scholarly journals What can associative learning do for planning?

2018 ◽  
Vol 5 (11) ◽  
pp. 180778 ◽  
Author(s):  
Johan Lind

There is a new associative learning paradox. The power of associative learning for producing flexible behaviour in non-human animals is downplayed or ignored by researchers in animal cognition, whereas artificial intelligence research shows that associative learning models can beat humans in chess. One phenomenon in which associative learning often is ruled out as an explanation for animal behaviour is flexible planning. However, planning studies have been criticized and questions have been raised regarding both methodological validity and interpretations of results. Due to the power of associative learning and the uncertainty of what causes planning behaviour in non-human animals, I explored what associative learning can do for planning. A previously published sequence learning model which combines Pavlovian and instrumental conditioning was used to simulate two planning studies, namely Mulcahy & Call 2006 ‘Apes save tools for future use.’ Science 312 , 1038–1040 and Kabadayi & Osvath 2017 ‘Ravens parallel great apes in flexible planning for tool-use and bartering.’ Science 357 , 202–204. Simulations show that behaviour matching current definitions of flexible planning can emerge through associative learning. Through conditioned reinforcement, the learning model gives rise to planning behaviour by learning that a behaviour towards a current stimulus will produce high value food at a later stage; it can make decisions about future states not within current sensory scope. The simulations tracked key patterns both between and within studies. It is concluded that one cannot rule out that these studies of flexible planning in apes and corvids can be completely accounted for by associative learning. Future empirical studies of flexible planning in non-human animals can benefit from theoretical developments within artificial intelligence and animal learning.

2012 ◽  
Vol 367 (1603) ◽  
pp. 2723-2732 ◽  
Author(s):  
Jackie Chappell ◽  
Nick Hawes

Do we fully understand the structure of the problems we present to our subjects in experiments on animal cognition, and the information required to solve them? While we currently have a good understanding of the behavioural and neurobiological mechanisms underlying associative learning processes, we understand much less about the mechanisms underlying more complex forms of cognition in animals. In this study, we present a proposal for a new way of thinking about animal cognition experiments. We describe a process in which a physical cognition task domain can be decomposed into its component parts, and models constructed to represent both the causal events of the domain and the information available to the agent. We then implement a simple set of models, using the planning language MAPL within the MAPSIM simulation environment, and applying it to a puzzle tube task previously presented to orangutans. We discuss the results of the models and compare them with the results from the experiments with orangutans, describing the advantages of this approach, and the ways in which it could be extended.


2019 ◽  
Vol 62 (5) ◽  
pp. 124-138
Author(s):  
Alexandra V. Shiller

The article analyzes the role of theories of embodied cognition for the development of emotion research. The role and position of emotions changed as philosophy developed. In classical and modern European philosophy, the idea of the “primacy of reason” prevailed over emotions and physicality, emotions and affective life were described as low-ranking phenomena regarding cognitive processes or were completely eliminated as an unknown quantity. In postmodern philosophy, attention focuses on physicality and sensuality, which are rated higher than rational principle, mind and intelligence. Within the framework of this approach, there is a recently emerged theory of embodied cognition, which allows to take a fresh look at the place of emotions in the architecture of mental processes – thinking, perception, memory, imagination, speech. The article describes and analyzes a number of empirical studies showing the impossibility of excluding emotional processes and the significance of their research for understanding the architecture of embodied cognition. However, the features of the architecture of embodied cognition remain unclear, and some of the discoveries of recent years (mirror neurons or neurons of simulation) rather raise new questions and require further research. The rigorously described and clear architecture of the embodied cognition can grow the theoretical basis that will allow to advance the studies of learning processes, language understanding, psychotherapy techniques, social attitudes and stereotypes, highlight the riddle of consciousness and create new theories of consciousness or even create an anthropomorphic artificial intelligence that is close to “strong artificial intelligence.”


2016 ◽  
Vol 33 (2) ◽  
pp. 187-197 ◽  
Author(s):  
Feliciano Henriques VEIGA ◽  
Viorel ROBU ◽  
Joseph CONBOY ◽  
Adriana ORTIZ ◽  
Carolina CARVALHO ◽  
...  

"Students' engagement in school" is regarded in the literature as a current and valued construct despite the lack of empirical studies on its relationship with specific family variables. The present research aimed to survey studies on the correlation between students' engagement in school and family contexts, specifically in terms of the following variables: perceived parental support, socioeconomic and sociocultural levels, perceived rights, and parental educational styles. In order to describe the state of the art of student's "engagement in school" and "family variables", a narrative review was conducted. The studies reviewed highlight the role of family as a context with significance in student's engagement in school. However, further research is needed to deepen the knowledge of this topic considering potential mediator variables, either personal or school variables. It was also found the need for a psychosocial intervention aimed at providing support for the students coming from adverse family contexts who exhibit low level of engagement associated with poor academic achievement and a higher probability of dropping out.


Author(s):  
Moh mujib Alfirdaus

This learning model is the author's attempt to develop acting method in traditional theater through the Stanislavski's technique, although the need for theater tradition performances and theater conventional realism performance is different. During this time the method of play in the theater tradition is still spontaneous, but the method of acting on the theater tradition must be measurable and can be studied in the academic field, hence, the author develops acting methods based on Stanislavski's technique as a reference in learning. An actor is a student for nature and pupil for anyone as long as the knowledge he earned is useful to develops his acting creativity. Therefore this Stanislavski's method becomes very influential to train the actor's intelligence, despite his need for traditional theater. Why is Stanislavski's method becoming important to be learned by actor candidate ?. Because the analysis used by Stanislavski's method is still very logical and reasonable, it did not rule out the effects of int elligence for anyone who  applied  it.  This  circumstance emphasizing  the  importance of Developing  Stanilavski's technique-oriented Learning Model on Traditional Theater. In order for candidates who will perform for traditional and modern show, are expected to be ready with all the acting devices to employ. Therefore, this learning method need to be applied, especially in STKW Surabaya. The purpose of this research is developing a learning model for acting in the theater tradition. This research carried out  by producing several outcome. First, a handbook of Stanislavski's method learning model for student. Second, a lecturer's handbook for an effective and efficient learning process


2021 ◽  
Author(s):  
Yew Kee Wong

Deep learning is a type of machine learning that trains a computer to perform human-like tasks, such as recognizing speech, identifying images or making predictions. Instead of organizing data to run through predefined equations, deep learning sets up basic parameters about the data and trains the computer to learn on its own by recognizing patterns using many layers of processing. This paper aims to illustrate some of the different deep learning algorithms and methods which can be applied to artificial intelligence analysis, as well as the opportunities provided by the application in various decision making domains.


10.29007/7dtj ◽  
2019 ◽  
Author(s):  
Mohammed Alhassan ◽  
Brenda Scholtz

Existing literature perceived Economic, Social and Environmental (ESE) factors as three key drivers of Sustainable Manufacturing Practice (SMP). ICT is not considered as a driving factor, but only as a tool that supports the achievement of SMP. The aim of this study is to investigate the role of ICT in achieving SMP in South Africa. A systematic literature review was conducted. The Google Scholar search engine was used to retrieve 1,352 articles that were analysed in this study. Themes and constructs were analysed based on the scope of the study. The findings revealed that South African manufacturing stakeholders are leveraging the advancement of ICT such as Artificial Intelligence and smart production systems to drive SMP through reduced waste and optimisation of resources. Also, the findings revealed that ICT plays a significant role that warrant its consideration as a fourth factor that drives SMP. This study emphasised the role of ICT as a driver in achieving SMP and presents the ESET model (ESE with the addition of Technology) to support the argument that ICT is a major driving factor for SMP. Understanding the role of ICT can influence how the issues of SMP are addressed and stakeholders can rethink strategies for SMP. Further empirical studies with a broader scope are encouraged because the review process and the scope of this study limits its generalisability


Author(s):  
Fang-Ying Yang ◽  
Cheng-Chieh Chang

The objective of this chapter is to present learner characteristics that mediate web-based learning. These characteristics include personal epistemological beliefs, beliefs about web-based learning, social-cultural beliefs, and preferences toward web-based learning environments. In addition to the effects of these affective factors, another factor that is also addressed in the chapter is the cognitive load induced by different web-based curriculum elements. Based on a literature review and the findings of some recent empirical studies, a web-based learning model is proposed to manifest the contributions of learner characteristics on learning in web-based contexts. Educational implications are then drawn corresponding to the web-based learning model.


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