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Large Movie Review Dataset v1.0 |
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Overview |
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This dataset contains movie reviews along with their associated binary |
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sentiment polarity labels. It is intended to serve as a benchmark for |
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sentiment classification. This document outlines how the dataset was |
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gathered, and how to use the files provided. |
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Dataset |
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The core dataset contains 50,000 reviews split evenly into 25k train |
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and 25k test sets. The overall distribution of labels is balanced (25k |
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pos and 25k neg). We also include an additional 50,000 unlabeled |
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documents for unsupervised learning. |
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In the entire collection, no more than 30 reviews are allowed for any |
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given movie because reviews for the same movie tend to have correlated |
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ratings. Further, the train and test sets contain a disjoint set of |
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movies, so no significant performance is obtained by memorizing |
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movie-unique terms and their associated with observed labels. In the |
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labeled train/test sets, a negative review has a score <= 4 out of 10, |
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and a positive review has a score >= 7 out of 10. Thus reviews with |
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more neutral ratings are not included in the train/test sets. In the |
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unsupervised set, reviews of any rating are included and there are an |
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even number of reviews > 5 and <= 5. |
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Files |
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There are two top-level directories [train/, test/] corresponding to |
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the training and test sets. Each contains [pos/, neg/] directories for |
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the reviews with binary labels positive and negative. Within these |
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directories, reviews are stored in text files named following the |
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convention [[id]_[rating].txt] where [id] is a unique id and [rating] is |
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the star rating for that review on a 1-10 scale. For example, the file |
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[test/pos/200_8.txt] is the text for a positive-labeled test set |
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example with unique id 200 and star rating 8/10 from IMDb. The |
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[train/unsup/] directory has 0 for all ratings because the ratings are |
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omitted for this portion of the dataset. |
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We also include the IMDb URLs for each review in a separate |
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[urls_[pos, neg, unsup].txt] file. A review with unique id 200 will |
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have its URL on line 200 of this file. Due the ever-changing IMDb, we |
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are unable to link directly to the review, but only to the movie's |
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review page. |
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In addition to the review text files, we include already-tokenized bag |
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of words (BoW) features that were used in our experiments. These |
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are stored in .feat files in the train/test directories. Each .feat |
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file is in LIBSVM format, an ascii sparse-vector format for labeled |
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data. The feature indices in these files start from 0, and the text |
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tokens corresponding to a feature index is found in [imdb.vocab]. So a |
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line with 0:7 in a .feat file means the first word in [imdb.vocab] |
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(the) appears 7 times in that review. |
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LIBSVM page for details on .feat file format: |
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http://www.csie.ntu.edu.tw/~cjlin/libsvm/ |
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We also include [imdbEr.txt] which contains the expected rating for |
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each token in [imdb.vocab] as computed by (Potts, 2011). The expected |
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rating is a good way to get a sense for the average polarity of a word |
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in the dataset. |
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Citing the dataset |
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When using this dataset please cite our ACL 2011 paper which |
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introduces it. This paper also contains classification results which |
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you may want to compare against. |
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@InProceedings{maas-EtAl:2011:ACL-HLT2011, |
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author = {Maas, Andrew L. and Daly, Raymond E. and Pham, Peter T. and Huang, Dan and Ng, Andrew Y. and Potts, Christopher}, |
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title = {Learning Word Vectors for Sentiment Analysis}, |
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booktitle = {Proceedings of the 49th Annual Meeting of the Association for Computational Linguistics: Human Language Technologies}, |
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month = {June}, |
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year = {2011}, |
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address = {Portland, Oregon, USA}, |
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publisher = {Association for Computational Linguistics}, |
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pages = {142--150}, |
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url = {http://www.aclweb.org/anthology/P11-1015} |
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} |
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References |
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Potts, Christopher. 2011. On the negativity of negation. In Nan Li and |
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David Lutz, eds., Proceedings of Semantics and Linguistic Theory 20, |
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636-659. |
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Contact |
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For questions/comments/corrections please contact Andrew Maas |
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[email protected] |
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