ANLP_WS24_CA1/README.md

120 lines
3.4 KiB
Markdown
Raw Permalink Normal View History

2024-11-19 14:42:25 +01:00
# ANLP_WS24_CA1
2024-11-08 10:04:58 +01:00
# Master MDS
2024-11-20 11:52:27 +01:00
Use NLP techniques you learned so far (N-gram models, basic machine learning, no neural nets) to analyse texts or to build an application. Document
2024-11-19 14:42:25 +01:00
your approach.
# Data Source
2024-11-20 11:52:27 +01:00
https://github.com/taivop/joke-dataset/tree/master
| File | Jokes | Tokens |
|--------------------|------------|-------------|
| reddit_jokes.json | 195K jokes | 7.40M tokens|
| stupidstuff.json | 3.77K jokes| 396K tokens |
| wocka.json | 10.0K jokes| 1.11M tokens|
| __TOTAL__ | __208K jokes__ | __8.91M tokens__|
## *.csv Files
- created with: token_normal.ipynb
- done:
- Tokenization
- Stopword removed
- lower case
- consist solely of alphabetic characters
- Lemmatization
# Process
- Tokenization
- (Normalization)
- Feature Extraction
- Feature analysis
- Prediction
# Features
- N Grams
- (paper: Computationally recognizing wordplay in jokes)
- structual patterns
- (paper: Centric Features)
- Questions -> Answer
- Oneliner
- Wordplay
- Dialog
- Knock-Knock Jokes
- embeddings
- length
- punctuation
# TODOS:
- 1. __Feature extraction and correlation__
- 1a: Structual pattern
- maybe 2 people?
- look at structual_pattern.ipynb
- data: structual pattern -> Sentencization
- Paper Research on strucutal patterns
- 1b: extented length analysis
- small task
- look at token_normal.ipynb
- distribution normalization
- Paper Research on strucutal patterns
- ggf. Bericht Inhaltsverzeichnis,...
- 1c: N-Grams
- data: csv files
- 1d: Embeddings
- data: csv files
- word2vec? (paper: Centric Features)
- 2. Machine Learning / logistic regression
- (coming soon...)
2024-11-20 11:52:27 +01:00
# Topic presentations (graded) (5 min)
## Focus:
- What is your overall idea?
- What kind of data will you use and where do you get the data?
- Your approach, which techniques will you use?
- Expected results.
## Open Questions:
- How to evaluate similarity?
- How to find structural patterns? (like phrases, setups, punchlines, or wordplay)
## Possible Hypothesis:
- Similar jokes share more common n-grams, phrases, or structural patterns.
- Basic features like word frequency, sentiment, length, or punctuation can predict joke ratings.
other ideas:
- The length of a joke (measured in words or characters) is inversely correlated with its average rating, as shortness may enhance comedic impact.
- Highly rated jokes follow certain structural patterns (e.g., setups, punchlines, or wordplay).
## Possible Tools / Techniques
- __Text Preprocessing:__ Tokenization, stopword removal, stemming/lemmatization.
- __Feature Extraction:__ Bag-of-Words, n-grams (bigram/trigram analysis), TF-IDF.
2024-11-20 23:20:17 +01:00
- __Similarity:__ Cosine similarity for finding similar jokes.
## Research
### Humor Detection
Humor Detection: A Transformer Gets the Last Laugh
- https://arxiv.org/abs/1909.00252
Computationally recognizing wordplay in jokes (N - Grams)
- https://www.researchgate.net/publication/229000046_Computationally_recognizing_wordplay_in_jokes
Word2Vec combined with K-NN Human
Centric Features
- https://www.researchgate.net/publication/301446045_Humor_Recognition_and_Humor_Anchor_Extraction