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超越危险!华生的未来

Beyond Jeopardy! The Future of Watson
课程网址: http://videolectures.net/turing100_ferrucci_beyond_jeopardy/  
主讲教师: David Ferrucci
开课单位: IBM公司
开课时间: 2002-07-10
课程语种: 英语
中文简介:
自计算机问世以来,科学家和作家就已经想到了可以在人类广泛的知识领域中直接,准确地理解和回答人们的问题的计算机系统。当知识范围狭窄且程序员期望查询时,很容易创建玩具解决方案。人工智能的真正目标是使机器能够像人类一样流畅和自由地消化语言,而无需为机器明确地手工明确地形式化知识。能够充分利用人类丰富而自然地获取和交流的知识,将推动明智决策的新纪元,使用户高效,情境感知和精确地访问人类每天自然创造和丰富的巨大知识财富。商业智能,医疗保健,客户支持,社会计算,科学和政府中的应用程序都可以从能够更深入地理解语言的计算机系统中受益。 IBM的DeepQA项目旨在探索和整合自然语言处理(NLP),信息检索(IR),机器学习(ML),知识表示和推理(KR&R)以及大规模并行计算如何推动科学技术的发展和应用。自动提问和更一般的自然语言理解。在危险中获得冠军级别的成绩!需要计算机快速准确地回答丰富的开放域问题,并预测其在任何给定问题上的表现。该系统必须在3秒的响应时间内,在非常广泛的知识和自然语言内容上提供高度的准确性和信心。为此,DeepQA团队改进了各种各样的NLP技术,以查找,生成,证明和分析有关大量自然语言内容的许多竞争假设,以构建Watson([url][url][url].ibm[url]atson.com)。沃森(Watson)成功的一个重要因素是它能够自动学习并结合各种算法和不同维度证据的准确置信度。沃森(Watson)产生了准确的信心,可以知道何时该向竞争对手“蜂拥而至”以及下注多少。高精度和准确的置信度计算对于真实的业务设置至关重要,在真实的业务设置中,帮助用户更快地专注于正确的内容,并以更大的置信度可以发挥作用。对速度和高精度的需求需要一个大型并行计算平台,该平台能够生成,评估和组合成千上万的假设及其相关证据。在本演讲中,我将向观众介绍《危险》!挑战;解释Watson是如何构建的,以最终击败有史以来两个最著名的人类冠军。我将讨论沃森如何超越危险领域!通过自然语言对话解决医疗保健中的实际问题,最终朝着图灵的愿景又迈出了一步。
课程简介: Computer systems that directly and accurately understand and answer people’s questions over a broad domain of human knowledge have been envisioned by scientists and writers since the advent of computers themselves. Toy solutions are easy to create when the knowledge is narrowly bounded and the queries anticipated by the programmers. The real goal for Artificial Intelligence is for the machine to digest language as fluently and freely as humans, eliminating the need to manually and explicitly formalize the knowledge expressly for the machine. Being able to leverage knowledge as it is prolifically and naturally captured and communicated by humans would facilitate a new era in informed decision making, giving users efficient, context-aware and precise access to the enormous wealth of knowledge humans naturally create and enrich every day. Applications in business intelligence, healthcare, customer support, social computing, science and government could all benefit from computer systems capable of deeper language understanding. The DeepQA project at IBM is aimed at exploring how advancing and integrating Natural Language Processing (NLP), Information Retrieval (IR), Machine Learning (ML), Knowledge Representation and Reasoning (KR&R) and massively parallel computation can advance the science and application of automatic Question Answering and more general natural language understanding.  Attaining champion-level performance at Jeopardy! requires a computer to rapidly and accurately answer rich open-domain questions, and to predict its own performance on any given question. The system must deliver high degrees of precision and confidence over a very broad range of knowledge and natural language content with a 3-second response time. To do this, the DeepQA team advanced a broad array of NLP techniques to find, generate, evidence and analyze many competing hypotheses over large volumes of natural language content to build Watson ([url]). An important contributor to Watson’s success is its ability to automatically learn and combine accurate confidences across a wide array of algorithms and over different dimensions of evidence. Watson produced accurate confidences to know when to “buzz in” against its competitors and how much to bet. High precision and accurate confidence computations are critical for real business settings where helping users focus on the right content sooner and with greater confidence can make all the difference. The need for speed and high precision demands a massively parallel computing platform capable of generating, evaluating and combing thousands of hypotheses and their associated evidence. In this talk, I will introduce the audience to the Jeopardy! Challenge; explain how Watson was built to ultimately defeat the two most celebrated human champions of all time. I will discuss how Watson will advance beyond Jeopardy! to solve real problems in healthcare through natural language dialog, ultimately taking another step towards Turing’s vision.
关 键 词: 计算机系统; 期望查询; 知识财富
课程来源: 视频讲座网
最后编审: 2021-12-21:liyy
阅读次数: 39