2022
DOI: 10.26421/jdi3.4-5
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Improved Methods to Aid Unsupervised Evidence-Based Fact Checking for Online Heath News

Abstract: False information in the domain of online health related articles is of great concern, which has been witnessed abundantly in the current pandemic situation of Covid-19. Recent advancements in the field of Machine Learning and Natural Language Processing can be leveraged to aid people in distinguishing false information from the truth in the domain of online health articles. Whilst there has been substantial progress in this space over the years, research in this area has mainly focused on the sphere of politi… Show more

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Cited by 25 publications
(15 citation statements)
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“…• Our topic modeling analysis uncovered 18 distinct themes in the drug-resistant epilepsy literature, spanning diverse areas and demonstrating the heterogeneous nature of this research field. • The 10 most common topics identified were "AEDs," "Neuromodulation Therapy," "Genomics," "Surgical Outcomes," "Source Localization," "Ketogenic Diet," "Autoimmune Encephalitis," "Disconnection Surgery," "Functional Brain Mapping," and "Focal Cortical Dysplasia."…”
Section: Key Pointsmentioning
confidence: 91%
See 1 more Smart Citation
“…• Our topic modeling analysis uncovered 18 distinct themes in the drug-resistant epilepsy literature, spanning diverse areas and demonstrating the heterogeneous nature of this research field. • The 10 most common topics identified were "AEDs," "Neuromodulation Therapy," "Genomics," "Surgical Outcomes," "Source Localization," "Ketogenic Diet," "Autoimmune Encephalitis," "Disconnection Surgery," "Functional Brain Mapping," and "Focal Cortical Dysplasia."…”
Section: Key Pointsmentioning
confidence: 91%
“…To derive sentence embeddings, we used the “S‐PubMedBert‐MS‐MARCO” model, 18 a Hugging Face sentence‐transformers model that is fine‐tuned specifically for medical text information retrieval. As part of preprocessing, we removed frequent words or stop words that appear commonly in the text but do not provide insight into a document's specific topic, such as “the”, “and”, “of”, and so on, after the embeddings were obtained.…”
Section: Methodsmentioning
confidence: 99%
“…To obtain sentence embeddings, we used the S-PubMedBert-MS-MARCO model, 8 a Hugging Face sentence-transformers model specifically fine-tuned for information retrieval tasks in the medical and health text domain. Sentence embeddings are vector representations of sentences, where each vector encapsulates the semantic information of the corresponding sentence in a high-dimensional space.…”
Section: Methodsmentioning
confidence: 99%
“…The initial content items and mappings were embedded using a natural language processing (NLP) modelprtiamdeka/s-PubMedBert-MS-MARCO -an open-source model trained on articles in PubMed. 29 A weighted rules-based prioritization algorithm utilizes content already viewed by the learner, prior learner experience with procedures or medical diagnoses, and their current level of competency to prioritize the list. For example, if the learner encounters a patient with diabetes and this triggers the system to recommend an article on the intraoperative management of patients with diabetes, the prioritization algorithm would downgrade the display of this content if the learner already had a significant number of similar encounters.…”
Section: Interventionsmentioning
confidence: 99%
“…The content database can be updated with new content, an approach that aligns with the principle of proactivity. The initial content items and mappings were embedded using a natural language processing (NLP) model—prtiamdeka/s-PubMedBert-MS-MARCO—an open-source model trained on articles in PubMed 29 . A weighted rules-based prioritization algorithm utilizes content already viewed by the learner, prior learner experience with procedures or medical diagnoses, and their current level of competency to prioritize the list.…”
Section: Pe Initiative 3: the Anesthesia Research Group For Education...mentioning
confidence: 99%