learning-doing model - определение. Что такое learning-doing model
Diclib.com
Словарь ChatGPT
Введите слово или словосочетание на любом языке 👆
Язык:

Перевод и анализ слов искусственным интеллектом ChatGPT

На этой странице Вы можете получить подробный анализ слова или словосочетания, произведенный с помощью лучшей на сегодняшний день технологии искусственного интеллекта:

  • как употребляется слово
  • частота употребления
  • используется оно чаще в устной или письменной речи
  • варианты перевода слова
  • примеры употребления (несколько фраз с переводом)
  • этимология

Что (кто) такое learning-doing model - определение

SUBFIELD OF MACHINE LEARNING
Meta learning (Computer Science); Meta learning (computer science); Metric-based meta-learning; Model-based meta-learning
Найдено результатов: 4407
Learning-by-doing         
HANDS-ON APPROACH TO LEARNING, MEANING STUDENTS MUST INTERACT WITH THEIR ENVIRONMENT IN ORDER TO ADAPT AND LEARN
Learning by doing; Learning by Dewey-ing; Learning by Deweying; Learning by deweying
Learning by doing refers to a theory of education. This theory has been expounded by American philosopher John Dewey and Latinamerican pedagogue Paulo Freire.
M-learning         
  • Parts of Group Collaboration
DISTANCE EDUCATION USING MOBILE DEVICE TECHNOLOGY
Mobile-learning; Mobile learning; MLearning
M-learning or mobile learning is "learning across multiple contexts, through social and content interactions, using personal electronic devices".Crompton, H.
Kinesthetic learning         
LEARNING STYLE IN WHICH LEARNING TAKES PLACE BY THE STUDENTS CARRYING OUT PHYSICAL ACTIVITIES
Kineasthetic Learning; Kinaesthetic learning; Tactile learning; Kinesthetic learner
Kinesthetic learning (American English), kinaesthetic learning (British English), or tactile learning is a learning style in which learning takes place by the students carrying out physical activities, rather than listening to a lecture or watching demonstrations. As cited by Favre (2009), Dunn and Dunn define kinesthetic learners as students who require whole-body movement to process new and difficult information.
Rotation model of learning         
Rotation Model of Learning
The rotation model of learning involves the traditional face-to-face learning with online learning. In this, the time schedule is divided and fixed between these two processes or it runs on the teacher's discretion for a given course.
Flex model of learning         
Flex Model of Learning
The flex model is a method of teaching for students who are non-traditional learners. Learning material and instructions are given online and the lessons are self-guided.
Feature learning         
A SET OF TECHNIQUES THAT LEARN A FEATURE: A TRANSFORMATION OF RAW DATA INPUT TO A REPRESENTATION THAT CAN BE EFFECTIVELY EXPLOITED IN MACHINE LEARNING TASKS
Learning representation; Representation learning; Unsupervised feature learning; Supervised feature learning
In machine learning, feature learning or representation learning is a set of techniques that allows a system to automatically discover the representations needed for feature detection or classification from raw data. This replaces manual feature engineering and allows a machine to both learn the features and use them to perform a specific task.
Experiential learning         
PROCESS OF LEARNING THROUGH EXPERIENCE, WHICH IS DISTINCT FROM ROTE OR DIDACTIC LEARNING
Experiental learning; Hands on learning; Hands-on learning; Experiential business learning
Experiential learning (ExL) is the process of learning through experience, and is more narrowly defined as "learning through reflection on doing". Hands-on learning can be a form of experiential learning, but does not necessarily involve students reflecting on their product.
Service-learning         
PEDAGOGY COMBINING LEARNING OBJECTIVES WITH COMMUNITY SERVICE
Service-Learning; Service learning; Service Learning
Service-learning is an educational approach that combines learning objectives with community service in order to provide a pragmatic, progressive learning experience while meeting societal needs.
Organizational learning         
PROCESS OF CREATING, RETAINING, AND TRANSFERRING KNOWLEDGE WITHIN AN ORGANIZATION
Organisational learning; Organisational Learning
Organizational learning is the process of creating, retaining, and transferring knowledge within an organization. An organization improves over time as it gains experience.
Learning styles         
  • Visual representation of the 4 learning styles
THEORY THAT AIMS TO ACCOUNT FOR DIFFERENCES IN INDIVIDUALS' LEARNING
Learning style; VARK; Linear learning; Learning types; Learning modalities
Learning styles refer to a range of theories that aim to account for differences in individuals' learning. Although there is ample evidence that individuals express personal preferences for how they prefer to receive information, few studies have found any validity in using learning styles in education.

Википедия

Meta-learning (computer science)

Meta learning is a subfield of machine learning where automatic learning algorithms are applied to metadata about machine learning experiments. As of 2017, the term had not found a standard interpretation, however the main goal is to use such metadata to understand how automatic learning can become flexible in solving learning problems, hence to improve the performance of existing learning algorithms or to learn (induce) the learning algorithm itself, hence the alternative term learning to learn.

Flexibility is important because each learning algorithm is based on a set of assumptions about the data, its inductive bias. This means that it will only learn well if the bias matches the learning problem. A learning algorithm may perform very well in one domain, but not on the next. This poses strong restrictions on the use of machine learning or data mining techniques, since the relationship between the learning problem (often some kind of database) and the effectiveness of different learning algorithms is not yet understood.

By using different kinds of metadata, like properties of the learning problem, algorithm properties (like performance measures), or patterns previously derived from the data, it is possible to learn, select, alter or combine different learning algorithms to effectively solve a given learning problem. Critiques of meta learning approaches bear a strong resemblance to the critique of metaheuristic, a possibly related problem. A good analogy to meta-learning, and the inspiration for Jürgen Schmidhuber's early work (1987) and Yoshua Bengio et al.'s work (1991), considers that genetic evolution learns the learning procedure encoded in genes and executed in each individual's brain. In an open-ended hierarchical meta learning system using genetic programming, better evolutionary methods can be learned by meta evolution, which itself can be improved by meta meta evolution, etc.

See also Ensemble learning.