Application of Computational Intelligence to Improve Education in Smart Cities
<p>Macro-model of governance and educational management.</p> "> Figure 2
<p>An overview of a unified educational system [<a href="#B27-sensors-18-00267" class="html-bibr">27</a>,<a href="#B28-sensors-18-00267" class="html-bibr">28</a>].</p> "> Figure 3
<p>Edukas environment conceptual model.</p> "> Figure 4
<p>An overview of the main hypothesis of this work. Branches have different lengths.</p> "> Figure 5
<p>Example of the tour.</p> "> Figure 6
<p>The process used in this work to discover an agent state.</p> "> Figure 7
<p>Correlations between disciplines and the associated grades. The disciplines’ grades are Portuguese language (NLP), Arts (NAR), Math (NMA), Science (NCC), History (NHI), Geography (NGE), Spanish (NES) and Technology (NTE).</p> "> Figure 8
<p>The correlation between discipline and students’ absenteeism. The disciplines’ absenteeism are Portuguese (FLP), Arts (FAR), Math (FMA), Science (FCC), History (FHI), Geography (FGE), Spanish (FES) and Technology (FTE).</p> "> Figure 9
<p>Correlation between discipline’s grade and absenteeism.</p> "> Figure 10
<p>Correlation between discipline’s grade and income.</p> "> Figure 11
<p>The correlation between discipline’s grade and student’s age.</p> "> Figure 12
<p>The correlation between discipline’s grade and father’s age.</p> "> Figure 13
<p>The correlation between discipline’s grade and mother’s age.</p> "> Figure 14
<p>The variation of grade and absenteeism.</p> "> Figure 15
<p>The PCA and cluster analysis.</p> "> Figure 16
<p>The distribution on the internal organization.</p> "> Figure 17
<p>Tree grown using qualifiers and results.</p> "> Figure 18
<p>The tree grown using grade and absenteeism and results.</p> "> Figure 19
<p>The correlation between father and mother’s education and profession and results.</p> ">
Abstract
:1. Introduction
- Creative school, which should act differently for each student, seeking to fully develop him or her, as opposed to offering a standard curriculum.
- Self-learning promotion, with several initiatives to promote self-study, including the offering of courses for all ages and areas of knowledge.
- Virtual world and virtual teachers, with applications where the classroom breaks the boundaries of the school.
2. The Conceptual View
2.1. Corporate and Educational Governance
2.2. Strategic Planning
2.3. Computational Intelligence over Educational Data Mining, Warehousing and Analytics
- To provide adaptive educational content delivery to students who are registered for a course.
- To identify students based on the spatio-temporal activity data.
- To use the obtained temporal activity patterns for computing and predicting the number and type of clients and applications.
- To compute and predict the bandwidth, latency and other characteristics of the networks required by the system based on using the data obtained.
- To compute and predict computational and other system characteristics required by the system by using the data obtained.
2.3.1. Classify Students Profiles
2.3.2. Recommendations for Student
2.3.3. Predicting Student Performance
2.3.4. Student Modeling
2.3.5. Detecting Undesirable Student Behaviors
2.3.6. Grouping Students
2.3.7. Social Network Analysis
2.3.8. Providing Feedback for Instructors
2.3.9. Developing Concept Maps
2.3.10. Constructing Courseware
2.3.11. Planning and Scheduling
2.3.12. Analysis and Visualization of Data
2.3.13. Stakeholders Point of View
- Oriented toward students: The student view creates the need for specific recommendations for learners such as: activities, resources and learning tasks that would favor and improve their learning; catalog and classify history of good learning experiences from other students; path pruning and shortening or simply links to follow, based on the tasks already done by the learner and/or other learners; etc.
- Oriented toward educators: Educators’ goals are to get more objective feedback for instruction, evaluate the structure of the course content and its effectiveness on the learning process, classify learners into groups based on their needs in guidance and monitoring, find learners regular as well as irregular patterns, find the most frequently made mistakes, find activities that are more effective, discover information to improve the adaptation and customization of the courses, restructure sites to better personalize courseware, organize the contents in a format that is more suitable for a specific student or group of students (this suitability should be discovered beforehand), help students to adaptively assemble their instructional plans, etc.
- Oriented toward academic administrators: Academic administrators want to obtain information on: how to improve site efficiency, how to adapt the sites to the behavior of their users (optimal server size, network traffic distribution, etc.), how to better organize institutional resources (human and material) and make them available to students, how to enhance educational programs’ offer and determine the effectiveness of the new computer-mediated distance learning approach, etc.
2.4. Human Decision-Making
2.5. Ant Colony
2.6. Graphs
3. Model
3.1. Edukas Environment
3.2. Hypothesis
- Humans are social agents; thus, they exchange messages based on the pheromone (information)
- When an agent decides and acts, a trace of the pheromone is created for each path used by this agent
- Each agent tends to choose a path with the greater concentration of pheromone
- The vertex A represents initial context, and vertex D represents final context (or goal)
- The graph is considered a Markov chain
- Construction of the graph, to express the paths along the time that can be used;
- Constraints, to limit the path options in the graph;
- Pheromone trails, to define the strategy of pheromone deposit;
- Heuristic information, the functions that should be optimized;
- Solution construction, issues about software engineering;
- Pheromone update, the strategy to eliminate unused paths;
- Local search, the strategy to avoid premature optimization;
- Particularities, some specific point to be considered;
- Results, results in a simple means of expression;
- Remarks, points to express much information;
3.3. Problem Representation
- A finite set of components is given.
- The states of the problem are defined in terms of sequences over the elements of C. The set of all possible sequences is denoted by S. The length of a sequence x, that is the number of components in the sequence, is expressed by .
- The finite set of constraints defines the set of feasible states , with .
- A cost is associated with each candidate solution .
- In some cases, a cost, or the estimation of a cost, , can be associated with states other than solutions. If can be obtained by adding solution components to a state , then . Note that .
4. Materials and Methods
4.1. Datasets
4.2. Algorithms
5. Results
5.1. Data Analysis
5.2. Model
5.3. Recommendations
- Students
- Less absenteeism.
- Based on their experience, teachers would call this an obvious recommendation, but results suggest that students should avoid missing classes in order to improve their results, as shown in Figure 9.
- Study languages.
- The results suggest that the study of language, in this case Portuguese, is a preponderant factor to achieve better results, as shown in Figure 18.
- Administrators
- Income and grade are related.
- Father’s age and grade are related.
- The results shown in Figure 12 are the kind of results that should be better understood. Administrators should look for conditions under which students’ performance should not be affected by factors external to school. The same can be said for the next four results.
- Mother’s age and grade are related.
- Idem.
- Profession’s father and grade are related.
- Idem.
- Profession’s mother and grade are related.
- Idem.
- Education’s father and grade are related.
- Idem.
- Causes of pass and fail.
- Identification of these causes is the desire of the main goals of projects like this, but the answers are not simple. A better approach, which this work expects to accomplish, is to offer on the fly suggestions for students in order to help them reach the pass condition with much higher probabilities.
- Educators
- Grades in all disciplines are related.
- At this level, it is common wisdom that students are more or less capable of equally handling most of the subjects. Thus, the result suggesting that good or bad results are independent of the subject, as shown in Figure 14, is not surprising. The main recommendation related to these results would be to observe students’ trends throughout the educational process.
- Grade and absenteeism are related.
- These results, as shown in Figure 10, suggest that absenteeism may have some interference with learning. Procedures to minimize or compensate absenteeism may help improve students’ performances.
- Study languages.
- The results shown in Figure 18 suggest that work in language (Portuguese in this case) may help students in any subject.
- Relatives
- Less absenteeism.
- Parents can have an important impact in preventing students’ absenteeism.
- Study languages.
- Reading programs with parents’ participation is recognized as an effective approach to help students develop the joy of learning.
6. Conclusions
Author Contributions
Conflicts of Interest
References
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Business Trends | Technology Trends |
---|---|
The shift to active learning | Artificial intelligence |
Change the definitions of schools and student’s success | Virtual/augmented reality |
Personalized learning | Digital assessment |
Analytics everywhere | Adaptive learning |
Privacy and trust | Digital ecosystems |
Business Trends | Technology Trends |
---|---|
Competency-based education | Open micro-credentials |
Reinventing credentials | Digital assessment |
Analytics everywhere | Predictive analysis |
Ranking | Adaptive learning |
Breaking boundaries | VR/AR comeback |
Revenue diversification | Hybrid integration platforms |
Increasing political intervention | Institutional video management |
Innovative learning spaces | Artificial intelligence |
Personalization | Listening and sensing technologies |
Student recruiting | Robotic telepresence |
Stakeholders | Needs | Drivers |
---|---|---|
Government | Quality education. Well-formed citizen. | Education policies, approval rate, evaluation results, public acceptance. |
Society | Well-formed citizen. Economically productive. | Job market, individual and collective desires, economy, technological trends. |
School Management | Well-formed citizen. Individual capable of performing professionally. Operational efficiency. | Regulatory policies and laws, market positioning, financial health, operational efficiency, learning, technological trends. |
Parents | Well-formed children. Children capable of achieve their goals. Feedback. Synergy with teachers. | Learning, communication, technological trends, child training, economics. |
Teachers | Reliable information. Learning process. Synergy with parents. Identify improvement points. | Learning, communication, technological trends, teaching methods. |
Students | Learn. Being engaged. Feel himself/herself as part of the process. | Learning, engagement, trends, communication. |
Educational Research and Practice | Computational Intelligence Task |
---|---|
Classify Students’ Profile | Classifiers |
Analysis and Visualization of Data | Data science |
Providing Feedback for Supporting Instructors | Association-rule |
Recommendations for Students | Sequential pattern mining |
Predicting Student’s Performance | Neural networks |
Student Modeling | Bayesian networks |
Detecting Undesirable Student Behaviors | Classifiers |
Grouping Students | Classifiers and clustering |
Social Network Analysis | Collaborative filtering |
Developing Concept Maps | Text mining |
Constructing Courseware | Existing learning resources |
Planning and Scheduling | Combinatorial optimization |
Driver | Objective |
---|---|
Good student performance | Improve the student success rate |
Characteristic | Value |
---|---|
Total of classroom | 20 |
Total of students by classroom | 28 |
Total of laboratory | 2 |
Total of computers in laboratory | 20 |
Total of computers with internet access | 20 |
Total of management departments | 16 |
Extra-curricular activities | Technology and entrepreneurship |
Age of infrastructure | 12 years |
Name | Description | Type | Category | Class |
---|---|---|---|---|
NLP | Portuguese language grade | Continuous | Target | |
FLP | Portuguese language absenteeism | Continuous | Target | |
NEF | Physical education grade | Continuous | Target | |
FEF | Physical education absenteeism | Continuous | Target | |
NAR | Arts grade | Continuous | Target | |
FAR | Arts absenteeism | Continuous | Target | |
NMA | Math grade | Continuous | Target | |
FMA | Math absenteeism | Continuous | Target | |
NCC | Science grade | Continuous | Target | |
FCC | Science absenteeism | Continuous | Target | |
NHI | History grade | Continuous | Target | |
FHI | History absenteeism | Continuous | Target | |
NGE | Geography grade | Continuous | Target | |
FGE | Geography absenteeism | Continuous | Target | |
NER | Religion grade | Continuous | Target | |
FER | Religion absenteeism | Continuous | Target | |
NES | Spanish language grade | Continuous | Target | |
FES | Spanish language absenteeism | Continuous | Target | |
NEN | English language grade | Continuous | Target | |
FEN | English language absenteeism | Continuous | Target | |
NTE | Technology grade | Continuous | Target | |
FTE | Technology absenteeism | Continuous | Target | |
FTT | Total of absenteeism | Continuous | Target | |
FPE | Percent of absenteeism | Categorical | Target | |
Status | Final situation | Categorical | Target | Approved, reproved |
MATRICULA | Internal identification | Continuous | Qualifier | |
TURMA | Internal division | Categorical | Qualifier | A,B,C |
SERIE | Division by content | Categorical | Qualifier | |
SEXO | Genre | Categorical | Qualifier | |
DATA_NASCIMENTO | Student’s date of birth | Categorical | Qualifier | |
IDADE_ALUNO | Student’s age | Continuous | Qualifier | |
BAIRRO | Neighborhood | Categorical | Qualifier | |
CIDADE | City | Categorical | Qualifier | |
ESTADO | State | Categorical | Qualifier | |
PAIS | Country | Categorical | Qualifier | |
CEP | Zip code | Categorical | Qualifier | |
DN | Father’s date of birth | Categorical | Qualifier | |
IDADE_PAI | Father’s age | Continuous | Qualifier | |
EDUCACAO_PAI | Father’s education | Categorical | Qualifier | |
PROFISSAO_PAI | Father’s profession | Categorical | Qualifier | |
DN1 | Mother’s date of birth | Categorical | Qualifier | |
IDADE_MAE | Mother’s age | Continuous | Qualifier | |
EDUCACAO_MAE | Mother’s education | Categorical | Qualifier | |
PROFISSAO_MAE | Mother’s profession | Categorical | Qualifier | |
RENDA_MEDIA_FAMILIA | Family’s income | Continuous | Qualifier | |
CATEGORIA_ALUNO | Internal division | Categorical | Qualifier | |
TURNO | Class period | Categorical | Qualifier | Matutino, Vespertino |
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Gomede, E.; Gaffo, F.H.; Briganó, G.U.; De Barros, R.M.; Mendes, L.D.S. Application of Computational Intelligence to Improve Education in Smart Cities. Sensors 2018, 18, 267. https://doi.org/10.3390/s18010267
Gomede E, Gaffo FH, Briganó GU, De Barros RM, Mendes LDS. Application of Computational Intelligence to Improve Education in Smart Cities. Sensors. 2018; 18(1):267. https://doi.org/10.3390/s18010267
Chicago/Turabian StyleGomede, Everton, Fernando Henrique Gaffo, Gabriel Ulian Briganó, Rodolfo Miranda De Barros, and Leonardo De Souza Mendes. 2018. "Application of Computational Intelligence to Improve Education in Smart Cities" Sensors 18, no. 1: 267. https://doi.org/10.3390/s18010267
APA StyleGomede, E., Gaffo, F. H., Briganó, G. U., De Barros, R. M., & Mendes, L. D. S. (2018). Application of Computational Intelligence to Improve Education in Smart Cities. Sensors, 18(1), 267. https://doi.org/10.3390/s18010267