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1 Text S1. Analytical approximation for changes in species abundances with coevolution. The 2 analyses presented in the Box in the main text can be used to both generalize the results from the 3 simulations and expose the causal pathways underlying the role of coevolution in determining 4 the changes in species abundances when climate change alters the intrinsic rate of increase of 5 one species. Consider the general model 6 N1,t+1 = N1,tF1(N1,t, 1(1,t, 2,t)N2,t, 1,t) 7 N2,t+1 = N2,tF2(N2,t, 2(1,t, 2,t)N1,t, 2,t) . (S1) 8 This structure is an obvious generalization of the competition/mutualism model. It also has the 9 same structure as the predator-prey model; if N1 is the prey and N2 is the predator, then 1(1, 2) 10 = a(E, 1, 2), and 2(1, 2) = –a(E, 1, 2)c, where c is the predator conversion rate. 11 From the Implicit Function Theorem, 12 æ ¶G ö ¶G ¶X * = -ç ÷ è ¶X ø ¶E ¶E -1 (S2) 13 where X*=(N1*,N2*,1*,2*) is the vector of the equilibrium densities and trait values for each 14 species, and G is a vector of functions that all equal zero when population densities and traits are 15 at their equilibrium values; specifically, 16 G1(N1, 1(1, 2)N2, 1) = F1 – 1 17 G2(N2, 2(1, 2)N1, 2) = F2 – 1 18 G3(N1, 1(1, 2)N2, 1,[D11]N2) = dF1 V1 du1 F1 19 G4(N2, 2(1, 2)N1, 2,[D22]N1) = dF2 V2 du 2 F2 1 20 where the notation [Dif] denotes the partial derivative of f with respect to variable i; hence, 21 [D11] = 1/1. Letting G/X = A, and assuming that E affects only species 1, the change in 22 the sum of species abundances with respect to E is 23 X 1 * X 2 * cof ( A,1,1) cof ( A,2,1) G E det( A) E (S3) 24 where cof(A,i,j) = (–1)i+j det([A]i,j) and [A]i,j is matrix A with the ith row and jth column 25 removed. 26 The elements of A can be derived for G1 and G3 as 27 a11 = [D1G1] = –1 28 a12 = [D1G1]1 29 a13 = [D2G1][D11]N2 + [D3G1] = 0 30 a14d1 = [D2G1]N2[D21] 31 a31 = [D1G3] 32 a32 = [D2G3]1 + [D4G3][D11] 33 a33 = [D2G3]N2[D11] + [D3G3] + [D4G3][D111]N2 34 a34d1 = [D2G3]N2[D21] + [D4G4][D121]N2, 35 with symmetric equations for G2 and G4. The term d1 represents the cross derivatives [D21] and 36 [D121] that show when the interaction effect from species 2 on species 1, 1(1, 2), changes 37 with the trait value of species 2. In the specific equations we use for competition and mutualism 38 in which 1(1, 2) = 1(1 + d2), d is synonymous with d1. 39 Expanding equation (S3) in terms of aij and excluding terms of order di2 yields 40 cof(A,1,1)+ cof(A, 2,1) = (-1- a21 ) a33a44 - a23a32 a44 d2 + a23a31a44 d1 41 det(A) = (1- a12 a21 ) a33a44 + d2 ( a23a32 a44 + a23a31a12 a44 ) + d1 ( a14 a41a33 + a14 a42 a21a33 ) 2 42 43 44 (S4) Note that when d1 = d2 = 0, ¶ ( X1 *+X2 *) (-1- a21 ) a33a44 ¶G = (1+ a21 ) ¶G =¶E (1- a12 a21 ) a33a44 ¶E (1- a12 a21 ) ¶E (S5) 45 which is identical to the result in the absence of coevolution. This shows that coevolution affects 46 the response of equilibrium abundances to changes in E only when selection on the trait values of 47 one species changes its interactive effects i(1, 2) on the other species. 48 Letting C1 = (1 + a21)a33a44, C2 = (1 – a12a21)a33a44, 49 ¶X1 *+X2 * C1 + a32 a23a44 d2 - a31a23a44 d1 ¶G1 = ¶E C2 + ( a23a32 a44 + a23a31a12 a44 ) d2 + ( a14 a41a33 + a14 a42 a21a33 ) d1 ¶E (S6) 50 This expression gives a straightforward way of generalizing the simulation results for the 51 specific forms of competition, mutualism, and predator-prey equations we used. For example, 52 for competition 53 ¶X1 *+X2 * ¶G1 (1- a2 ) a1a2 N1N2 + a1a22 N12 d = 2 2 ¶E (1- a1a 2 )a1a 2 N1 N 2 + a1a 2 (a1 N 2 + a 2 N1 )d ¶E (S7) 54 Because existence of a positive stable equilibrium requires |i| < 1, it follows that (X1*+ 55 X2*)/E increases with d, implying that non-conflicting coevolution will always increase the 56 change in summed equilibrium abundances with changes in E. 57 Broader generalities can be obtained directly from equation (S6) by noting constraints on 58 the signs of the terms aij. The cases of competition and mutualism are similar, as follows. For 59 traits to have optimal values, a33 < 0 and a44 < 0. If higher trait values vi reduce the interaction 60 impact on species i from the other species (as in our models), then a23a32 > 0 and a14a41 > 0. For 61 the exponential forms of equations that we used for simulations, i.e., F1(N1, 1N2, 1) = 3 62 exp(f1(N1, 1N2, 1)), the terms a13 = a24 = 0. Assuming that these values are small, equation S6 63 simplifies to 64 ¶X1 *+X2 * C1 + a32 a23a44 d2 ¶G1 = ¶E C2 + a23a32 a44 d2 + a14 a41a33d1 ¶E (S8) 65 For competition and mutualism, C1 > C2, which leads immediately to the conclusion that 66 increasing d = d1 = d2 will increase (X1*+ X2*)/E. 67 For predator-prey interactions, equation (S8) also applies, although the signs of the terms 68 differ from the cases of competition and mutualism. The term d1 represents the cross derivatives 69 [D21] and [D121], and similarly d2 represents [D12] and [D122]. Because there is only a single 70 function giving the predation rate, 1(1, 2) = a(1, 2), and 2(1, 2) = –a(1, 2)c, so d1 = – 71 cd2. For traits to have optimal values, a33 < 0 and a44 < 0. In contrast to competition and 72 mutualism, a23a32 ≤ 0 and a14a41 ≥ 0. Thus, positive values of d = d1 = –cd2, which will be the 73 case for predator-prey relationships, will in general decrease (X1*+ X2*)/E. Although this 74 analysis only addresses the case when the environmental change E affects the prey intrinsic rate 75 of increase, a symmetric analysis shows similar results for the case of E affecting predators. 76 4