This version of the course guide is provisional until the period for editing the new course guides ends.

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Progress in the Social Aspects of Communication and Language

Code: 45536 ECTS Credits: 3
2025/2026
Degree Type Year
Trastornos de la Comunicación y del Lenguaje OP 1

Contact

Name:
Mario Figueroa González
Email:
mario.figueroa@uab.cat

Teachers

Paula Resina Curado

Teaching groups languages

You can view this information at the end of this document.


Prerequisites

There are no prerequisites.


Objectives and Contextualisation

To provide students with both theoretical and practical content that enables their qualification and specialization in the social aspects relevant to the development of language and communication.

 


Learning Outcomes

  1. CA19 (Competence) Work in teams in the field of social cognition and communication.
  2. CA20 (Competence) Make decisions and solve problems autonomously on social cognition skills in communication and language.
  3. KA16 (Knowledge) Acquire more in-depth knowledge of social cognition in communication and language
  4. SA26 (Skill) Intervene on the facilitators of social cognition skills for effective communication

Content

  1. Social Cognition
  2. Social Cognition and Language Skills
  3. Social Cognition and Language Skills: Atypical Development
  4. Maladaptive Behaviors and Communication
  5. Maladaptive Behaviors and Communication: Intervention

Activities and Methodology

Title Hours ECTS Learning Outcomes
Type: Directed      
Lecture, Debate, Problem-Based Learning through clinical case studies 15.75 0.63 CA19, CA20, KA16, CA19
Type: Supervised      
Tutorías 6 0.24 CA19, CA20, CA19
Type: Autonomous      
Writing assignments, preparing oral presentations, reading relevant articles and reports, and individual study. 50.75 2.03 CA19, CA20, SA26, CA19

The face-to-face sessions will combine master lectures by expert teachers and practical exercises where the students can put the exposed theory into practice and discuss it. Subsequently, the student will perform various assessment tasks in a non-face-to-face manner.

Annotation: Within the schedule set by the centre or degree programme, 15 minutes of one class will be reserved for students to evaluate their lecturers and their courses or modules through questionnaires.


Assessment

Continous Assessment Activities

Title Weighting Hours ECTS Learning Outcomes
EV1. Multiple choice exam 50 0 0 KA16
EV2. Project of an evidence-based intervention 20 1 0.04 CA19, CA20, SA26
EV3. Design an evidence-based intervention 30 1.5 0.06 CA19, CA20, SA26

EV1: Online multiple-choice exam (individual; 50% of the final grade). To be taken in Week 17.

EV2: Project of an evidence-based intervention (in group; 20% of the final grade). To be submitted in Week 11.

EV3: Design an evidence-based intervention (in group; 30% of the final grade). To be submitted in Week 18.

 

Attendance is mandatory (at least 75% of the sessions); therefore, failure to attend will mean that the course will not be passed, and the maximum grade will be 4.5.

 

 

Type of Feedback

Assessment (EV) and TypeWeek
Written – EV1 Week 18
Digital tool – EV2 and EV3 Weeks 12-13 and 19–20
In-class
Tutorial
 
Final Grade

The final grade for the course will be the weighted average of the scores obtained in each of the learning assessments.

 

Resits / Recovery

If the final grade for the module is below 5 (out of 10), students must resubmit the assessments that werenot passed (i.e., any learning evidence with a score below 5). The maximum grade that can be obtained after resubmission is 5 out of 10.

 

Definition of "Not Assessable"

Students who do not participate in any of the assessments, or who participate in several but the total weight of those assessments is less than 70% of the final grade, will receive the qualification "Not Assessable."

 

Synthesis Test

For students enrolled for the second or subsequent time, the same continuous assessment process will apply. Therefore, a single non-recoverable synthesis test is not foreseen.

 

Use of Artificial Intelligence (AI)

The use of AI technologies is permitted in this course exclusively for support tasks, such as literature or information searches, text correction, or translations. Students must clearly identify which parts were generated using AI, specify the tools used, and include a critical reflection on how these tools influenced the process and the final outcome of the activity. Lack of transparency in the use of AI in any assessed activity will be considered academic dishonesty and may result in partial or total penalties in the activity’s grade, or more severe penalties in serious cases.

 


Bibliography

Barkley, R. A. (2013). Defiant Children. Guilford Press.

Brignell, A., Chenausky, K. V., Song, H., Zhu, J., Suo, C., & Morgan, A. T. (2018). Communication interventions for autism spectrum disorder in minimally verbal children. The Cochrane database of systematic reviews11(11), CD012324. https://doi.org/10.1002/14651858.CD012324.pub2

Kazdin, A. E. (2005). Parent Management Training. Oxford University Press.

MorganG.CurtinM., & BottingN. (2021). The interplay between early social interaction, language and executive function development in deaf and hearing infantsInfant Behavior and Development64101591https://doi.org/10.1016/j.infbeh.2021.101591

Tomasello, M. (2003). Constructing a Language. Harvard University Press.

Tomasello, M. (2008). Origins of Human Communication. MIT Press.

Volkmar, F. R., Paul, R., Klin, A., & Cohen, D. (2005). Handbook of Autism and Pervasive Developmental Disorders. Wiley.

Wellman, H. M. (2014). Making Minds: How Theory of Mind Develops. Oxford University Press.


Software

Not applicable.


Groups and Languages

Please note that this information is provisional until 30 November 2025. You can check it through this link. To consult the language you will need to enter the CODE of the subject.

Name Group Language Semester Turn
(TEm) Theory (master) 1 Catalan/Spanish second semester afternoon