国产热热热精品,亚洲视频久久】日韩,三级婷婷在线久久,99人妻精品视频,精品九热人人肉肉在线,AV东京热一区二区,91po在线视频观看,久久激情宗合,青青草黄色手机视频

Opinion / Op-Ed Contributors

AlphaGo an AI giant, still not a threat

(China Daily) Updated: 2016-03-18 07:43

AlphaGo an AI giant, still not a threat

The world's top Go player Lee Sedol (R) puts his first stone during the last match of the Google DeepMind Challenge Match against Google's artificial intelligence program AlphaGo in Seoul, South Korea, in this handout picture provided by Google and released by Yonhap on March 15, 2016.[Photo/Agencies]

Google Deep Mind's AlphaGo artificial-intelligence program has beaten South Korean Go master Lee Sedol 4:1, sparking a debate world wide on whether AI could pose a threat to humankind.

The development of AI began decades ago. In 1997, Deep Blue developed by IBM defeated the world chess champion Garry Kasparov. In 2010, Apple added Siri (speech interpretation and recognition interface) to its iPhone, which understands the users' audio commands and replies accordingly-similar examples include Xiaobing of IBM and Jimi of jd.com.

But Siri, Xiaobing and Jimi can only deal with a limited number of questions, as they compare the user's command with those pre-installed in their "memories" and answer accordingly. The Deep Blue, on the other hand, relies heavily on fast computing; it decides its next move in a chess game mainly by evaluating the condition on the chessboard and comparing it with the manuals saved in its "memory". That's why it cannot win a Go game, which involves many more possibilities than chess.

AlphaGo, in this sense, is a big step forward because it uses multi-layered artificial neural network, or ANN, and reinforcement learning alGorithm, which can more exactly imitate the way a human brain thinks. AlphaGo repeatedly observes the Go board, analyzes it with its processor and makes the best choice. More importantly, it can store the decisions in its "memory" for future references. In other words, it can more efficiently "learn" and improve.

ANN has become a hot subject of research since the 1980s. It is already being used in many fields besides games. For example, the driverless car developed by Google "observes" the environment through sensors, using calculations to judge how things are moving, and chooses its route accordingly.

AlphaGo marks another step forward because the ANN it uses has more than 30 layers thanks to developers and faster computers. Each layer has multi-parameters that get adjusted each time it obtains information from the outside world, a process through which AlphaGo constantly optimizes its strategy. The more information it gets, the more exactly it can adjust the parameters to suit new situations.

Many people jocularly say AlphaGo is a hardworking student that "studies" hundreds of manuals every night. That may be a joke, but AlphaGo has learned a great deal about Go, or it couldn't have defeated Lee Se-dol. Let's hope its victory would make more people interested in AI research.

Yang Feng is an associate professor at the School of Automatics, Northwestern Polytechnical University.

Previous Page 1 2 Next Page

...
内丘县| 广昌县| 潼关县| 松江区| 岑溪市| 奇台县| 铁力市| 隆回县| 云安县| 正宁县| 威宁| 逊克县| 永嘉县| 上蔡县| 栾川县| 孝昌县| 宁都县| 巢湖市| 高安市| 肥西县| 横峰县| 富锦市| 塔河县| 隆化县| 宁河县| 青海省| 水城县| 神农架林区| 水城县| 商水县| 五常市| 永昌县| 石屏县| 光山县| 延寿县| 子洲县| 东莞市| 浮山县| 兴仁县| 缙云县| 财经|