人工智能英语教程参考试卷.pdf
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1、参考试卷一、写出以下单词的中文意思(每小题0.5分,共10分)1accuracy11customize2actuator12 definition3adjust13 defuzzification4agent14 deployment5algorithm15 effector6analogy16 entity7attribute17 extract8backtrack18feedback9blockchain19 finite10 cluster20framework二、根据给出的中文意思,写出英文单词(每小题0.5分,共10分)1V.收集,搜集11n.神经元;神经细胞2adj.嵌入的,内置的
2、12 n.节点3n.指示器;指标13V.运转;操作4n.基础设施,基础架构14n.模式5V.合并:集成15V.察觉,发觉6n.解释器,解释程序16n.前提7n.迭代;循环17 adj.程序的;过程的8n.库18n.回归9n.元数据19 adj.健壮的,强健的;结实的10 v.监视;控制;监测20V.筛选三、根据给出的短语,写出中文意思(每小题1分,共10分)1data object2cyber security3smart manufacturing4clustered system5data visualization6open source7analyze text8cloud compu
3、ting9computation power10object recognition四、根据给出的中文意思,写 出 英 文 短 语(每 小 题1分,共10分)1 数据结构 _2 决策树 _3 演绎推理 _4 贪婪最佳优先搜索 _5 隐藏模式,隐含模式 _6 知识挖掘 _7 逻辑推理 _8 预测性维护 _9 搜索引擎 _10 文本挖掘技术五、写出以下缩略 语 的 完 整 形 式 和 中文意思(每 小 题1分,共10分)缩 略 语 _完整形式 中文意思_1 ANN2 AR3 BFS4 CV5 DFS6 ES7 IA8 KNN9 NLP10 VR六、阅读短文,回 答 问 题(每 小 题2分,共10分
4、)Artificial Neural Network(ANN)An artificial neural network(ANN)is the piece of a computing system designed to simulatethe way the human brain analyzes and processes information.It is the foundation of artificialintelligence(AI)and solves problems that would prove impossible or difficult by human or
5、statistical standards.ANNs have self-learning capabilities that enable them to produce betterresults as more data becomes available.Artificial neural networks are built like the human brain,with neuron nodes interconnectedlike a web.The human brain has hundreds of billions of cells called neurons.Ea
6、ch neuron is madeup of a cell body that is responsible for processing information by carrying information towards(inputs)and away(outputs)from the brain.An ANN has hundreds or thousands of artificial neurons called processing units,which areinterconnected by nodes.These processing units are made up
7、of input and output units.The inputunits receive various forms and structures of information based on an internal weighting system,and the neural network attempts to learn about the information presented to produce one outputreport.Just like humans need rules and guidelines to come up with a result
8、or output,ANNs alsouse a set of learning rules called backpropagation,an abbreviation fbr backward propagation oferror,to perfect their output results.An ANN initially goes through a training phase where it learns to recognize patterns in data,whether visually,aurally,or textually.During this superv
9、ised phase,the network compares itsactual output produced with what it was meant to produce the desired output.The differencebetween both outcomes is adjusted using backpropagation.This means that the network worksbackward,going from the output unit to the input units to adjust the weight of its con
10、nectionsbetween the units until(he difference between the actual and desired outcome produces the lowestpossible error.A neural network may contain the following 3 layers:Input layer-The activity of the input units represents the raw information that can feed intothe network.Hidden layer-To determin
11、e the activity of each hidden unit.The activities of the input unitsand the weights on the connections between the input and the hidden units.There may be one ormore hidden layers.Output layer-The behavior of the output units depends on the activity of the hidden unitsand the weights between the hid
12、den and output units.1.What is an artificial neural network(ANN)?2.What is each neuron made up of?3.Wha do the input units do?4.What does an ANN initially go through?5.How many layers may a neural network contain?What are they?七、将下列词填入适当的位置(每词只用一次)。(每小题10分,共 20分)填空题1供选择的答案:transactionsinformationtec
13、hniquesfraudnodesunstructuredsubsetsharedautomatedexplosionDeep Learning1.What Is Deep Learning?Deep learning is an artificial intelligence(AI)function that imitates the workings of thehuman brain in processing data and creating patterns for use in decision making.Deep learning isa _1_ of machine le
14、arning in artificial intelligence that has networks capable of learningunsupervised from data that is_2_or unlabeled.Also known as deep neural learning or deepneural network.2.How Does Deep Learning Work?Deep learning has evolved hand-in-hand with the digital era,which has brought about an_3_of data
15、 in all forms and from every region of the world.This data,known simply as bigdata,is drawn from sources like social media,internet search engines,e-commerce platforms,andonline cinemas,among others.This enormous amount of data is readily accessible and can be_4_through fintech applications like clo
16、ud computing.However,the data,which normally is unstructured,is so vast that it could take decades forhumans to comprehend it and extract relevant_5_.Companies realize the incredible potentialthat can result from unraveling this wealth of information and are increasingly adapting to AIsystems for_6_
17、support.3.Deep Learning vs.Machine LearningOne of the most common A I_7_used for processing big data is machine learning,aself-adaptive algorithm that gets increasingly better analysis and patterns with experience or withnewly added data.If a digital payments company wanted to detect the occuiTence
18、or potential_8_in itssystem,it could employ machine learning tools for this purpose.The computational algorithmbuilt into a computer model will process all _9_happening on the digital platform,findpatterns in the data set,and point out any anomaly detected by the pattern.Deep learning utilizes a hie
19、rarchical level of artificial neural networks to carry out theprocess of machine learning.The artificial neural networks are built like the human brain,withneuron_10_ connected together like a web.While traditional programs build analysis withdata in a linear way,the hierarchical function of deep le
20、arning systems enables machines toprocess data with a nonlinear approach.填空题2供选择的答案:storedresolutionmatchlookunlockdatabasephotographeyesreturn,identifyingFace RecognitionFace recognition systems use computer algorithms to pick out specific,distinctive detailsabout a persons face.These details,such
21、as distance between the_1_ or shape of the chin,are then converted into a mathematical representation and compared to data on other facescollected in a face recognition database.The data about a particular face is often called a facetemplate and is distinct from a _2_because its designed to only inc
22、lude certain details thatcan be used to distinguish one face from another.Some face recognition systems,instead of positively _3_ an unknown person,aredesigned to calculate a probability match score between the unknown person and specific facetemplates_4_in the database.These systems will offer up s
23、everal potential matches,rankedin order of likelihood of correct identification,instead of just returning a single result.Face recognition systems vary in their ability to identify people under challenging conditionssuch as poor lighting,low quality image_5_,and suboptimal angle of view(such as in a
24、photograph taken from above looking down on an unknown person).When it comes to enors,there are two key concepts to understand:A 6false negative“is when the face recognition system fails to _6_match a personsface to an image that is,in fact,contained in a database.In other words,the system willerron
25、eously_7_zero results in response to a query.A“false positive“is when the face recognition system does match a persons face to animage in a _8_,but that match is actually incorrect.This is when a police officer submits animage of Joe,but the system erroneously tells the officer that the photo is of
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