2023
DOI: 10.1145/3586081
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Around the GLOBE: Numerical Aggregation Question-answering on Heterogeneous Genealogical Knowledge Graphs with Deep Neural Networks

Abstract: One of the key AI tools for textual corpora exploration is natural language question-answering (QA). Unlike keyword-based search engines, QA algorithms receive and process natural language questions and produce precise answers to these questions, rather than long lists of documents that need to be manually scanned by the users. State-of-the-art QA algorithms based on DNNs were successfully employed in various domains. However, QA in the genealogical domain is still underexplored, while researchers in this fiel… Show more

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Cited by 3 publications
(6 citation statements)
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“…data was much higher than that of the original state-of-the-art single-table TaPas model (87% vs. 21%). A detailed description of the model and experiments is presented in Suissa et al, (2023).…”
Section: Resultsmentioning
confidence: 99%
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“…data was much higher than that of the original state-of-the-art single-table TaPas model (87% vs. 21%). A detailed description of the model and experiments is presented in Suissa et al, (2023).…”
Section: Resultsmentioning
confidence: 99%
“…the erformed above ). Technical details of the model implementation are described in Suissa et al(2023).…”
Section: Methodsmentioning
confidence: 99%
See 1 more Smart Citation
“…Language models can assist in this by highlighting words that frequently appear in a specific context or have a strong association with a particular topic. These keywords can be used for indexing, search engine optimization, or summarization [7][8][9]. Document Classification: Through sentiment analysis, topic extraction, and keyword selection, documents can be classified based on specific criteria.…”
Section: Of 19mentioning
confidence: 99%
“…(1) Mountain/Sea : murder/suicide, doubt/love, investigation/compassion, man/woman, detective/suspect (2) Pusan/Leepoh: mountain/sea, incident/safety, city/rural (3) Green/Blue: mountain/sea (4) Jellyfish/Turtle: sleeping/unsleeping (5) Fog: dual image of safe and dangerous (6) Negative images: maggots, ice cream, nuclear power plant, mountain, turtle (7) Positive images: fried rice, sea, jellyfish (8) Dramatic images: collapse, unresolved case, abandonment in the depths of the sea Although we can summarize various images and symbols in the movie like this, it is uncertain whether the devices, places, and characters expressed in the movie actually have such features. Therefore, it is necessary to determine the authenticity by analyzing the nature of the words indicated by each place/device/person using word vectors that can be obtained using a recurrent neural network, a type of deep learning technique.…”
Section: The Movies -Criticsmentioning
confidence: 99%