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While doing research for my thesis, I ran into a paper called "Statistical Models for Co-occurrence Data". In the early pages, when talking about an iterative numerical method (a custom EM-method, to be precise), I ran into a sum notation I'm not exactly sure to interpret correctly.

$\hat{p}_{i|\alpha}^{(t)} = \frac1{L\hat{\pi}_\alpha^{(t)}} \sum_{r:i(r)=i} \langle R_{r\alpha} \rangle^{(t)}$

To summarize the environment:

Denote by $R_{r\alpha}$ an indicator variable to represent the unknown class $C_\alpha$ from which the observation $(x_{i(r)}, y_{j(r)}, r) \in S$ was generated.

Here $S = \{(x_{i(r)}, y_{j(r)}, r) : 1 \leq r \leq L \}$.
$X = \{ x_1,\dots,x_N \}$ and $Y = \{ y_1,\dots,y_M \}$ are finite sets of abstract objects.
$\hat{p}_{i|\alpha}^{(t)}$ is the estimation for the probability (at the $t$:th step) of object $x_i \in X$ being chosen after abstract class $C_\alpha$ was chose

As for my question, how am I to interpret the $\sum_{r:i(r)=i}$ part of the equation?

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    I would think it means that the sum runs over all $r$ such that $i(r)=i$.2011-04-15
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    @joriki That's what I assumed it would mean, but I wanted to make sure, since my current implementation of the related algorithm doesn't work.2011-04-15
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    "Interpit"? Seriously??2011-04-15
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    @Pete: Not everyone has had the privilege to learn the global language as their native language.2011-04-15
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    @joriki You are correct with your answer. I found the error in my algorithm and it wasn't in my interpitation of the sum notation. Also @J.M., thanks for taking the time to correct my spelling mistakes.2011-04-19

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