Remove 2016 Remove Explainability Remove NLP
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Responsible AI: The Crucial Role of AI Watchdogs in Countering Election Disinformation

Unite.AI

Looking back at the recent past, the 2016 US presidential election result makes us explore what influenced voters' decisions. Among the techniques employed to counter false information, natural language processing (NLP) emerges as a transformative technology that skillfully deciphers patterns of deception within written content.

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Embed, encode, attend, predict: The new deep learning formula for state-of-the-art NLP models

Explosion

This post explains the components of this new approach, and shows how they’re put together in two recent systems. Most NLP problems can be reduced to machine learning problems that take one or more texts as input. However, most NLP problems require understanding of longer spans of text, not just individual words.

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NLP in Legal Discovery: Unleashing Language Processing for Faster Case Analysis

Heartbeat

Enter Natural Language Processing (NLP) and its transformational power. This is the promise of NLP: to transform the way we approach legal discovery. The seemingly impossible chore of sorting through mountains of legal documents can be accomplished with astonishing efficiency and precision using NLP.

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Ivan Crewkov CEO & Co-Founder of Buddy AI – Interview Series

Unite.AI

For example, see Face-to-Face Interaction with Pedagogical Agents, Twenty Years Later , a 2016 article that overviews the field and cites a lot of the relevant material. Natural language processing (NLP) , natural language understanding and dialogue management that processes the content of the student's speech and produces the next response.

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Can ChatGPT Compete with Domain-Specific Sentiment Analysis Machine Learning Models?

Topbots

SA is a very widespread Natural Language Processing (NLP). Hence, whether general domain ML models can be as capable as domain-specific models is still an open research question in NLP. Also, since at least 2018, the American agency DARPA has delved into the significance of bringing explainability to AI decisions.

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LLM continuous self-instruct fine-tuning framework powered by a compound AI system on Amazon SageMaker

AWS Machine Learning Blog

Clone the GitHub repository and follow the steps explained in the README. Context (Snippet from PDF file) Question Answer THIS STRATEGIC ALLIANCE AGREEMENT (Agreement) is made and entered into as of November 6, 2016 (the Effective Date) by and between Dialog Semiconductor (UK) Ltd., Set up a SageMaker notebook instance.

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Crowdsourcing (for NLP)

Probably Approximately a Scientific Blog

Recently, I attended Chris Biemann's excellent crowdsourcing course at ESSLLI 2016 (the 28th European Summer School in Logic, Language and Information), and was inspired to write about the topic. The rules of thumb for crowdsourcability are: The task is easy to explain, and you as a requester indeed explain it simply.

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