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--- |
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license: cc-by-4.0 |
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task_categories: |
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- text-classification |
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tags: |
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- screenplay |
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- narrative |
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- salience |
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- linguistics |
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language: |
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- en |
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size_categories: |
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- 100K<n<1M |
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--- |
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# Screenplay Scene Salience Features |
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Pre-extracted linguistic and narrative features for screenplay scene salience detection from the MENSA dataset. |
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## Dataset Description |
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This dataset contains **913 linguistic features** extracted from movie screenplays in the MENSA dataset. Features are organized into **24 feature groups** covering various aspects of linguistic, narrative, and discourse analysis. |
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### Dataset Statistics |
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| Split | Samples | Size | |
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|-------|---------|------| |
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| Train | 117,503 | 172.9 MB | |
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| Validation | 8,052 | 16.1 MB | |
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| Test | 8,156 | 16.1 MB | |
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| **Total** | **133,711** | **140.1 MB** | |
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### Feature Groups (24 groups) |
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- `base` |
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- `bert_surprisal` |
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- `character_arcs` |
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- `emotional` |
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- `gc_academic` |
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- `gc_basic` |
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- `gc_char_diversity` |
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- `gc_concreteness` |
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- `gc_dialogue` |
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- `gc_discourse` |
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- `gc_narrative` |
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- `gc_polarity` |
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- `gc_pos` |
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- `gc_pronouns` |
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- `gc_punctuation` |
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- `gc_readability` |
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- `gc_syntax` |
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- `gc_temporal` |
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- `ngram` |
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- `ngram_surprisal` |
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- `plot_shifts` |
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- `rst` |
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- `structure` |
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- `surprisal` |
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## Usage |
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### Option 1: Load with Hugging Face datasets (Recommended) |
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```python |
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from datasets import load_dataset |
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# Load a single feature group |
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ds = load_dataset("Ishaank18/screenplay-features", data_files="train/base.parquet") |
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df = ds['train'].to_pandas() |
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# Load multiple groups for training |
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ds = load_dataset("Ishaank18/screenplay-features", |
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data_files={ |
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"train": ["train/base.parquet", "train/gc_polarity.parquet", "train/emotional.parquet"] |
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}) |
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df = ds['train'].to_pandas() |
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# Load all splits for evaluation |
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ds = load_dataset("Ishaank18/screenplay-features", |
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data_files={ |
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"train": "train/gc_polarity.parquet", |
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"validation": "validation/gc_polarity.parquet", |
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"test": "test/gc_polarity.parquet" |
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}) |
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``` |
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### Option 2: Load with pandas directly |
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```python |
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import pandas as pd |
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# From HuggingFace URL |
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df = pd.read_parquet("hf://datasets/Ishaank18/screenplay-features/train/base.parquet") |
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# Or if you have the repo cloned locally |
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df = pd.read_parquet("train/base.parquet") |
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``` |
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### Option 3: Use custom loader (Easiest) |
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```python |
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from feature_cache.load_hf import load_groups |
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# Load features and labels |
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X, y = load_groups( |
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groups=["base", "gc_polarity", "emotional", "rst"], |
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split="train", |
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hf_repo="Ishaank18/screenplay-features" |
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) |
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# Load features only (no labels) |
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X = load_groups( |
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groups=["base", "gc_polarity"], |
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split="test", |
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include_label=False, |
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hf_repo="Ishaank18/screenplay-features" |
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) |
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``` |
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## Data Structure |
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Each parquet file contains: |
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- **`movie_id`** (string): Unique movie identifier |
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- **`scene_index`** (int): Scene index within the movie (0-indexed) |
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- **`label`** (int): Salience label |
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- `0` = Non-salient scene |
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- `1` = Salient scene |
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- **Feature columns**: Various linguistic/narrative features (float/int) |
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### Example row structure: |
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| movie_id | scene_index | label | feature_1 | feature_2 | ... | |
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|----------|-------------|-------|-----------|-----------|-----| |
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| tt0111161 | 42 | 1 | 0.85 | 12.3 | ... | |
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## Feature Categories |
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The features are organized into the following categories: |
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### Base Features |
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- Basic linguistic statistics (token count, sentence count, etc.) |
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- Structural position features (act, scene positions) |
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### GenreClassifier (GC) Features |
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- **gc_basic**: Basic linguistic metrics |
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- **gc_char_diversity**: Character diversity metrics |
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- **gc_concreteness**: Concreteness scores |
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- **gc_dialogue**: Dialogue-specific features |
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- **gc_discourse**: Discourse markers and connectives |
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- **gc_narrative**: Narrative structure features |
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- **gc_polarity**: Sentiment polarity scores |
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- **gc_pos**: Part-of-speech distributions |
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- **gc_pronouns**: Pronoun usage patterns |
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- **gc_punctuation**: Punctuation statistics |
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- **gc_readability**: Readability metrics |
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- **gc_syntax**: Syntactic complexity features |
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- **gc_temporal**: Temporal expressions |
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### Narrative Features |
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- **character_arcs**: Character development metrics |
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- **plot_shifts**: Plot progression indicators |
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- **structure**: Narrative structure features |
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- **emotional**: Emotional arc features |
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### Linguistic Features |
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- **ngram**: N-gram diversity metrics |
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- **rst**: Rhetorical Structure Theory features |
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- **bert_surprisal**: BERT-based surprisal scores |
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- **ngram_surprisal**: N-gram-based surprisal |
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