• constraint satisfaction backtracking algorithms, constraint learning is a technique for improving efficiency. It works by recording new constraints whenever...
    7 KB (1,044 words) - 09:57, 5 November 2024
  • backtracking "more than one variable" in some cases. Constraint learning infers and saves new constraints that can be later used to avoid part of the search...
    29 KB (3,364 words) - 22:02, 19 June 2025
  • very small number of constraints. There is always at least one constraint, and TOC uses a focusing process to identify the constraint and restructure the...
    43 KB (5,993 words) - 14:48, 25 April 2025
  • factorisation and various forms of clustering. Manifold learning algorithms attempt to do so under the constraint that the learned representation is low-dimensional...
    140 KB (15,573 words) - 00:51, 20 June 2025
  • Thumbnail for Deep learning
    5947H. doi:10.4249/scholarpedia.5947. Rina Dechter (1986). Learning while searching in constraint-satisfaction problems. University of California, Computer...
    180 KB (17,775 words) - 21:04, 10 June 2025
  • AC-3 algorithm (category Constraint programming)
    constraint solvers. The AC-3 algorithm is not to be confused with the similarly named A3C algorithm in machine learning. AC-3 operates on constraints...
    5 KB (799 words) - 11:55, 8 January 2025
  • Thumbnail for Reinforcement learning
    Reinforcement learning is one of the three basic machine learning paradigms, alongside supervised learning and unsupervised learning. Reinforcement learning differs...
    69 KB (8,194 words) - 13:01, 17 June 2025
  • semi-supervised learning algorithms. Typically, constrained clustering incorporates either a set of must-link constraints, cannot-link constraints, or both,...
    3 KB (361 words) - 16:49, 27 March 2025
  • Mutual exclusivity is a word learning constraint that involves the tendency to assign one label/name, and in turn avoid assigning a second label, to a...
    23 KB (3,627 words) - 09:43, 1 May 2025
  • Thumbnail for Optical flow
    is to apply a smoothness constraint or a regularization constraint to the flow field. One can combine both of these constraints to formulate estimating...
    24 KB (3,112 words) - 20:44, 18 June 2025
  • Thumbnail for Backjumping
    Backjumping (category Constraint programming)
    In constraint programming and SAT solving, backjumping (also known as non-chronological backtracking or intelligent backtracking) is an enhancement for...
    16 KB (2,781 words) - 04:35, 8 November 2024
  • Thumbnail for Project management triangle
    management triangle (called also the triple constraint, iron triangle and project triangle) is a model of the constraints of project management. While its origins...
    23 KB (2,941 words) - 16:59, 19 April 2025
  • education (also known as online learning, remote learning or remote education) through an online school. A distance learning program can either be completely...
    85 KB (9,559 words) - 13:43, 8 June 2025
  • Reasoning system (category Constraint programming)
    and algorithms. Constraint solvers solve constraint satisfaction problems (CSPs). They support constraint programming. A constraint is a which must be...
    17 KB (1,945 words) - 21:42, 13 June 2025
  • Thumbnail for Federated learning
    N} Local learning rate: η {\displaystyle \eta } Those parameters have to be optimized depending on the constraints of the machine learning application...
    50 KB (5,794 words) - 13:03, 28 May 2025
  • to enforce the constraint. In practice, this corresponds to performing the parameter update as normal, and then enforcing the constraint by clamping the...
    138 KB (15,585 words) - 07:00, 4 June 2025
  • Thumbnail for Constraint (computer-aided design)
    A constraint in computer-aided design (CAD) software is a limitation or restriction imposed by a designer or an engineer upon geometric properties: 203 ...
    12 KB (1,144 words) - 02:42, 28 May 2025
  • the project within a time constraint. Learning about the use of technology is a skill that can be gained through learning to use a variety of tools,...
    50 KB (5,950 words) - 18:36, 24 May 2025
  • Policy gradient method (category Reinforcement learning)
    Policy gradient methods are a class of reinforcement learning algorithms. Policy gradient methods are a sub-class of policy optimization methods. Unlike...
    31 KB (6,295 words) - 15:51, 24 May 2025
  • finding the local maxima and minima of a function subject to equation constraints (i.e., subject to the condition that one or more equations have to be...
    52 KB (7,988 words) - 15:06, 24 May 2025
  • Active learning is "a method of learning in which students are actively or experientially involved in the learning process and where there are different...
    49 KB (6,130 words) - 18:59, 23 May 2025
  • Chater, Nick (January 2016). "The Now-or-Never bottleneck: A fundamental constraint on language". Behavioral and Brain Sciences. 39: e62. doi:10.1017/S0140525X1500031X...
    9 KB (372 words) - 23:59, 25 May 2025
  • Distributed constraint optimization (DCOP or DisCOP) is the distributed analogue to constraint optimization. A DCOP is a problem in which a group of agents...
    30 KB (3,425 words) - 01:27, 2 June 2025
  • student's knowledge after one hour of learning (with the effect size of 0.6). COLLECT-UML COLLECT-UML is a constraint-based tutor that supports pairs of...
    84 KB (11,451 words) - 11:09, 27 May 2025
  • cooperative learning. However, other contemporary views on peer learning relax the constraints, and position "peer-to-peer learning" as a mode of "learning for...
    26 KB (3,026 words) - 00:17, 26 May 2025
  • Thumbnail for Feature learning
    In machine learning (ML), feature learning or representation learning is a set of techniques that allow a system to automatically discover the representations...
    45 KB (5,114 words) - 02:41, 2 June 2025
  • consonant clusters and vowel sequences by means of phonotactic constraints. Phonotactic constraints are highly language-specific. For example, in Japanese, consonant...
    14 KB (1,689 words) - 06:01, 25 May 2025
  • Thumbnail for Regularization (mathematics)
    mathematics, statistics, finance, and computer science, particularly in machine learning and inverse problems, regularization is a process that converts the answer...
    30 KB (4,628 words) - 21:21, 17 June 2025
  • In constraint satisfaction, a decomposition method translates a constraint satisfaction problem into another constraint satisfaction problem that is binary...
    43 KB (5,804 words) - 06:51, 26 January 2025
  • Thumbnail for Learning curve
    reflects bursts of learning following breakthroughs that make learning easier followed by meeting constraints that make learning ever harder, perhaps...
    36 KB (4,349 words) - 09:15, 18 June 2025