
Included prompt template and lazy editing of chat gpt putting my notes together paper for rough draft to mark it first. Using Blocks of perspectives and skills.
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license: cc-by-nd-4.0 | |
Unrestricted Personality: Unwoke + Toxic : Research by TroyDoesAI | |
# The model responds to any request even immoral or unethical requests. | |
`Features TroyDoesAI's Unreleased Research on Tagging Model Perspectives ~ a unique approach to contextual understanding for LLM's ~ Research Paper Coming Soon` | |
- Knowledge Graph Training Dataset : The model first decides if it is [Unwoke] or [Toxic] when generating a knowledge graph in ```mermaid``` using `graph TB` to create the flow : This is based on TroyDoesAI Research on Knowledge Graphs as Pretraining Data. | |
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My Goal as an AI Researcher is to make smarter models, and sometimes alignment affects the models ability to be correct. | |
Further testing on reasoning domains is required as it appears the model makes its best attempt at any task provided without any restraint. | |
Best, TroyDoesAI | |
### Abstract | |
This paper presents a method for structuring training prompts in language models to enhance response relevance and contextual accuracy using the keyword `perspective`. This approach leverages `perspective` to guide the model in generating responses that reflect different viewpoints or interpretations of input queries. | |
### Introduction | |
Effective language models require precise mechanisms for generating contextually appropriate responses. The term `perspective` offers a multifaceted approach to frame responses, addressing both conceptual viewpoints and visual contexts. This research explores the use of `perspective` in prompt templates to direct model outputs according to specified contexts. | |
### Methodology | |
The proposed prompt template is: | |
``` | |
"perspective,input,output": "<s> [INST] [%perspective%] %input% [/INST] [/perspective]: %output%</s>" | |
``` | |
- **`[INST]` and `[/INST]`**: Wrap instructions for context. | |
- **`[%perspective%]`**: Placeholder for specifying the viewpoint or context. | |
- **`%input%`**: Represents the user's query. | |
- **`[/perspective]: %output%`**: Delineates the response section according to the given perspective. | |
### Definitions and Rationale | |
1. **Perspective** can refer to: | |
- **Viewpoint**: The angle or opinion from which something is considered. | |
- **Visible Scene**: The spatial or visual representation of a scene. | |
- **Spatial Representation**: In art, how objects are depicted to convey depth and distance. | |
By incorporating `perspective`, the model can frame responses to reflect various viewpoints, enhancing response relevance. | |
### Application | |
Incorporating `perspective` into training prompts ensures that responses are: | |
- **Contextually Relevant**: Aligning with the specified viewpoint. | |
- **Nuanced**: Addressing different angles and interpretations. | |
- **Consistent**: Providing uniform guidance for generating responses. | |
For example, querying "How does climate change affect coastal cities?" with a `perspective` keyword allows the model to generate responses from environmental, economic, or social viewpoints, thus enriching the answer's depth. | |
### Results and Benefits | |
Using `perspective` as a keyword in prompt templates leads to: | |
- Improved relevance and contextual accuracy of responses. | |
- Enhanced ability to address complex queries from multiple angles. | |
- Consistent response structure facilitating model training and application. | |
### Conclusion | |
Employing `perspective` in language model prompt templates effectively directs responses according to specified contexts, improving both relevance and clarity. This method provides a structured approach for generating nuanced and contextually accurate outputs. | |
### Keywords | |
Language model, perspective, prompt template, contextual accuracy, response relevance. | |