abhisheks008 / ML-Crate

ML-Crate stands as the ultimate hub for a multitude of exciting ML projects, serving as the go-to resource haven for passionate and dedicated ML enthusiasts!🌟💫 Devfolio URL, https://devfolio.co/projects/mlcrate-98f9
https://quine.sh/repo/abhisheks008-ML-Crate-409463050
MIT License
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Multi-Round Interpersonal Dialogues Text Data Analysis #651

Open abhisheks008 opened 2 weeks ago

abhisheks008 commented 2 weeks ago

ML-Crate Repository (Proposing new issue)

:red_circle: Project Title : Multi-Round Interpersonal Dialogues Text Data Analysis :red_circle: Aim : The aim is to analyze the dataset using machine learning methods. :red_circle: Dataset : https://www.kaggle.com/datasets/nexdatafrank/multi-round-interpersonal-dialogues-text-data :red_circle: Approach : Try to use 3-4 algorithms to implement the models and compare all the algorithms to find out the best fitted algorithm for the model by checking the accuracy scores. Also do not forget to do a exploratory data analysis before creating any model.


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:red_circle::yellow_circle: Points to Note :


:white_check_mark: To be Mentioned while taking the issue :


Happy Contributing 🚀

All the best. Enjoy your open source journey ahead. 😎

github-actions[bot] commented 2 weeks ago

Thank you for creating this issue! We'll look into it as soon as possible. Your contributions are highly appreciated! 😊

VanshGupta-2404 commented 1 week ago

Full name : Vansh Gupta GitHub Profile Link : https://github.com/VanshGupta-2404 Participant ID (If not, then put NA) : NA Approach for this Project :

To achieve the aim of the project, the following approach will be taken:

  1. Exploratory Data Analysis (EDA)

    • Data Overview: Inspect the structure, size, and type of the dataset.
    • Text Data Preprocessing: Clean the text data by removing unnecessary characters, handling missing values, and normalizing the text.
    • Data Visualization: Visualize the frequency of words, sentence lengths, and other textual features.
    • Statistical Analysis: Compute statistics like mean, median, and mode of textual features.
  2. Data Preprocessing and Feature Engineering

    • Tokenization: Split the text into individual words or tokens.
  3. Model Building

    • Naive Bayes Classifier: A simple probabilistic classifier based on Bayes' theorem.
    • Support Vector Machine (SVM): A powerful classifier that works well with text data.
    • Random Forest Classifier: An ensemble method that uses multiple decision trees.
    • Recurrent Neural Networks (RNN): Advanced deep learning models for sequential data, especially LSTM or GRU networks.
  4. Model Evaluation

    • Accuracy Score: Measure the proportion of correct predictions.

What is your participant role? (Mention the Open Source Program name. Eg. HRSoC, GSSoC, GSOC etc.): VSOC

abhisheks008 commented 1 week ago

One issue at a time @VanshGupta-2404