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Semi-supervised Knowledge Extraction for Detection of Drugs and Their Effects

机译:用于药物检测的半监督知识提取及其作用

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New Psychoactive Substances (NPS) are drugs that lay in a grey area of legislation, since they are not internationally and officially banned, possibly leading to their not prosecutable trade. The exacerbation of the phenomenon is that NPS can be easily sold and bought online. Here, we consider large corpora of textual posts, published on online forums specialized on drug discussions, plus a small set of known substances and associated effects, which we call seeds. We propose a semi-supervised approach to knowledge extraction, applied to the detection of drugs (comprising NPS) and effects from the corpora under investigation. Based on the very small set of initial seeds, the work highlights how a contrastive approach and context deduction are effective in detecting substances and effects from the corpora. Our promising results, which feature a F1 score close to 0.9, pave the way for shortening the detection time of new psychoactive substances, once these are discussed and advertised on the Internet.
机译:新的精神活性物质(NPS)是立法中灰色地带的药物,因为它们没有在国际上和官方上被禁止,这可能导致其不可起诉的贸易。这种现象的恶化在于,NPS可以很容易地在网上买卖。在这里,我们考虑大量的文本文章集,这些文章集在专门讨论毒品的在线论坛上发布,外加一小套已知的物质和相关作用,我们称之为种子。我们提出了一种半监督的知识提取方法,该方法适用于检测药物(包含NPS)和受调查语料库的影响。基于很少的初始种子集,这项工作强调了对比方法和上下文推论如何有效地检测语料库中的物质和作用。一旦在互联网上进行讨论和广告发布,我们的有希望的结果即F1得分接近0.9,为缩短新的精神活性物质的检测时间铺平了道路。

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