Automated Narrative Information Extraction Using Non-Linear Pipelines

Authors: Josep Valls-Vargas

IJCAI 2016 | Conference PDF | Archive PDF | Plain Text | LLM Run Details

Reproducibility Variable Result LLM Response
Research Type Experimental For our experimental evaluation I have developed Voz, a narrative information extraction system that combines off-the-shelf natural language processing toolkits (e.g., Stanford Core NLP, Clear NLP), common sense knowledge (e.g., Word Net, Concept Net) and domain knowledge (Propp s narrative theory). We applied this methodology to an empirical study of our narrative information extraction pipeline (under review).
Researcher Affiliation Academia Josep Valls-Vargas Drexel University Philadelphia, Pennsylvania, USA josep.vallsvargas@drexel.edu
Pseudocode No The paper does not contain any structured pseudocode or algorithm blocks.
Open Source Code No The paper mentions developing a system named Voz and combining off-the-shelf toolkits, but does not provide any specific link or statement about releasing the source code for their developed methodology.
Open Datasets Yes For this work we used an annotated dataset to compute a matrix from a story and compare it against a reference matrix using the Wordnet hierarchy to find similarities. [Valls-Vargas et al., 2013]. We have been using a corpus of Slavic folktales collected and annotated by Mark A. Finlayson [2012].
Dataset Splits No The paper mentions using an annotated dataset and a corpus for experimental evaluation, but does not specify any training, validation, or test dataset splits (e.g., percentages or counts).
Hardware Specification No The paper does not provide any specific details about the hardware used to run the experiments (e.g., GPU models, CPU types, memory). It focuses on the conceptual and methodological aspects of the research.
Software Dependencies No The paper mentions using "off-the-shelf natural language processing toolkits (e.g., Stanford Core NLP, Clear NLP), common sense knowledge (e.g., Word Net, Concept Net)" but does not specify version numbers for these software dependencies.
Experiment Setup No The paper focuses on the general approach and contributions rather than detailed experimental setup. It does not provide specific hyperparameters, training configurations, or other system-level settings.