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Oikos 116: 439 ! 448, 2007 doi: 10.1111/j.2006.0030-1299.15586.x, Copyright # Oikos 2007, ISSN 0030-1299 Subject Editor: Owen Petchey, Accepted 30 October 2006 Extinctions in competitive communities forced by coloured environmental variation Lasse Ruokolainen, Mike S. Fowler and Esa Ranta L. Ruokolainen ([email protected]), M. S. Fowler and E. Ranta, Integrative Ecology Unit, Dept of Biological and Environmental Sciences, P.O. Box 65 (Viikinkaari 1), FI-00014 University of Helsinki, Helsinki, Finland. Present address for LR: Dept of Ecology and Evolutionary Biology, Viikinkaar1, PO Box 65, FI-00014 University of Helsinki, Helsinki, Finland. Understanding the relationships between environmental fluctuations, population dynamics and species interactions in natural communities is of vital theoretical and practical importance. This knowledge is essential in assessing extinction risks in communities that are, for example, pressed by changing environmental conditions and increasing exploitation. We developed a model of density dependent population renewal, in a Lotka ! Volterra competitive community context, to explore the significance of interspecific interactions, demographic stochasticity, population growth rate and species abundance on extinction risk in populations under various autocorrelation (colour) regimes of environmental forcing. These factors were evaluated in two cases, where either a single species or the whole community was affected by the external forcing. Species’ susceptibility to environmental noise with different autocorrelation structure depended markedly on population dynamics, species’ position in the abundance hierarchy and how similarly community members responded to external forcing. We also found interactions between demographic stochasticity and environmental noise leading to a reversal in extinction probabilities from under- to overcompensatory dynamics. We compare our results with studies of single species populations and contrast possible mechanisms leading to extinctions. Our findings indicate that abundance rank, the form of population dynamics, and the colour of environmental variation interact in affecting species extinction risk. These interactions are further modified by interspecific interactions within competitive communities as the interactions filter and modulate the environmental noise. Climate and anthropogenic changes to the environment pose a clear threat to biological diversity (Walther et al. 2002). Consequently, the relationship of population extinctions to environmental variation has become an elementary topic in ecological research in recent years. The mechanisms behind, and effects related to, species extinction have been studied from various angles. Earlier studies focused on the effects of environmental noise on extinction risk in single species populations (Roughgarden 1975, Ripa and Lundberg 1996, 2000, Kaitala et al. 1997a, 1997b, Petchey et al. 1997, Heino 1998, Ripa and Heino 1999, Heino et al. 2000, Laakso et al. 2004, Pike et al. 2004, Schwager et al. 2006), while it is now recognised that species interactions have important consequences that cannot be ignored. Many studies have focused on the cascading effects of species removal events in ecological communities (Paine 1966, Pimm 1980, Fowler 1990, Lundberg et al. 2000, Fowler and Lindström 2002, Fowler 2005, Eklöf and Ebenman 2006), while others have looked at how extinctions are affected by different management strategies in both single species microcosms (Fryxell et al. 2005) and model multispecies communities (Enberg et al. 2006). Noise colour relates to the analogy between the degree of autocorrelation of a time-series and the frequency of visible light. ‘‘Red’’ noise, i.e. slowly changing, low frequency noise is positively autocorrelated, whereas ‘‘blue’’ noise is fast changing, high frequency noise, with a negative autocorrelation. White noise has an equal proportion of high and low frequencies and has no autocorrelation. Colour is an important property of environmental fluctuation and has been shown to translate to population dynamics 439 (Kaitala et al. 1997a, 1997b). Most theoretical and experimental work with microcosms has concentrated on the effects of red noise on population persistence (Petchey et al. 1997, Heino 1998, Heino et al. 2000, Petchey 2000, Pike et al. 2004), as blue noise is considered unlikely in natural systems. The effect of the full spectrum of noise colours on population extinction risk has been considered in a few cases (Ripa and Lundberg 1996, Ripa and Heino 1999, Laakso et al. 2004). Here we chose to consider blue noise for the sake of completeness. This choice can also be justified in other ways, for example, considering environmental variation over a different temporal scale may change its spectrum (e.g. seasonal vs annual). In addition, some climatic indices, such as El Niño (Burgers 1999), may be negatively autocorrelated, depending on the temporal scale. While previous studies have considered the effects of disturbance (Paine and Levin 1981), species removal (Paine 1966, Pimm 1980), noise colour (Ripa and Lundberg 1996, Petchey 2000, Pike et al. 2004), species abundance rank (Fowler 2005) and population dynamics (Roughgarden 1975, Ripa and Lundberg 2000) on species persistence, interactions between these factors are still relatively poorly understood. We approached these issues by modelling multi-species communities using a deterministic skeleton for population renewal, and incorporating both demographic and environmental stochasticity to the renewal function. We examined the effect of environmental autocorrelation on extinction probability of different community members, under different dynamical scenarios and when community members respond to the environmental variation in different ways. Our results indicated that much information could be gleaned by ranking species according to their abundance. Although there were interactions between the different factors influencing extinction probability, much of the variation in the results can be explained through knowledge of species abundance ranks, the intrinsic growth rate of the community members and their similarity in responding to environmental variation. Methods The population model We modelled multispecies population growth using Ricker dynamics with Lotka !Volterra competitive interactions as the kernel of the renewal process (Eq. 1). Behaviour of the Ricker model is well known in single-species undisturbed situations (May 1974a, May and Oster 1976). We incorporated demographic stochasticity to the system by using a Poisson operator, ? ), where Nt"1 ? is the mean of the Nt"1 #/Poisson(Nt"1 440 Poisson distribution, taken from the population renewal function. This allowed us to address the dynamics of small populations in a realistic manner. Thus, the population renewal of each species i, in these communities can be written as: ! "# Ni;t"1 #Poisson Ni;t exp r 1$ PS j#1 aij Nj;t Ki $%& ; (1) where N is the population density, t is generation number, r is intrinsic growth rate, S is the number of species in the community, Ki is the species-specific carrying capacity and aij indicates the per capita effect of species j on the population renewal of species i. Interspecific interactions, aij, among all S species in Eq. 1 determine the off-diagonal elements in the community matrix, A (the diagonal elements aii are intraspecific interaction terms, standardized here to unity). Equilibrium population densities N* (a column vector of length S) for the S species (Eq. 1) were derived as N* #/A$1K, from the equation K #/AN* (May 1974b), where K is the vector of species-specific carrying capacities. Abundance ranking was determined as follows: N*1 B/N*2 B/N*3 B/. . .B/N*S, where species S is the most abundant. We drew aij values from a uniform discrete random distribution, with limits [0.01, 0.8], and selected only communities that were locally stable for further investigation (for local stability conditions in this model, see Ranta et al. 2006). To find the baseline extinction probabilities in locally stable communities with demographic stochasticity, we first explored the behaviour of the model in the absence of environmental forcing. The intrinsic growth rate (r) was varied between 0.1 (highly undercompensatory dynamics in a single species system) and 1.9 (close to the border of the 2-point bifurcation; May 1974a), and the minimum carrying capacity (K1) was varied from 10 to 100, while the maximum was kept S times higher. Values of Ki were drawn at random from a discrete uniform distribution. This allowed us to determine what the underlying probability of species loss across a variety of population sizes was due to demographic stochasticity (i.e. the Poisson process) before communities were affected by environmental noise. Based on these results (Fig. 1), we used a minimum equilibrium density for the least abundant species (N*1) in the remaining analyses, which ensured that extinction events due solely to demographic stochasticity were not too frequent under undercompensatory dynamics. Following this, Ki values were assigned as above, with limits [50, S %/50]. The minimum value was a compromise between a tolerable level of background extinctions and the disturbance level required to allow Fig. 1. Mean extinction probability due to demographic stochasticity alone, for different combinations of intrinsic growth rate (r), and carrying capacity (K) of the least abundant species in a multi-species community of competitors. Results based on 100 simulations for each parameter combination. environmentally driven extinctions. Community size was set to S #/5 in all simulations (results were qualitatively similar across different community sizes). Populations were initiated at equilibrium, N*, to avoid artefacts such as extinctions caused by low initial densities. The inclusion of different forms of stochasticity ensured populations moved away from equilibrium densities immediately. Environmental forcing Environmental variation was introduced into the system as a multiplicative process, through dynamic variation of the carrying capacity of either a single community member, or all community members. This was done in order to investigate the effect of species position in the abundance hierarchy where a focal species is disturbed by a temporally autocorrelated environmental noise process. The noise was introduced as follows: (2) Ki (t)#Ki g(t); where Ki is the carrying capacity of the affected species and g(t) is the environmental noise with given first-order autoregressive structure (Ripa and Lundberg 1996) pffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffiffi g(t"1)#kg(t)"s 1$kv(t"1); (3) where k is the parameter characterising the autocorrelation in the noise signal, which can vary between $/1 (blue noise) and "/1 (red noise). When k #/0, the noise is said to be white. The variable v is drawn randomly from a normal distribution with standard deviation s. Noise entered the model in a multiplicative way to ensure that each species would be similarly affected, irrespective of abundance. The ‘‘focal species’’ is the species that is directly affected by the environmental noise. Each community member was treated as a focal species and tested in three different autocorrelation regimes (k being either $/0.7, 0 or 0.7). This was done to assess the effect of the rate of short-term environmental change. In a second scenario, all community members were disturbed through their carrying capacity simultaneously. The range of environmental fluctuations was set such that the maximum disturbance was 9/65% (s :/0.25) of the focal species current density. The model was simulated for 1000 time steps for each combination of noise colour affecting each focal species rank. Each parameter combination was iterated 1000 times, and for each iteration, a new A matrix was constructed and a new noise time series was generated. During the simulations all extinction events and the abundance rank of the extinct species were recorded. From this data extinction probability was scored for each species. Across simulations, several factors were varied: which species experienced environmental forcing (a single, or all species), the nature of the underlying population dynamics (under-, exact-, or overcompensation), the colour of environmental variation (blue, white, or red); and the degree of correlation among species responses to the environmental variation (uncorrelated or perfectly correlated) (summarized in Table 1). We also tested the following cases of responses to environmental variation ! (1) a single focal species, (2) all species disturbed with uncorrelated noise terms (i.e. the variance-covariance matrix of among species environmental variation was an S by S identity matrix) and (3) all species with perfectly correlated noise terms (i.e. the variance-covariance matrix of among species environmental variation was an S by S matrix of ones) ! under three different dynamical scenarios, within the range of stable equilibrium dynamics in the absence of noise. We examined undercompensatory (r #/0.25), perfectly compensatory (r #/1) and overcompensatory Table 1. Factors varied in this study and their respective levels. Factor Levels Focal species abundance (species that is 1, 2, 3, 4, 5 directly affected by environmental forcing) Abundance rank (increasing from least to 1, 2, 3, 4, 5 most abundant) Growth rate (r) 0.25, 1, 1.75 Noise colour (environmental autocorrelation) $/0.7, 0, 0.7 (k) Environmental correlation (correlation 0, 1 between noise terms for different species) (r) 441 (r #/1.75) equilibrium dynamics, in order to uncover any relationships between intrinsic growth rate, noise colour and extinction probability. As generation of locally stable communities is not possible when r]/2, we restricted our analyses to communities with r-values less than 2. Statistical analysis The simulated data of extinction probabilities (based on 1000 trials) was analysed with ANOVA. In the single focal species case the statistical model incorporated only first-order interactions. This was due the fact that there was no replication within factor levels, which made the model run out of degrees of freedom. In the multi-focal species case (whole community) no interactions could be tested for the same reason. The analyses were carried out separately for each r!value. As extinction probability was not normally distributed, the statistical probability of the model parameters was estimated with a permutation test. All statistical analysis where carried out using R v2.2.0 (R Development Core Team 2005). In order to uncover mechanisms behind the observed patterns, we analysed various aspects of the population time series shown to be important in predicting extinctions in single-species systems. For an additional 100 simulations of the two scenarios where the whole community was forced (with either uncorrelated or perfectly correlated environmental noise terms), we recorded the autocorrelation, coefficient of variation (CV), and standard error (SE) of extant time series of the least abundant species. We also recorded population densities one, and two time steps before extinction (results not shown here). Results We began by exploring the impact of demographic stochasticity alone on species extinctions (Fig. 1). Increasing the intrinsic growth rate, r, or carrying capacity of the least abundant species, K1, led to a reduction in the probability of species loss in communities. These results were subsequently used to select parameter values throughout the remainder of the results, for which background extinctions would be minor. We next focused on assessing the significance of environmental forcing, with varying autocorrelation structure, on the extinction rate of each community member. We selected each of the abundance-ranked species in turn as the focal species, then scored extinctions for the focal species and for the other members of the community (influenced by the noise 442 only via the interaction terms aij). When this procedure was repeated for all species in the community clear patterns emerged (Fig. 2). Red (k #/0.7) noise always yielded a higher probability of extinctions than did white noise (k #/0) regardless the abundance rank of the focal species (Fig. 2a !c). Extinction rates for the other species in the community (non-focal) were clearly lower than that of the focal species. These secondary extinctions were very rare for r]/1. In both cases (focal, nonfocal species) the risk of extinction correlated strongly with abundance rank of the species (Fig. 2g !i). There is a decrease in importance of the species rank associated with an increase in r, in terms of extinction probabilities. With low r (Fig. 2g) most of the variation is explained by species rank. When r#/1, species rank declines in importance while the focal %/rank interaction increases (Fig. 2h). In this case, noise colour also increases in relative importance, as compared with abundance rank and focal %/rank interaction. Finally with high r most of the variation in the results is due to the different extinction probabilities of the different focal species, reflected by the focal %/rank interaction (Fig. 2i), while the noise colour has very little effect. The effect of the modulating noise differed between the different dynamical scenarios. With r#/ 0.25 and r#/1 (Fig. 2a !b), extinction probability was higher under red noise than under blue or white noise *this being most pronounced with r #/1. There was no marked difference in extinction probabilities between blue and white noise. When r #/1.75, white noise resulted in a lower extinction rate than either blue or red noise when the focal species was relatively more abundant (Fig. 2c). Noise colour only had minor effects on (secondary) extinctions of the non-targeted species (Fig. 2d!f). We continued by exposing the whole community to environmental forcing. First, with uncorrelated among species noise terms, noise colour had a clear effect on extinction risk (Fig. 3a !c). While this was true over all r!values tested, the most pronounced differences were observed with perfectly compensating dynamics (r #/1). With r5/1 red noise resulted in a higher extinction probability than did white and blue noise, whereas with r#/1.75 extinction probability was highest under blue noise and lowest under red noise. These patterns changed somewhat when species responded identically to the environmental variation (Fig. 3d!f). Here, noise colour only had a significant effect on extinction risk with r#/ 1.75. Most strikingly, red noise resulted in a very low extinction probability, while under blue noise extinction probability was close to one. This reduction in extinction probability with red noise is a result of increased synchrony in the response of the community to the environmental variation. Abundance rank played a major role in determining the extinction probability of individual species r = 0.25 a r=1 b r = 1.75 c κ = –0.7 κ=0 κ = 0.7 1 2 3 4 5 r = 0.25 d 1 g 2 3 r = 0.25 1 2 4 5 r=1 e 4 3 1 Abundance rank (focal) 5 1 2 3 4 5 r=1 1 i 3 4 5 r = 1.75 f Abundance rank (non-focal) h 2 2 3 4 5 r = 1.75 Noise Focal Rank N F N R F R Resid Mean squares Fig. 2. Mean extinction probability in the single-focal species scenario (mean9/95% CI for a binomial distribution), for three different values of noise autocorrelations (k) and intrinsic growth rate (r). Mean extinction probability of the focal species (a !c) and non-focal species (d !f). (g !i) Mean squares for the ANOVA design, p #/0.01 for all visible bars. Abundance rank is defined as relative abundance within the community, where a higher rank corresponds to higher abundance. Results based on 1000 simulations for each scenario. Data points have been shifted horizontally to improve readability. when there was no correlation between noise terms (Fig. 3g !i). For all r$/values, species with a relatively higher abundance rank suffered fewer extinctions than those with lower abundance ranks (Fig. 3a !c). However, with perfect environmental correlation abundance rank was an important factor only with undercompensatory dynamics (r #/0.25, Fig. 3d and j). The very low extinction rates when r #/1 (Fig. 3e) arise due to the perfectly correlated response of the community to environmental fluctuations and the perfect compensation of the dynamics. This can be contrasted with the uncorrelated environmental signals, which produce 443 r = 0.25 a r=1 b r = 1.75 c κ = –0.7 κ=0 κ = 0.7 1 2 3 4 5 r = 0.25 d 1 2 3 r = 0.25 g 1 2 4 5 r=1 e 4 3 1 Abundance rank 5 1 2 3 4 5 r=1 3 4 5 r = 1.75 f 1 Abundance rank h 2 2 3 4 i r = 1.75 l r = 1.75 5 Noise Rank Resid Mean squares r = 0.25 j k r=1 Noise Rank Resid Mean squares Fig. 3. Mean extinction probability in the multi-focal species scenario (mean9/95% CI for a binomial distribution) (all species affected by noise), for three different values of noise autocorrelations (k) and intrinsic growth rate (r). Correlation between environmental noise terms (a !c) r#/0, (d !f) r#/1. (g $/l) Mean squares for the ANOVA design with either r #/0 (g$/i), or r#/1 (j$/l), p#/0.01 for all visible bars. Abundance rank is defined as relative abundance within the community, where a higher rank corresponds to higher abundance. Results based on 1000 simulations for each scenario. Data points have been shifted horizontally to improve readability. 444 considerably higher extinction rates for all species (Fig. 3b). According to our analyses of the properties of extant population time series, autocorrelation in the least abundant species populations decreased with increasing growth rate and decreasing autocorrelation in the environmental signal (Fig. 4a !b). Population colour tended also to be slightly less red when the community a b c d was exposed to identical environmental fluctuation (Fig. 4b). Nevertheless, the least abundant species nearly always showed red dynamics, with only two exceptions (considering blue and white noise, overcompensatory growth and correlated noise terms; Fig. 4b). Fluctuation in population density (as measured by coefficient of variation, CV) of the least abundant species was generally independent of environmental autocorrelation (Fig. 4c !d). In both cases (environmental noise terms being either uncorrelated or correlated between species), these relative fluctuations did not reflect the observed patterns in extinction probability. When population fluctuations were measured as the standard error (SE) of extant time series, fluctuation in population density of the least abundant species tended to grow with increasing growth rate as the community members reacted independently to environmental variation (Fig. 4e). However, as with CV, no reversal in fluctuation severity between blue and red noise, with overcompensating dynamics, could be observed. As the community members were forced by identical environmental variation (Fig. 4f), the SE of the least abundant species populations showed a similar pattern to that of extinction probability. The least abundant species clearly fluctuated more violently in a blue environment as compared with the fluctuations observed in a red environment, when the population growth was overcompensatory. Discussion e f Fig. 4. Mean autocorrelation (a, b), mean coefficient of variation (CV; c, d), and mean standard error (SE; e, f) of extant population time series, calculated over the whole community after 100 simulations (9/1 SD). The relatively high autocorrelation values in all cases are due to the Poisson operator, which is effectively a white noise process. Symbols are as in Fig. 2 and 3. This study has shown that environmental forcing with different autocorrelation structure has a clear impact upon extinction events in competitive communities that are also affected by demographic stochasticity. Our results indicate that the noise structure also interacts strongly with the dynamical properties of the particular species that are affected. A similar relationship arose with species’ abundance ranking. Changes in the amount of environmental correlation experienced across the community also had an important effect on the interaction between noise colour and population growth rate. This means that while population dynamic processes are of undoubted importance, they are not the sole determinants of species response to different forms of environmental variation. This response is further modified by the similarity of different species’ reactions to environmental variation in competitive communities. In the single focal species case (1) red noise was associated with the highest extinction probability (with one exception, see Fig. 2c). This reflects results attained with single species models (Johst and Wissel 1997, Petchey et al. 1997). Extinctions are due to sufficiently long runs of ‘‘bad’’ years, which are less likely to occur under white or blue noise. Exact compensation, i.e. 445 when the environmental signal is tracked exactly, will bring about the most pronounced differences in the colour of the population time series in single species systems (Kaitala et al. 1997b) and consequently also in extinction probability. Our multi-species results are in accordance with this. In a single species system blue noise tends to amplify fluctuations in populations with overcompensatory dynamics (Kaitala et al. 1997b). Red noise should however reduce population fluctuations when populations express overcompensatory growth (Ripa and Heino 1999), but in this case very high extinction rates were recorded. It would be tempting to conclude that interspecific interactions in the community lead to this rather unexpected outcome. Further investigation is required before reliable conclusions can be made. From our investigation of extinction risk due to demographic stochasticity alone (Fig. 1) it may be expected that extinction probability should also decrease with increasing growth rate in the presence of environmental variation. However, an opposite trend was observed here (Fig. 2 and 3). Extinction rates of focal species’ tended to be highest in association with overcompensatory dynamics. This pattern was evident in all three cases analysed: (1) when noise only affected a single focal species, (2) when species were affected by uncorrelated noise terms and (3) when all species were affected by correlated noise terms. The interaction between demographic and environmental stochasticity led to this surprising reversal in the direction of extinction probabilities. Although both forms of stochasticity have previously been studied simultaneously (Lande 1993, Halley and Iwasa 1998), the reversal in extinction probabilities due to this interaction has not, to our knowledge, been reported yet. The relatively high extinction levels observed with undercompensatory dynamics, both in the single species case (1) and multispecies cases (2, 3), were mostly due to the random demographic process (Fig. 1). Following the loss of the focal species, in case (1), the remaining community members are only affected by demographic (but not environmental) stochasticity. Thus, when a single species was forced by environmental noise, secondary extinctions could arise through two mechanisms: 1) loss of species due to a change in the feasibility or stability of the remaining community following extinction of the focal species, i.e. an extinction cascade, or 2) loss of species through demographic stochasticity. In the second scenario examined here (2) extinction rate was lowest under red noise in association with overcompensatory dynamics (Fig. 3c). In the third case (3) there was a considerable reduction in extinction probability associated with the change from under- to perfectly compensatory dynamics for all species. Contrary to the previous case, noise colour had no effect within communities with under- or perfectly compen- 446 satory dynamics (Fig. 3d !e). However, overcompensatory dynamics led to a somewhat unexpected outcome, with a clear difference in extinction probability under different noise colours. Blue and white noise led to high extinction rates for all species (similar to those with uncorrelated noise terms), while red noise resulted in almost negligable extinction rates (Fig. 3f). No such pattern was observed for the single focal species case (1), although it has been shown to occur in single species systems (Petchey et al. 1997, Ripa and Heino 1999). These findings further indicate that while the degree of correlation among species specific responses to environmental variation is important (Ripa and Ives 2003), community interactions and the scale of disturbance within a community play a considerable role in affecting the extinction risk of community members. Inspection of both the coefficient of variation (CV) and standard error (SE) of extant population time series showed that the results can to some extent be understood by differences in population variability (Fig. 4), as it has been demonstrated with single species models (Roughgarden 1975, Ripa and Heino 1999, Laakso et al. 2004). In turn, the magnitude of population fluctuations is a product of the intrinsic population dynamics, the degree of environmental autocorrelation and demographic stochasticity. Population growth over time translates into population colour (Kaitala et al. 1997b) and consequently it determines the speed at which populations approach low densities. Undercompensating populations exhibit a high autocorrelation coefficient irrespective of noise colour and approach low densities gradually. Overcompensating populations have a lower autocorrelation regardless of the colour of external noise, and approach low densities rapidly. In our study system, there was an overall decrease in population autocorrelation associated with increasing growth rate in all three cases (1, 2, 3; Fig. 4). Moreover, the highest autocorrelations were recorded for populations experiencing red noise, and lowest for those experiencing blue noise. In all cases, where the highest extinction probability was associated with red noise, this could be linked to increased fluctuations in population densities. The extremely low extinction rates observed in the case of perfectly correlated noise terms (2) and perfect compensation was associated with relatively low population variability for all noise colours. Furthermore, the increase in extinction probability associated with increasing growth rate (Heino 1998) could partly be explained by increasing variability. In the case of perfectly correlated noise terms (3) and overcompensatory dynamics, populations experiencing red noise fluctuated relatively little, whereas those forced by blue noise displayed more severe fluctuations. However, the marked differences in extinction probability between different noise colours could not be fully explained by differences in population variability. Neither could they be accounted for by pre-extinction densities (Ripa and Lundberg 1996, 2000) or the colour of the population time series. This paper represents the first attempt to quantify extinction probabilities in nonlinear competitive communities under the joint influence of demographic- and environmental stochasticity. We hope we will stimulate further research to help uncover the precise mechanisms behind the results reported here. The two multi-species scenarios we have considered, i.e. either uncorrelated or perfectly correlated environmental variation across species, represent two extreme cases. In real ecosystems it is likely that the degree of correlation depends on a number of biogeographical and ecological factors and neither extreme is likely to occur. However, species in competitive communities may be more likely to experience environmental fluctuations at a similar scale. Hence, competing species are likely to respond similarly in a shared habitat. Moreover, it is also unlikely that any natural disturbances will affect only a single species in a community. Anthropogenic disturbances, such as harvesting or stocking, may however be very specific by their impact on species assemblages (Enberg et al. 2006), and thus our results considering single species disturbance are not of academic interest only. Although the actual abundance of the focal species has been shown to be a relatively poor indicator of community level effects, relative abundance rank has been shown to play a major role in indicating extinction probability when the community is disturbed through species removal (Fowler 2005). This agrees with earlier findings that the effect of species removal depends considerably on the ecological role of the removed species in the food web (Pimm 1980, Borrvall et al. 2000). For example, better competitors receive less pressure from the rest of the community and are more buffered against environmental changes (Ives 1995). Our results confirm that abundance rank may be as informative as the precise a !values when extinction risk of a given species is evaluated (Fowler 2005). Measuring a !values is likely to prove extremely tricky in real population data (Wootton 1994, Laska and Wootton 1998, Berlow et al. 2004), so using a relevant proxy such as abundance is likely to prove a much more practical strategy in species management and conservation efforts. According to Wichmann et al. (2003), the attributes of autoregressive noise used in this and earlier studies are insufficient to describe environmental variation. While this might be the case, the autoregressive noise model we have used is easy to apply, it gives a reasonable approximation of short-term environmental variation, and it allows a comparison between earlier models. For long-term variation 1/fb -noise is suggested to be more realistic (Halley 1996, Cuddington and Yodzis 1999), while the importance of considering the temporal scale of generation times should not be neglected. Thus, our results may be specific to the noise structure we have applied and they may best represent short-term responses to environmental variation. As concluded by Schwager et al. (2006), model structure may also have profound effects on the relationship between noise reddening and extinction risk. We used a population model very similar to that of, e.g. Petchey et al. (1997) and our results are in agreement with their findings. It is thus unlikely that our results are due to specific model assumptions. In conclusion, population growth rate, environmental autocorrelation and abundance of constituent species interact in subtle ways in influencing extinction risk in competitive communities. The relative influence of noise colour and species abundance on population extinction probability depends critically on underlying population dynamics. Moreover, the exact nature of this relationship is not solely dependent on the population growth rate, but also on the similarity of species responses to the environmental fluctuation. The abundance of an affected species is also likely to influence the extent to which it responds to variation in the pace of environmental fluctuation. Acknowledgements ! We thank Veijo Kaitala, Jouni Laakso and Antti Halkka for their illustrating comments on the manuscript. We also thank Owen Petchey for helpful comments on an earlier version of this manuscript. References Berlow, E. L. et al. 2004. Interaction strengths in food webs: issues and opportunities. ! J. Anim. Ecol. 73: 585 ! 598. Borrvall, C. et al. 2000. Biodiversity lessens the risk of cascading extinctions in model food webs. ! Ecol. Lett. 3: 131 !136. Burgers, G. 1999. The El Niño stochastic oscillator. ! Climate Dynamics 15: 521 !531. Cuddington, K. M. and Yodzis, P. 1999. Black noise and population persistence. ! Proc. R. Soc. 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