Multi-label entity-relationship joint extraction method based on deep neural network and annotation strategy
A deep neural network and joint extraction technology, which is applied in the field of multi-label entity-relationship joint extraction based on deep neural network and labeling strategy, can solve the problems of joint extraction and relationship overlap.
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[0044] Embodiment: It is mainly used to extract the entities in each sentence of the data set and the semantic relationship of the entities. Both training data and test data are selected from the NYT dataset.
[0045] Such as figure 1 The process shown and figure 2 As shown in the model, the method of the present invention comprises the following steps,
[0046] Step 1: Firstly, word segmentation is performed on the training text and test text, and the training text obtained after word segmentation is marked with a marking strategy. The marking strategy is specifically: according to the labeling of the training text, set an "O" label (not belonging to any relationship) or a "non-O" label (having a relationship) for each word according to the labeling of the training text. The non-O label consists of three parts: word position, relation category and relation role. Wherein, the word position marks include B (begin), I (inside), E (end) and S (single), which are used to repr...
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