Publication | Open Access
When Are Tree Structures Necessary for Deep Learning of Representations?
162
Citations
51
References
2015
Year
Unknown Venue
Recursive neural models, which use syntactic parse trees to recursively generate representations bottom-up, are a popular architecture. However there have not been rigorous evaluations showing for exactly which tasks this syntax-based method is appropriate. In this paper, we benchmark recursive neural models against sequential recurrent neural models, enforcing applesto-apples comparison as much as possible. We investigate 4 tasks: (1) sentiment classification at the sentence level and phrase level; (2) matching questions to answerphrases; (3) discourse parsing; (4) semantic relation extraction.
| Year | Citations | |
|---|---|---|
Page 1
Page 1