SAT閱讀課外擴展材料

        雕龍文庫 分享 時間: 收藏本文

        SAT閱讀課外擴展材料

          Since the start of the year, a team of researchers at Carnegie Mellon University supported by grants from the Defense Advanced Research Projects Agency and Google, and tapping into a research supercomputing cluster provided by Yahoo has been fine-tuning a computer system that is trying to master semantics by learning more like a human. Its beating hardware heart is a sleek, silver-gray computer calculating 24 hours a day, seven days a week that resides in a basement computer center at the university, in Pittsburgh. The computer was primed by the researchers with some basic knowledge in various categories and set loose on the Web with a mission to teach itself.

          For all the advances in computer science, we still dont have a computer that can learn as humans do, cumulatively, over the long term, said the teams leader, Tom M. Mitchell, a computer scientist and chairman of the machine learning department.

          The Never-Ending Language Learning system, or NELL, has made an impressive showing so far. NELL scans hundreds of millions of Web pages for text patterns that it uses to learn facts, 390,000 to date, with an estimated accuracy of 87 percent. These facts are grouped into semantic categories cities, companies, sports teams, actors, universities, plants and 274 others. The category facts are things like San Francisco is a city and sunflower is a plant.

          NELL also learns facts that are relations between members of two categories. For example, Peyton Manning is a football player . The Indianapolis Colts is a football team . By scanning text patterns, NELL can infer with a high probability that Peyton Manning plays for the Indianapolis Colts even if it has never read that Mr. Manning plays for the Colts. Plays for is a relation, and there are 280 kinds of relations. The number of categories and relations has more than doubled since earlier this year, and will steadily expand.

          The learned facts are continuously added to NELLs growing database, which the researchers call a knowledge base. A larger pool of facts, Dr. Mitchell says, will help refine NELLs learning algorithms so that it finds facts on the Web more accurately and more efficiently over time.

          NELL is one project in a widening field of research and investment aimed at enabling computers to better understand the meaning of language. Many of these efforts tap the Web as a rich trove of text to assemble structured ontologies formal descriptions of concepts and relationships to help computers mimic human understanding. The ideal has been discussed for years, and more than a decade ago Sir Tim Berners-Lee, who invented the underlying software for the World Wide Web, sketched his vision of a semantic Web.

          Today, ever-faster computers, an explosion of Web data and improved software techniques are opening the door to rapid progress. Scientists at universities, government labs, Google, Microsoft, I.B.M. and elsewhere are pursuing breakthroughs, along somewhat different paths.

          For example, I.B.M.s question answering machine, Watson, shows remarkable semantic understanding in fields like history, literature and sports as it plays the quiz show Jeopardy! Google Squared, a research project at the Internet search giant, demonstrates ample grasp of semantic categories as it finds and presents information from around the Web on search topics like U.S. presidents and cheeses.

          Still, artificial intelligence experts agree that the Carnegie Mellon approach is innovative. Many semantic learning systems, they note, are more passive learners, largely hand-crafted by human programmers, while NELL is highly automated. Whats exciting and significant about it is the continuous learning, as if NELL is exercising curiosity on its own, with little human help, said Oren Etzioni, a computer scientist at the University of Washington, who leads a project called TextRunner, which reads the Web to extract facts.

          Computers that understand language, experts say, promise a big payoff someday. The potential applications range from smarter search to virtual personal assistants that can reply to questions in specific disciplines or activities like health, education, travel and shopping.

          The technology is really maturing, and will increasingly be used to gain understanding, said Alfred Spector, vice president of research for Google. Were on the verge now in this semantic world.

          With NELL, the researchers built a base of knowledge, seeding each kind of category or relation with 10 to 15 examples that are true. In the category for emotions, for example: Anger is an emotion. Bliss is an emotion. And about a dozen more.

          

          Since the start of the year, a team of researchers at Carnegie Mellon University supported by grants from the Defense Advanced Research Projects Agency and Google, and tapping into a research supercomputing cluster provided by Yahoo has been fine-tuning a computer system that is trying to master semantics by learning more like a human. Its beating hardware heart is a sleek, silver-gray computer calculating 24 hours a day, seven days a week that resides in a basement computer center at the university, in Pittsburgh. The computer was primed by the researchers with some basic knowledge in various categories and set loose on the Web with a mission to teach itself.

          For all the advances in computer science, we still dont have a computer that can learn as humans do, cumulatively, over the long term, said the teams leader, Tom M. Mitchell, a computer scientist and chairman of the machine learning department.

          The Never-Ending Language Learning system, or NELL, has made an impressive showing so far. NELL scans hundreds of millions of Web pages for text patterns that it uses to learn facts, 390,000 to date, with an estimated accuracy of 87 percent. These facts are grouped into semantic categories cities, companies, sports teams, actors, universities, plants and 274 others. The category facts are things like San Francisco is a city and sunflower is a plant.

          NELL also learns facts that are relations between members of two categories. For example, Peyton Manning is a football player . The Indianapolis Colts is a football team . By scanning text patterns, NELL can infer with a high probability that Peyton Manning plays for the Indianapolis Colts even if it has never read that Mr. Manning plays for the Colts. Plays for is a relation, and there are 280 kinds of relations. The number of categories and relations has more than doubled since earlier this year, and will steadily expand.

          The learned facts are continuously added to NELLs growing database, which the researchers call a knowledge base. A larger pool of facts, Dr. Mitchell says, will help refine NELLs learning algorithms so that it finds facts on the Web more accurately and more efficiently over time.

          NELL is one project in a widening field of research and investment aimed at enabling computers to better understand the meaning of language. Many of these efforts tap the Web as a rich trove of text to assemble structured ontologies formal descriptions of concepts and relationships to help computers mimic human understanding. The ideal has been discussed for years, and more than a decade ago Sir Tim Berners-Lee, who invented the underlying software for the World Wide Web, sketched his vision of a semantic Web.

          Today, ever-faster computers, an explosion of Web data and improved software techniques are opening the door to rapid progress. Scientists at universities, government labs, Google, Microsoft, I.B.M. and elsewhere are pursuing breakthroughs, along somewhat different paths.

          For example, I.B.M.s question answering machine, Watson, shows remarkable semantic understanding in fields like history, literature and sports as it plays the quiz show Jeopardy! Google Squared, a research project at the Internet search giant, demonstrates ample grasp of semantic categories as it finds and presents information from around the Web on search topics like U.S. presidents and cheeses.

          Still, artificial intelligence experts agree that the Carnegie Mellon approach is innovative. Many semantic learning systems, they note, are more passive learners, largely hand-crafted by human programmers, while NELL is highly automated. Whats exciting and significant about it is the continuous learning, as if NELL is exercising curiosity on its own, with little human help, said Oren Etzioni, a computer scientist at the University of Washington, who leads a project called TextRunner, which reads the Web to extract facts.

          Computers that understand language, experts say, promise a big payoff someday. The potential applications range from smarter search to virtual personal assistants that can reply to questions in specific disciplines or activities like health, education, travel and shopping.

          The technology is really maturing, and will increasingly be used to gain understanding, said Alfred Spector, vice president of research for Google. Were on the verge now in this semantic world.

          With NELL, the researchers built a base of knowledge, seeding each kind of category or relation with 10 to 15 examples that are true. In the category for emotions, for example: Anger is an emotion. Bliss is an emotion. And about a dozen more.

          

        周易 易經 代理招生 二手車 網絡營銷 旅游攻略 非物質文化遺產 查字典 精雕圖 戲曲下載 抖音代運營 易學網 互聯網資訊 成語 詩詞 工商注冊 抖音帶貨 云南旅游網 網絡游戲 代理記賬 短視頻運營 在線題庫 國學網 抖音運營 雕龍客 雕塑 奇石 散文 常用文書 河北生活網 好書推薦 游戲攻略 心理測試 石家莊人才網 考研真題 漢語知識 心理咨詢 手游安卓版下載 興趣愛好 網絡知識 十大品牌排行榜 商標交易 單機游戲下載 短視頻代運營 寶寶起名 范文網 電商設計 免費發布信息 服裝服飾 律師咨詢 搜救犬 Chat GPT中文版 經典范文 優質范文 工作總結 二手車估價 實用范文 石家莊點痣 養花 名酒回收 石家莊代理記賬 女士發型 搜搜作文 鋼琴入門指法教程 詞典 讀后感 玄機派 企業服務 法律咨詢 chatGPT國內版 chatGPT官網 勵志名言 文玩 語料庫 游戲推薦 男士發型 高考作文 PS修圖 兒童文學 工作計劃 舟舟培訓 IT教程 手機游戲推薦排行榜 暖通,電地暖, 女性健康 苗木供應 ps素材庫 短視頻培訓 優秀個人博客 包裝網 創業賺錢 養生 民間借貸律師 綠色軟件 安卓手機游戲 手機軟件下載 手機游戲下載 單機游戲大全 石家莊論壇 網賺 職業培訓 資格考試 成語大全 英語培訓 藝術培訓 少兒培訓 苗木網 雕塑網 好玩的手機游戲推薦 漢語詞典 中國機械網 美文欣賞 紅樓夢 道德經 標準件 電地暖 鮮花 書包網 英語培訓機構 電商運營
        亚洲国产精品成人综合久久久| 国产亚洲一区二区在线观看| 亚洲福利视频导航| 精品亚洲视频在线观看| 亚洲精品无码成人片在线观看| 在线a亚洲v天堂网2018| 国产亚洲男人的天堂在线观看 | 亚洲精品V欧洲精品V日韩精品| 丁香五月亚洲综合深深爱| 亚洲午夜国产精品无码| 久久久久亚洲精品中文字幕| 久久亚洲国产精品五月天婷| 激情综合色五月丁香六月亚洲| 伊伊人成亚洲综合人网7777| 国产亚洲精品无码成人| 亚洲国产精品成人久久| 亚洲国产人成在线观看69网站| 亚洲av丰满熟妇在线播放| 久久亚洲私人国产精品| 亚洲激情校园春色| 亚洲13又紧又嫩又水多| 亚洲熟妇AV一区二区三区宅男| 亚洲国产成人久久一区二区三区| 亚洲av无码片vr一区二区三区 | 337p日本欧洲亚洲大胆人人| mm1313亚洲精品无码又大又粗| 亚洲第一视频在线观看免费| 亚洲区不卡顿区在线观看| 亚洲夜夜欢A∨一区二区三区| 亚洲av中文无码乱人伦在线r▽| 亚洲日韩图片专区第1页| 亚洲精品美女在线观看播放| 亚洲男人的天堂久久精品| 亚洲欧美成人综合久久久| 亚洲AV无码不卡在线观看下载| 久久久久亚洲精品无码网址| 久久精品国产精品亚洲艾| 亚洲欧洲高清有无| 亚洲日本VA中文字幕久久道具| 国产精品亚洲а∨无码播放不卡 | 亚洲男人在线无码视频|