The Influence of Academic Emotions on Learning Effects: A Systematic Review
Abstract
:1. Introduction
1.1. Academic Emotions
1.2. Learning Effects
1.3. Facial Expressions
2. Materials and Methods
2.1. Literature Searches
2.2. Article Selection Criteria
2.3. Methodological Quality
3. Results
3.1. Study Selection
3.2. Characteristics of Included Articles
3.3. Research Findings
3.3.1. Intervention Research
Main Effect Test
Heterogeneity Test
3.3.2. Observational Research
4. Discussion
5. Strengths and Limitations
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Research (Authors, Publication Year, Methodological Quality, Location) | N | Experimental Group 1 | Experimental Group 2 | Control Group | Intervention Conditions | Facial Expression (Emotional Variable) (1) Tools (2) Mood | Relevant Indicators | Results |
---|---|---|---|---|---|---|---|---|
(1) Population (2) Age (3) LS (4) EA | (1) Population (2) Age (3) LS (4) EA | (1) Population (2) Age (3) LS (4) EA | ||||||
Junior school (10–15 years old) | ||||||||
Cheng et al. 2019 [52] 9/11 China (Taiwan) | 112 | (1) 54 (2) Seventh grade (3) Humunology (4) Web games | None | (1) 58 (2) Seventh grade (3) Words; Pictures; Videos (4) Web page | Does the teacher explain the relevant concepts? A game-based learning environment | (1) Emotion questionnaire (2) Positive/Negative Positive activation of emotions; Positive inactivation of emotions; Negative activation of emotions; Negative inactivation | Emotions; Before the test; After measuring 1; Back 2; Delay testing; Long-term learning memory; Learning effect | The experimental group was superior to the control group in the first and last two experiments. Students who experience positive academic emotions have better learning effects. The learning effect decreases over time. |
Shangguan et al. 2020 [53] 7/11 China | 223 | (1) 29M/50 (2) 13.90 ± 0.68 (3) Flash (4) Programs | (1) 79M/173 (2) 14.75 ± 0.75 (3) Flash (4) Programs | None | (1) VPBP, n = 45 (2) VPBN, n = 43 (3) VNBP, n = 45 (4) VNBN, n = 40 | (1) Positive Emotion Self-Report Scale (2) Positive enjoyment; Excited; Satisfied; Active; Interested; Relaxed | Emotions; Motivation; Cognitive load; Learning performance | Positive academic emotion can improve the learning effect and promote the motivation and cognitive load. |
High school (15–18 years old) | ||||||||
Beege et al. 2018 [54] 9/11 Germany | 162 | (1) NA (2) 16.49 ± 0.96 (3) Educational video (4) Learners’ emotions: Positive; Negative | (1) NA (2) 16.49 ± 0.96 (3) Educational video (4) Emotional load of educational videos: Positive; Negative | None | (1) Positive guidance and positive video (n = 32) (2) Positive guidance and neutral video (n = 51) (3) Neutral guidance and positive video (n = 40) (4) Neutral guidance and neutral video (n = 39) | (1) Self-assessment model (SAM) (2) Unlucky; Lucky | Emotions; Mental load (ML); Mental effort (ME); Learning effect | Academic emotions do not affect the learning effect, but promote the transfer, memory, and mental load in the learning process. |
College (20–32 years old) | ||||||||
Munchow and Bannert, 2019 [55] 8/11 Germany | 145 | (1) 65 (2) 20.20 ± 2.60 (3) Multimedia (4) Positive affective induction | (1) 80 (2) 20.20 ± 2.60 (3) Multimedia (4) Neutral affective induction | None | (1) PA (2) CG | (1) PANAS; SEK-27 scale (2) Positive; Negative | Emotional state; Prior knowledge; Emotional regulation; Learning effect | Adjusting learners’ emotions and positive academic emotions can improve the learning effect. |
Chung et al. 2019 [56] 5/11 China (Taiwan) | 115 | (1) 56 (2) College students (3) Ship energy-saving work results (4) Have a positive fuel-saving attitude | None | (1) 59 (2) College students (3) Ship energy saving work results (4) no Positive qualities | Push–pull mobile learning system developed by hybrid learning scheme; Diversified learning channels | (1) Positive Emotions Questionnaire (2) Positive Happy; Content; Confident; Optimistic | Emotions; Learning motivation; Achievement; Learning effect | The oil-saving accomplishment of the experimental group was better than that of the control group. Students in the experimental group had the highest frequency of confidence in positive emotional achievement. |
Guo et al. 2018 [2] 9/11 China | 20 | (1) NA (2) College students (3) Korean words (4) Image system (Learning stages 1, 2) | (1) NA (2) College students (3) Korean words (4) Image system (Learning stages 3, 4) | None | 4 different learning stages, alternating emotional image blocks | (1) Positive and Negative Emotion Scale (PANAS) (2) Positive; Neutral; Negative | Emotions; Accuracy; Reaction time | Negative emotional state leads to a decline in academic performance. With the passage of time, the learning effect is very significant, the correctness of learning will increase, and the real-time strategy will decrease. |
Strain et al. 2013 [57] 6/11 US | 38 | (1) 15M/38 (2) 21.80 ± 5.07 (3) Multimedia (4) Text-based problem | (1) 15M/38 (2) 21.80 ± 5.07 (3) Multimedia (4) Inference-based problem | (1) 15M/38 (2) 21.80 ± 5.07 (3) Multimedia (4) Controls respectively, | Whether there is stimulation of auditory heartbeat, static, false feedback | (1) Mood scale (2) Positive Arousal dimension: low arousal/sleepiness -high arousal/activity; Valence dimension: unpleasant-pleasant | Emotion, Metacognition, Performance | Erroneous biofeedback is an effective method to manipulate affective state and metacognitive judgment; it has a positive effect on learning performance and can promote metacognitive judgment. |
Silva et al. 2012 [58] 7/11 France | 63 | (1) 50 (2) 21.50 ± 3.47 (3) Vocabulary (4) Low-sensitivity group | (1) 50 (2) 21.50 ± 3.47 (3) Vocabulary (4) Highly sensitive group | None | Random appearance of neutral words; Aversive words; False words | (1) Emotional scale (2) Positive; Negative Arousal: Low--High | Emotions; Mean reaction time (RTS); Error rate (ERs) | The high-sensitivity group had an inhibitory effect on emotional value, while the negative emotional state had an overall inhibitory effect on new word learning. |
Graduate students (22–68 years old) | ||||||||
Marchand and Gutierrez, 2012 [59] 5/11 France | 185 | (1) 72 (2) 33.50 ± 9.97 (3) Introduction to research methods (4) Online | (1) 219 (2) 33.50 ± 9.97 (3) Introduction to research methods (4) Traditional | None | Different learning environments | (1) Achievement Emotion Questionnaire (AEQ) (2) Positive; Negative Hope; Anxiety; Anger; Frustration | Emotions; Self-efficacy; Learning strategy; Learning motivation | Negative academic emotions can improve learners’ performance, and anxiety can improve learning results. The influence of negative academic emotions on the use of learning strategies leads to the improvement of academic performance. |
Research (Authors, Publication Year, Methodological Quality, Location) | N | Experimental Group 1 | Experimental Group 2 | Control Group | Experimental Period | Facial Expression (Emotional Variable) (1) Tools (2) Mood | Relevant Indicators | Results |
---|---|---|---|---|---|---|---|---|
(1) Population (2) Age (3) LS (4) EA | (1)Population (2) Age (3) LS (4) EA | (1) Population (2) Age (3) LS (4) EA | ||||||
Primary school students (12 years old) | ||||||||
Manty et al. 2020 [60] 8/12 Finland | 37 | (1) 37 (2) Grade six (3) Collaborative physics task (4) None | None | None | None | (1) Mood scale (2) Positive; Negative; Mixed; Neutral | Social emotional interaction; Emotion regulation | Negative emotional experience increased the emotional regulation in group cooperation, and negative interaction affected students’ emotional experience after the task. The emotional valence does not change immediately. |
High school; College (15–26 years old) | ||||||||
Taub et al. 2019 [36] 11/12 Canada | 61 | (1) 61 (2) 20.00 ± 1.50 (3) Microbiology (4) Game | None | None | 69.40 ± 21.70 (min) | (1) FACET (2) Happy; Frustrated; Confused | Emotions; Emotional duration; Game score; Back; Operation results | The feelings experienced after positive action are different from those experienced after negative action. After the occurrence of negative events, confusion is obviously different, but it does not affect happiness or depression. The degree of confusion after active action can accurately predict the total score of the game. |
Ahn and Harley, 2020 [37] 8/12 France | 33 | (1) NA (2) 20.00 ± 1.64 (3) History apps (4) Multimedia Applications | None | (1) NA (2) 20.00 ± 1.64 (3) Crystal island (4) Game | 30 min | (1) FaceReader 7; Self-report questionnaire (2) Sadness; Happiness; Anger; Anxiety; Fear | Facial expressions; Dominant emotions; AOIS; Note; Learning gain | Negative academic emotions can improve the learning effect, and angry learners have the highest learning effect. |
Saito et al. 2018 [35] 6/12 Britain | 108 | (1) 108 (2) High school (3) English (4) Answer the questions in each stage | None | None | Three semesters | (1) Mood scale (2) Happiness; Anxiety | Emotions; Motivation | Strong internalized motivations evoke a variety of emotions (anxiety, happiness). More frequent use of materials with positive emotions has a direct impact on acquisition, and anxiety can improve learning effects. |
Ben-Eliyahu and Linnenbrink-Garcia, 2015 [38] 8/12 US | 458 | (1) NA (2) High school; College (3) Hobby classes (4) Written; Online surveys | None | None | None | (1) Mood scale (2) Positive; negative | Cognitive regulation; Emotional regulation; Cognitive focus; Achievement; Re-evaluate | Higher levels of self-regulation; Students used “reassessment” more often than their least favorite subject; Emotions, behaviors, and cognitive regulation are related to learning strategies, but not closely related to academic performance. |
Outcome Variable | k | N | p | d | 95%CI |
---|---|---|---|---|---|
learning performance | 81 | 5708 | <0.00001 | 0.55 | [0.40,0.69] |
academic emotion | 54 | 3654 | 0.03 | 0.14 | [0.01,0.27] |
Outcome Variable | Tests for Heterogeneity | ||||
---|---|---|---|---|---|
Q | df (Q) | p | I2 | Tau2 | |
Learning performance | 524.68 | 80 | <0.00001 | 85 | 0.36 |
Academic emotion | 172.78 | 53 | <0.00001 | 69 | 0.15 |
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Tan, J.; Mao, J.; Jiang, Y.; Gao, M. The Influence of Academic Emotions on Learning Effects: A Systematic Review. Int. J. Environ. Res. Public Health 2021, 18, 9678. https://doi.org/10.3390/ijerph18189678
Tan J, Mao J, Jiang Y, Gao M. The Influence of Academic Emotions on Learning Effects: A Systematic Review. International Journal of Environmental Research and Public Health. 2021; 18(18):9678. https://doi.org/10.3390/ijerph18189678
Chicago/Turabian StyleTan, Jing, Jie Mao, Yizhang Jiang, and Ming Gao. 2021. "The Influence of Academic Emotions on Learning Effects: A Systematic Review" International Journal of Environmental Research and Public Health 18, no. 18: 9678. https://doi.org/10.3390/ijerph18189678
APA StyleTan, J., Mao, J., Jiang, Y., & Gao, M. (2021). The Influence of Academic Emotions on Learning Effects: A Systematic Review. International Journal of Environmental Research and Public Health, 18(18), 9678. https://doi.org/10.3390/ijerph18189678