Applying Natural Language Processing Adaptive Dialogs to Promote Knowledge Integration During Instruction
Abstract
:1. Introduction
- (1)
- How does consistent engagement in the NLP dialog compare to inconsistent engagement in influencing students’ KI scores across instruction?
- (2)
- How does the NLP adaptive dialog help students strengthen their integrated understanding of photosynthesis across instruction?
- (3)
- How does the NLP adaptive dialog support students to integrate ideas about photosynthesis across instruction?
- (4)
- How do the two rounds of guidance within the NLP dialog help students integrate their ideas?
2. Literature Review
2.1. Knowledge Integration Framework
2.2. NLP and Knowledge Integration Framework
2.3. Designing Automated Guidance in KI Framework
3. Curriculum Design
4. Methods
4.1. Participants
4.2. NLP Models
4.3. Guidance Design in the NLP Dialog
5. Data Preprocessing and Analysis
5.1. Data Preprocessing
5.2. Data Analysis
6. Results
6.1. How Did the NLP Dialog Engagement Affect Student Learning?
6.2. How Did the NLP Dialog Strengthen KI Scores Along with Instruction?
6.3. How Did the NLP Dialog Elicit Ideas Along with Instruction?
6.4. How Did the Two Rounds of Guidance Work in the NLP Dialog?
6.4.1. Round 1: Adaptive Guidance
6.4.2. Round 2: Generic Reflection Guidance
7. Discussion
8. Limitations
9. Conclusions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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KI | Description | Ideas and Descriptions | Adaptive Guidance |
---|---|---|---|
1 | Irrelevant/off-topic | Off topic ideas (e.g., I don’t know.) | Can you tell me more about this idea or another one in your explanation? I am still learning about student ideas to become a better thought partner. |
2 | No link Incomplete/vague/inaccurate ideas | 4-EngCreate: Energy is created not transformed/transferred (e.g., chemical energy is created by plants) | Cannot be accurately detected. |
5-Eng2Mat: Plants transform (convert/change/turn) light energy into glucose/sugar/food OR turn/transform glucose into energy | Cannot be accurately detected. | ||
11-AnimDirUse: Animals directly use the Sun’s energy for vitamins and keeping warm | Interesting idea! Can animals live without sunlight? How does the animal use energy from the sun? | ||
12-AnimFood: Animals eat plants [focused on animals eat plants as food and NOT about energy such as sun grows plants which are energy source for animals] | Interesting idea! How do plants and animals use energy from the sun differently? | ||
3 | Partial link Accurate idea(s), but isolated (conclusion only, explanation/evidence only) | 1-PhotoRec: CO2, H2O or both as reactants of photosynthesis | Nice thinking. You mentioned the inputs of photosynthesis. What are the outputs of this process? |
2-PhotoProd: glucose [or sugar or food] or oxygen as a product | Interesting idea about sugar as a product in this process. How are the products of photosynthesis useful for animals? | ||
3-Photo: plant uses energy from the sun to do photosynthesis | Nice thinking of photosynthesis. How are the products of photosynthesis useful for animals? | ||
3a-PhotoChem: Energy from the sun transforms into another type of energy [kinetic/chemical/usable] during photosynthesis | Interesting idea about how plants transform light energy to usable energy. How does the energy get to animals? | ||
6a-PltStore: Plants store energy in glucose | Cannot be accurately detected. | ||
6-PltCellResp: Plant releases energy from glucose/food for: growth, energy, repair, seed production | Cannot be accurately detected. | ||
8-EngTrans: Energy from the sun gets to animals when they eat plants | Nice thinking! You talked about energy transfer. Can you tell me more about how animals use the energy? | ||
9-AnimCellResp: Animal uses cellular respiration to release energy | Nice thinking! Can you tell me more about how the animal release the energy they get from the plant? | ||
10-AnimGrw: Animal uses glucose/food for energy, repair, growth, to move | Cannot be accurately detected. | ||
4 | Single link: One scientifically complete and valid connection between ideas in KI level 3 | ||
5 | Multiple links: Two or more scientifically complete and valid connections between ideas in KI level 3 |
Activity | Total N | Participated N 1 | Completed N 2 | Completed at All Three Time Points |
---|---|---|---|---|
Pre-test dialog | 162 | 146 | 134 | 79 |
Pre-test revision | 162 | 162 | 162 | |
Midpoint test dialog | 162 | 131 | 129 | |
Midpoint test revision | 162 | 162 | 160 | |
Post-test dialog | 162 | 116 | 116 | |
Post-test revision | 162 | 162 | 159 |
Guidance Is Assigned for | Before Instruction | During Instruction | After Instruction |
---|---|---|---|
Priority 1: Interesting idea! Can animals live without sunlight? How does the animal use energy from the sun? (Prompt 11, for idea 11-AnimDirUse) | 7 | 9 | 8 |
Priority 2: Interesting idea! How do plants and animals use energy from the sun differently? (Prompt 12, for idea 12-AnimFood) 1 | 16 | 9 | 14 |
Priority 3: Nice thinking! Can you tell me more about how animals release the energy they get from the plant? (Prompt 9, for idea 9-AnimCellResp) | 2 | 10 | 13 |
Priority 4: Nice thinking! You talked about energy transfer. Can you tell me more about how animals use the energy? (Prompt 8, for idea 8-EngTrans) | 35 | 25 | 20 |
Priority 5: Interesting idea about how plants transform the light energy to the energy they can use. How does the energy get to animals? (Prompt 3a, for idea 3a-PhotoChem) | 1 | 3 | 3 |
Priority 6: Nice thinking of photosynthesis. Why are the products of photosynthesis useful for animals? (Prompt 3, for idea 3-Photo) | 0 | 3 | 2 |
Priority 7: Can you tell me more about this idea or another one in your explanation? I am still learning about student ideas to become a better thought partner. (Prompt Non, for Non-scorable ideas) | 3 | 4 | 3 |
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Li, W. Applying Natural Language Processing Adaptive Dialogs to Promote Knowledge Integration During Instruction. Educ. Sci. 2025, 15, 207. https://doi.org/10.3390/educsci15020207
Li W. Applying Natural Language Processing Adaptive Dialogs to Promote Knowledge Integration During Instruction. Education Sciences. 2025; 15(2):207. https://doi.org/10.3390/educsci15020207
Chicago/Turabian StyleLi, Weiying. 2025. "Applying Natural Language Processing Adaptive Dialogs to Promote Knowledge Integration During Instruction" Education Sciences 15, no. 2: 207. https://doi.org/10.3390/educsci15020207
APA StyleLi, W. (2025). Applying Natural Language Processing Adaptive Dialogs to Promote Knowledge Integration During Instruction. Education Sciences, 15(2), 207. https://doi.org/10.3390/educsci15020207