the performance of mixtures. Provided that implementing genes from wild progenitors has proved useful for multiple breeding purposes (Zhang et al. 2015; Wuest & Niklaus 2018) , and that we show here that wild progenitors might also have useful traits for coexistence in mixtures, we recommend a focus on wild relatives to breed crops for optimal polycultures. The authors acknowledge the funding from MINECO grants CGL2017-83855-R and PCIN-2014-053. We are also grateful to Carlos Ingala, Marina Ramos-Muñoz and Mario Blanco-S anchez for assistance in data gathering, and to three anonymous reviewers for their critical revisions of the manuscript. J.C-L. acknowledges the Agricultural Ecology group at ETH Zurich, and the Juan de la Cierva Formaci on Program (FJCI-2016-31065) for the financial support. CS was supported by the Swiss National Science Foundation (PP00P3-170645). P.G.P. acknowledges the Spanish Ministry of Economy and Competitiveness for financial support via the Juan de la Cierva Incorporaci on Program (IJCI-2014-20058) . SM was supported by the Juan de la Cierva and Ram on y Cajal programs. AUTHORSHIP RM originally formulated the idea and designed the experiment. RM, PGP and SM conducted the experiment. JCL analysed the data and wrote the manuscript with inputs from all other authors. All authors provided technical assistance and contributed substantially to revisions. Data supporting the results are available from the Dryad Digital Repository: https://doi.org/10.5061/dryad.3q7p6b5). Plasticity in plant functional traits is shaped by variability in neighbourhood species composition A land equivalent coefficient (LEC) concept for the evaluation of competitive and productive interactions in simple to complex crop mixtures Population studies in predominantly self-pollinating species XIII. Intergenotypic competition and population structure in barley and wheat Optimal photosynthetic characteristics of individual plants in vegetation stands and implications for species coexistence Designing mixtures of varieties for multifunctional agriculture with the help of ecology. A review MuMIn: Multi-modal inference. Model selection and model averaging based on information criteria (AICc and alike) Fitting linear mixed-effects models using lme4 Sustainable harvest: managing plasticity for resilient crops Improving intercropping : a synthesis of research in agronomy, plant physiology and ecology Designing forest biodiversity experiments: General considerations illustrated by a new large experiment in subtropical China Functional traits explain ecosystem function through opposing mechanisms Impacts of plant diversity on biomass production increase through time because of species complementarity The functional role of producer diversity in ecosystems Increasing cropping system diversity balances productivity, profitability and environmental health Breeding for genetically diverse populations: variety mixtures and evolutionary populations The effects of spatial pattern of nutrient supply on yield, structure and mortality in plant populations The molecular genetics of crop domestication From selection to complementarity: shifts in the causes of biodiversity-productivity relationships in a long-term biodiversity experiment Solutions for a cultivated planet Interpreting the 'selection effect' of biodiversity on ecosystem function Resource availability dominates and alters the relationship between species diversity and ecosystem productivity in experimental plant communities Multi-country evidence that crop diversi fi cation promotes ecological intensi fi cation of agriculture Comparative evolution of cereals Grain legume -Cereal intercropping: The practical application of diversity, competition and facilitation in arable and organic cropping systems Effects of biodiversity on ecosystem functioning: A consensus of current knowledge Benefits of increasing plant diversity in sustainable agroecosystems Grain yield increase in cereal variety mixtures: a meta-analysis of field trials Adaptation to elevated CO2 in different biodiversity contexts lmerTest package: tests in linear mixed effects Does plant diversity benefit agroecosystems ? A synthetic review Interspecific complementary and competitive interactions between intercropped maize and faba bean Root distribution and interactions between intercropped species Diversity enhances agricultural productivity via rhizosphere phosphorus facilitation on phosphorus-deficient soils Plant diversity and overyielding : insights from belowground facilitation of intercropping in agriculture Resilience in agriculture through crop diversification: adaptive management for environmental change Selection for monoculture and mixture genotypes in a biodiversity experiment Diversity in Plant Breeding: A New Conceptual Framework Biodiversity and ecosystem functioning: recent theoretical advances Partitioning selection and complementarity in biodiversity experiments Designing cropping systems from nature Mixing plant species in cropping systems: concepts, tools and models. A review The new green revolution: Sustainable intensification of agriculture by intercropping Differential plasticity to water and nutrients between crops and their wild progenitors Tansley review Patterns and processes in crop domestication: an historical review and quantitative analysis of 203 global food crops Growing larger with domestication: a matter of physiology, morphology or Growing larger with domestication: a matter of physiology Shifts and disruptions in resource-use trait syndromes during the evolution of herbaceous crops Phylogenetic patterns and phenotypic profiles of the species of plants and mammals farmed for food From forest to field: Perennial fruit crop domestication Environmental, energetic, and economic comparisons of organic and conventional farming systems Ecological significance of inherent variation in relative growth rate and its components Tansley review Biomass allocation to leaves, stems and roots : meta-analyses of interspecific variation and environmental control Complementary effects of species and genetic diversity on productivity and stability of sown grasslands Impacts of biodiversity loss escalate. Science (80-) From tropics to tundra: Global convergence in plant functioning Cultivar mixtures: A metaanalysis of the effect of intraspecific diversity on crop yield: A Contrasting effects of intraspecific trait variation on trait-based niches and performance of legumes in plant mixtures Shifts in plant functional strategies over the course of wheat domestication The value of biodiversity experiments A guide to analyzing biodiversity experiments Evolution of facilitation requires diverse communities Effects of crop diversity on agroecosystem function: Crop yield response Management intensity -not biodiversity -the driver of ecosystem services in a long-term row crop experiment Seed banks and molecular maps: unlocking genetic potential from the Diversity and productivity in a long-term grassland experiment Global food demand and the sustainable intensi fi cation of agriculture Biomass productivity of mixtures Increasing plant diversity with border crops reduces insecticide use and increases crop yield in urban agriculture Common slope tests for bivariate errors-in-variables models SMATR 3 -an R package for estimation and inference about allometric lines Evolutionary agroecology: individual fitness and population yield in wheat (Triticum aestivum) Plant ecological strategies : Some leading dimensions of variation between plant ecological strategies: some leading dimensions of variation between species ggplot2: Elegant Graphics for Data Analysis A plant biodiversity effect resolved to a single chromosomal region Central questions in the domestication of plants and animals Mixtures of genetically modified wheat lines outperform monocultures Back into the wild -Apply untapped genetic diversity of wild relatives for crop improvement Selection for niche differentiation in plant communities increases biodiversity effects Additional supporting information may be found online in the Supporting Information section at the end of the article.