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Summarizing Source Code using a Neural Attention Model

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Figure 1: Code snippets in C# and SQL and theirsummaries in NL, from StackOverflow. Our goalis to automatically generate summaries from codesnippets.
Table 1: Statistics for code snippets in our dataset.
Figure 2: Generation of a title ngenerate the next word,the next LSTM cell. This is repeated until a fixednumber of words or END is generated.code snippet based on the current LSTM hiddenstatecomputes a distributional representation=n1,
Table 3: Performance on EVAL for the GEN task.Performance on DEV is indicated in parentheses.
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