lineID
stringlengths
3
7
characterID
stringlengths
2
5
movieID
stringlengths
2
4
characterName
stringlengths
1
52
utterance
stringlengths
1
3.05k
L1045
u0
m0
BIANCA
They do not!
L1044
u2
m0
CAMERON
They do to!
L985
u0
m0
BIANCA
I hope so.
L984
u2
m0
CAMERON
She okay?
L925
u0
m0
BIANCA
Let's go.
L924
u2
m0
CAMERON
Wow
L872
u0
m0
BIANCA
Okay -- you're gonna need to learn how to lie.
L871
u2
m0
CAMERON
No
L870
u0
m0
BIANCA
I'm kidding. You know how sometimes you just become this "persona"? And you don't know how to quit?
L869
u0
m0
BIANCA
Like my fear of wearing pastels?
L868
u2
m0
CAMERON
The "real you".
L867
u0
m0
BIANCA
What good stuff?
L866
u2
m0
CAMERON
I figured you'd get to the good stuff eventually.
L865
u2
m0
CAMERON
Thank God! If I had to hear one more story about your coiffure...
L864
u0
m0
BIANCA
Me. This endless ...blonde babble. I'm like, boring myself.
L863
u2
m0
CAMERON
What crap?
L862
u0
m0
BIANCA
do you listen to this crap?
L861
u2
m0
CAMERON
No...
L860
u0
m0
BIANCA
Then Guillermo says, "If you go any lighter, you're gonna look like an extra on 90210."
L699
u2
m0
CAMERON
You always been this selfish?
L698
u0
m0
BIANCA
But
L697
u2
m0
CAMERON
Then that's all you had to say.
L696
u0
m0
BIANCA
Well, no...
L695
u2
m0
CAMERON
You never wanted to go out with 'me, did you?
L694
u0
m0
BIANCA
I was?
L693
u2
m0
CAMERON
I looked for you back at the party, but you always seemed to be "occupied".
L663
u0
m0
BIANCA
Tons
L662
u2
m0
CAMERON
Have fun tonight?
L578
u2
m0
CAMERON
I believe we share an art instructor
L577
u0
m0
BIANCA
You know Chastity?
L576
u2
m0
CAMERON
Looks like things worked out tonight, huh?
L575
u0
m0
BIANCA
Hi.
L407
u0
m0
BIANCA
Who knows? All I've ever heard her say is that she'd dip before dating a guy that smokes.
L406
u2
m0
CAMERON
So that's the kind of guy she likes? Pretty ones?
L405
u0
m0
BIANCA
Lesbian? No. I found a picture of Jared Leto in one of her drawers, so I'm pretty sure she's not harboring same-sex tendencies.
L404
u2
m0
CAMERON
She's not a...
L403
u2
m0
CAMERON
I'm workin' on it. But she doesn't seem to be goin' for him.
L402
u0
m0
BIANCA
I really, really, really wanna go, but I can't. Not unless my sister goes.
L401
u2
m0
CAMERON
Sure have.
L368
u0
m0
BIANCA
Eber's Deep Conditioner every two days. And I never, ever use a blowdryer without the diffuser attachment.
L367
u2
m0
CAMERON
How do you get your hair to look like that?
L366
u0
m0
BIANCA
You're sweet.
L365
u2
m0
CAMERON
You have my word. As a gentleman
L364
u0
m0
BIANCA
I counted on you to help my cause. You and that thug are obviously failing. Aren't we ever going on our date?
L363
u2
m0
CAMERON
You got something on your mind?
L281
u0
m0
BIANCA
Where?
L280
u2
m0
CAMERON
There.
L277
u2
m0
CAMERON
Well, there's someone I think might be --
L276
u0
m0
BIANCA
How is our little Find the Wench A Date plan progressing?
L275
u0
m0
BIANCA
Forget French.
L274
u2
m0
CAMERON
That's because it's such a nice one.
L273
u0
m0
BIANCA
I don't want to know how to say that though. I want to know useful things. Like where the good stores are. How much does champagne cost? Stuff like Chat. I have never in my life had to point out my head to someone.
L272
u2
m0
CAMERON
Right. See? You're ready for the quiz.
L271
u0
m0
BIANCA
C'esc ma tete. This is my head
L208
u2
m0
CAMERON
Let me see what I can do.
L207
u0
m0
BIANCA
Gosh, if only we could find Kat a boyfriend...
L206
u2
m0
CAMERON
That's a shame.
L205
u0
m0
BIANCA
Unsolved mystery. She used to be really popular when she started high school, then it was just like she got sick of it or something.
L204
u2
m0
CAMERON
Why?
L203
u2
m0
CAMERON
Seems like she could get a date easy enough...
L202
u0
m0
BIANCA
The thing is, Cameron -- I'm at the mercy of a particularly hideous breed of loser. My sister. I can't date until she does.
L201
u2
m0
CAMERON
Cameron.
L200
u0
m0
BIANCA
No, no, it's my fault -- we didn't have a proper introduction ---
L199
u2
m0
CAMERON
Forget it.
L198
u0
m0
BIANCA
You're asking me out. That's so cute. What's your name again?
L197
u2
m0
CAMERON
Okay... then how 'bout we try out some French cuisine. Saturday? Night?
L196
u0
m0
BIANCA
Not the hacking and gagging and spitting part. Please.
L195
u2
m0
CAMERON
Well, I thought we'd start with pronunciation, if that's okay with you.
L194
u0
m0
BIANCA
Can we make this quick? Roxanne Korrine and Andrew Barrett are having an incredibly horrendous public break- up on the quad. Again.
L953
u0
m0
BIANCA
I did.
L952
u3
m0
CHASTITY
You think you ' re the only sophomore at the prom?
L660
u3
m0
CHASTITY
I don't have to be home 'til two.
L659
u0
m0
BIANCA
I have to be home in twenty minutes.
L600
u3
m0
CHASTITY
All I know is -- I'd give up my private line to go out with a guy like Joey.
L599
u0
m0
BIANCA
Sometimes I wonder if the guys we're supposed to want to go out with are the ones we actually want to go out with, you know?
L598
u3
m0
CHASTITY
Bianca, I don't think the highlights of dating Joey Dorsey are going to include door-opening and coat-holding.
L597
u0
m0
BIANCA
Combination. I don't know -- I thought he'd be different. More of a gentleman...
L596
u3
m0
CHASTITY
Is he oily or dry?
L595
u0
m0
BIANCA
He practically proposed when he found out we had the same dermatologist. I mean. Dr. Bonchowski is great an all, but he's not exactly relevant party conversation.
L580
u0
m0
BIANCA
Would you mind getting me a drink, Cameron?
L579
u3
m0
CHASTITY
Great
L573
u0
m0
BIANCA
Joey.
L572
u3
m0
CHASTITY
Who?
L571
u0
m0
BIANCA
Where did he go? He was just here.
L51
u0
m0
BIANCA
You might wanna think about it
L50
u3
m0
CHASTITY
No.
L49
u0
m0
BIANCA
Did you change your hair?
L760
u0
m0
BIANCA
You know the deal. I can ' t go if Kat doesn't go --
L759
u4
m0
JOEY
Listen, I want to talk to you about the prom.
L758
u4
m0
JOEY
You're concentrating awfully hard considering it's gym class.
L757
u0
m0
BIANCA
Hi, Joey.
L756
u4
m0
JOEY
Hey, sweet cheeks.
L593
u4
m0
JOEY
My agent says I've got a good shot at being the Prada guy next year.
L592
u0
m0
BIANCA
Neat...
L591
u4
m0
JOEY
It's a gay cruise line, but I'll be, like, wearing a uniform and stuff.
L590
u0
m0
BIANCA
Queen Harry?
L589
u4
m0
JOEY
So yeah, I've got the Sears catalog thing going -- and the tube sock gig " that's gonna be huge. And then I'm up for an ad for Queen Harry next week.
L397
u0
m0
BIANCA
Hopefully.
L396
u4
m0
JOEY
Exactly So, you going to Bogey Lowenbrau's thing on Saturday?
L395
u0
m0
BIANCA
Expensive?

Cornell Movie-Dialogs Corpus

Distributed together with:

"Chameleons in imagined conversations: A new approach to understanding coordination of linguistic style in dialogs" Cristian Danescu-Niculescu-Mizil and Lillian Lee Proceedings of the Workshop on Cognitive Modeling and Computational Linguistics, ACL 2011.

(this paper is included in this zip file)

NOTE: If you have results to report on these corpora, please send email to [email protected] or [email protected] so we can add you to our list of people using this data. Thanks!

Contents of this README:

A) Brief description
B) Files description
C) Details on the collection procedure
D) Contact

A) Brief description:

This corpus contains a metadata-rich collection of fictional conversations extracted from raw movie scripts:

  • 220,579 conversational exchanges between 10,292 pairs of movie characters
  • involves 9,035 characters from 617 movies
  • in total 304,713 utterances
  • movie metadata included:
    • genres
    • release year
    • IMDB rating
    • number of IMDB votes
    • IMDB rating
  • character metadata included:
    • gender (for 3,774 characters)
    • position on movie credits (3,321 characters)

B) Files description:

In all files the field separator is " +++$+++ "

  • movie_titles_metadata.txt

    • contains information about each movie title
    • fields:
      • movieID,
      • movie title,
      • movie year,
        • IMDB rating,
      • no. IMDB votes,
      • genres in the format ['genre1','genre2',�,'genreN']
  • movie_characters_metadata.txt

    • contains information about each movie character
    • fields:
      • characterID
      • character name
      • movieID
      • movie title
      • gender ("?" for unlabeled cases)
      • position in credits ("?" for unlabeled cases)
  • movie_lines.txt

    • contains the actual text of each utterance
    • fields:
      • lineID
      • characterID (who uttered this phrase)
      • movieID
      • character name
      • text of the utterance
  • movie_conversations.txt

    • the structure of the conversations
    • fields
      • characterID of the first character involved in the conversation
      • characterID of the second character involved in the conversation
      • movieID of the movie in which the conversation occurred
      • list of the utterances that make the conversation, in chronological order: ['lineID1','lineID2',�,'lineIDN'] has to be matched with movie_lines.txt to reconstruct the actual content
  • raw_script_urls.txt

    • the urls from which the raw sources were retrieved

C) Details on the collection procedure:

We started from raw publicly available movie scripts (sources acknowledged in raw_script_urls.txt). In order to collect the metadata necessary for this study and to distinguish between two script versions of the same movie, we automatically matched each script with an entry in movie database provided by IMDB (The Internet Movie Database; data interfaces available at http://www.imdb.com/interfaces). Some amount of manual correction was also involved. When more than one movie with the same title was found in IMBD, the match was made with the most popular title (the one that received most IMDB votes)

After discarding all movies that could not be matched or that had less than 5 IMDB votes, we were left with 617 unique titles with metadata including genre, release year, IMDB rating and no. of IMDB votes and cast distribution. We then identified the pairs of characters that interact and separated their conversations automatically using simple data processing heuristics. After discarding all pairs that exchanged less than 5 conversational exchanges there were 10,292 left, exchanging 220,579 conversational exchanges (304,713 utterances). After automatically matching the names of the 9,035 involved characters to the list of cast distribution, we used the gender of each interpreting actor to infer the fictional gender of a subset of 3,321 movie characters (we raised the number of gendered 3,774 characters through manual annotation). Similarly, we collected the end credit position of a subset of 3,321 characters as a proxy for their status.

D) Contact:

Please email any questions to: [email protected] (Cristian Danescu-Niculescu-Mizil)

Downloads last month
125
Edit dataset card