Real and complex numbers When a series of real or complex numbers is absolutely convergent, any rearrangement or reordering of that series' terms will still converge to the same value. This fact is one reason absolutely convergent series are useful: showing a series is absolutely convergent allows terms to be paired or rearranged in convenient ways without changing the sum's value. The
Riemann rearrangement theorem shows that the converse is also true: every real or complex-valued series whose terms cannot be reordered to give a different value is absolutely convergent.
Series with coefficients in more general space The term
unconditional convergence is used to refer to a series where any rearrangement of its terms still converges to the same value. For any series with values in a normed abelian group G, as long as G is complete, every series which converges absolutely also converges unconditionally. Stated more formally: {{math theorem| Let G be a normed abelian group. Suppose \sum_{i=1}^\infty a_i = A \in G, \quad \sum_{i=1}^\infty \|a_i\| If \sigma : \N \to \N is any permutation, then \sum_{i=1}^\infty a_{\sigma(i)}=A.}} For series with more general coefficients, the converse is more complicated. As stated in the previous section, for real-valued and complex-valued series, unconditional convergence always implies absolute convergence. However, in the more general case of a series with values in any normed abelian group G, the converse does not always hold: there can exist series which are not absolutely convergent, yet unconditionally convergent. For example, in the
Banach space ℓ∞, one series which is unconditionally convergent but not absolutely convergent is: \sum_{n=1}^\infty \tfrac{1}{n} e_n, where \{e_n\}_{n=1}^{\infty} is an orthonormal basis. A theorem of
A. Dvoretzky and
C. A. Rogers asserts that every infinite-dimensional Banach space has an unconditionally convergent series that is not absolutely convergent.
Proof of the theorem For any \varepsilon > 0, we can choose some \kappa_\varepsilon, \lambda_\varepsilon \in \N, such that: \begin{align} \text{ for all } N > \kappa_\varepsilon &\quad \sum_{n=N}^\infty \|a_n\| \lambda_\varepsilon &\quad \left\|\sum_{n=1}^N a_n - A\right\| Let \begin{align} N_\varepsilon &=\max \left\{\kappa_\varepsilon, \lambda_\varepsilon \right\} \\ M_{\sigma,\varepsilon} &= \max \left\{\sigma^{-1}\left(\left\{ 1, \ldots, N_\varepsilon \right\}\right)\right\} \end{align} where \sigma^{-1}\left(\left\{1, \ldots, N_\varepsilon\right\}\right) = \left\{\sigma^{-1}(1), \ldots, \sigma^{-1}\left(N_\varepsilon\right)\right\} so that M_{\sigma,\varepsilon} is the smallest natural number such that the list a_{\sigma(1)}, \ldots, a_{\sigma\left(M_{\sigma,\varepsilon}\right)} includes all of the terms a_1, \ldots, a_{N_\varepsilon} (and possibly others). Finally for any
integer N > M_{\sigma,\varepsilon} let \begin{align} I_{\sigma,\varepsilon} &= \left\{ 1,\ldots,N \right\}\setminus \sigma^{-1}\left(\left \{ 1, \ldots, N_\varepsilon \right \}\right) \\ S_{\sigma,\varepsilon} &= \min \sigma\left(I_{\sigma,\varepsilon}\right) = \min \left\{\sigma(k) \ : \ k \in I_{\sigma,\varepsilon}\right\} \\ L_{\sigma,\varepsilon} &= \max \sigma\left(I_{\sigma,\varepsilon}\right) = \max \left\{\sigma(k) \ : \ k \in I_{\sigma,\varepsilon}\right\} \\ \end{align} so that \begin{align} \left\|\sum_{i\in I_{\sigma,\varepsilon}} a_{\sigma(i)}\right\| &\leq \sum_{i \in I_{\sigma,\varepsilon}} \left\|a_{\sigma(i)}\right\| \\ &\leq \sum_{j = S_{\sigma,\varepsilon}}^{L_{\sigma,\varepsilon}} \left\|a_j\right\| && \text{ since } \sigma(I_{\sigma,\varepsilon}) \subseteq \left\{S_{\sigma,\varepsilon}, S_{\sigma,\varepsilon} + 1, \ldots, L_{\sigma,\varepsilon}\right\} \\ &\leq \sum_{j = N_\varepsilon + 1}^{\infty} \left\|a_j\right\| && \text{ since } S_{\sigma,\varepsilon} \geq N_{\varepsilon} + 1 \\ & and thus \begin{align} \left\|\sum_{i=1}^N a_{\sigma(i)}-A \right\| &= \left\| \sum_{i \in \sigma^{-1}\left(\{ 1,\dots,N_\varepsilon \}\right)} a_{\sigma(i)} - A + \sum_{i\in I_{\sigma,\varepsilon}} a_{\sigma(i)} \right\| \\ &\leq \left\|\sum_{j=1}^{N_\varepsilon} a_j - A \right\| + \left\|\sum_{i\in I_{\sigma,\varepsilon}} a_{\sigma(i)} \right\| \\ & This shows that \text{ for all } \varepsilon > 0, \text{ there exists } M_{\sigma,\varepsilon}, \text{ for all } N > M_{\sigma,\varepsilon} \quad \left\|\sum_{i=1}^N a_{\sigma(i)} - A\right\| that is: \sum_{i=1}^\infty a_{\sigma(i)} = A.
Q.E.D. ==Products of series==