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Parse the dblp data into a structured format for experimentation.

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dblp

This library was implemented to convert the DBLP data into a structured format for experimentation. It was developed to test the SENC (Seeded Estimation of Network Communities) community detection method. If you use it for scientific experiments, please cite the following paper:

@incollection{
    title={Finding Community Topics and Membership in Graphs},
    author={Revelle, Matt and Domeniconi, Carlotta and Sweeney, Mack and Johri, Aditya},
    year={2015},
    isbn={978-3-319-23524-0},
    booktitle={Machine Learning and Knowledge Discovery in Databases},
    volume={9285},
    series={Lecture Notes in Computer Science},
    doi={10.1007/978-3-319-23525-7_38},
    url={http://dx.doi.org/10.1007/978-3-319-23525-7_38},
    publisher={Springer International Publishing},
    pages={625-640}
}

Data Source

The data comes from arnetminer.org, which is maintained by a research group at Tsinghua University in China. It exists in eight different versions. Seven of them can be found here. The 8th and newest version (as of 2015-02-11) can be found here. It is the 8th version which this package was built to parse. However, given a suitable module 1 replacement (see below), any of the versions can be used for the subsequent transformations.

TODO: fill in stats about dataset here

  • 4 files
  • what each contains
  • which are used
  • number of papers, authors, percent with abstract, etc.

Pipeline Design

The entire pipeline is built using the luigi package, which provides a data pipeline dependency resolution scheme based on output files. Hence, there are many output files during all phases of processing. Often these are useful; sometimes they are not. Overall, luigi turned out to be a very nice package to work with. It allows each processing step to be written out as a distinct class. Each of these inherits from luigi.Task. Before running, each task checks its dependent data files. If any are absent, the tasks responsible for building them are run first. After running, each task produces one or more output files, which can then be specified as dependencies for later tasks. Hence, the generation of the entire dataset is as simple as running a task which is dependent on all the others. This task is called BuildDataset, and is present in the pipeline module.

How to Run the Complete Pipeline

The rest of this documentation describes exactly what the full pipeline does and how that is accomplished through several processing stages/modules. To run all stages and produce all outputs, there are three steps.

  1. Download the data files from here. I have added make targets to download and extract this data, so you can simply run make dl && make extract. This will download the data and extract it into the directory data/original-data. Note that make extract will also install a tool to unrar the rar archive; it will be placed in the working directory.
  2. Copy pipeline/config-example.py to pipeline/config.py and modify the directories so the base directory points to the top-level directory you want your data files written to. Place the files you downloaded in step 1 in the location pointed to by originals_dir. Ensure you have the following 3 files in the location of your config.originals_dir:
    • AMiner-Author2Paper.txt
    • AMiner-Author.txt
    • AMiner-Paper.txt
  3. Run the following command, including a start and end year to specify a data range to filter down to. If you do not already have the needed dependencies, you will need to install them to run this. See below for instructions.

python pipeline.py BuildDataset --start <int> --end <int> --local-scheduler

Installing Dependencies

Dependencies include numpy, pandas, luigi, python-igraph, and gensim. To install all dependencies using pip, run:

pip install -r requirements.txt

Outputs

All outputs end up in the data directory inside the base directory, which is specified in the config module by setting base_dir.

Module 1: Relational Representation

Module: aminer Location: base-csv/ Config: base_csv_dir

The first transformation layer involves parsing the given input files into several CSV files which can subsequently be loaded into a relational database or used more easily by other transformation steps. In particular, the aminer module performs the following conversions:

AMiner-Paper.txt        ->  paper.csv  (id,title,venue,year,abstract)
                        ->  refs.csv   (paper_id,ref_id)
                        ->  venue.csv  (venue -- listing of unique venues)
                        ->  year.csv   (year -- listing of unique years)

AMiner-Author.txt       ->  person.csv (id,name)

AMiner-Author2Paper.txt ->  author.csv (author_id,paper_id)

These six CSV files contain all the information used by subsequent processing modules; the four original files from the Aminer dataset are not used again.

Module 2: Filtering

Module: filtering Location: filtered-csv/ Config: filtered_dir

Rather than examining the entire dataset at once, many experiments will likely find it useful to filter to a range of years. For this purpose, the second module provides a filtering interface which takes the six relational data files and filters them based on the paper publication years. The filtering module provides code to do this. All of the tasks involved take a start and end year. Running the FilterAllCSVRecordsToYearRange task like so:

python filtering.py FilterAllCSVRecordsToYearRange --start 1990 --end 2000 --local-scheduler

will produce the following:

paper-1990-2000.csv
refs-1990-2000.csv
venue-1990-2000.csv
person-1990-2000.csv
author-1990-2000.csv

Notice that year.csv is not filtered, for obvious reasons. These files can now be used instead of those produced from the aminer output.

Module 3: Network Building

Module: build_graphs Location: graphs/ Config: graph_dir

This module constructs citation networks from the relational data files. In particular, it contains tasks for building a paper citation graph and an author citation graph, as well as for finding and writing the largest connected component (LCC) of the author citation graph. All tasks take an optional start and end year. If none is passed, the entire dataset is used; otherwise the specified subset is parsed (if not already present in filtered-csv/) and used instead. All graph data can be built by running the BuildAllGraphData task like so:

python build_graphs.py BuildAllGraphData --start 2000 --end 2005 --local-scheduler

This will produce the following output files:

paper-citation-graph-2000-2005.pickle.gz
paper-citation-graph-2000-2005.graphml.gz
paper-id-to-node-id-map-2000-2005.csv
author-citation-graph-2000-2005.graphml.gz
author-id-to-node-id-map-2000-20005.csv
lcc-author-citation-graph-2000-2005.csv
lcc-author-citation-graph-2000-2005.edgelist.txt
lcc-author-citation-graph-2000-2005.pickle.gz
lcc-author-id-to-node-id-map-2000-2005.csv
lcc-venue-id-map-2000-2005.csv
lcc-ground-truth-by-venue-2000-2005.txt
lcc-author-venues-2000-2005.txt

Note that the dates will be absent when running without start and end. So for instance, the last file would be lcc-author-venues.txt instead.

TODO: Add info on each data file

Module 4: Representative Documents

Module: repdocs Location: repdocs/ Config: repdoc_dir

This module creates representative documents (repdocs) for each paper by concatenating the title and abstract with a space between. Subseqeunt processing treats these documents as a corpus to construct term frequency (tf) attributes for each paper. Note that the tf corpus is the well-known bag-of-words (BoW) representation.

Since experiments may also be concerned with authors as nodes in a network, such as in the LCC author citation graph constructed by the build_graphs module, repdocs are also created for each author. The repdoc for a person is built by concatenating the repdocs of all papers authored. These are then treated in the same manner as paper repdocs to build a tf corpus. Term-frequency inverse-document-frequency (tfidf) weighting is also applied to produce an additional corpus file for authors.

All data can be produced by running:

python repdocs.py BuildAllRepdocData --start 2013 --end 2013 --local-scheduler

The following files are produced:

repdoc-by-paper-2013-2013.csv
repdoc-by-paper-vectors-2013-2013.csv
repdoc-by-paper-corpus-2013-2013.dict
repdoc-by-paper-corpus-2013-2013.mm
repdoc-by-paper-corpus-2013-2013.mm.index
paper-id-to-repdoc-id-map-2013-2013.csv
repdoc-by-author-vectors-2013-2013.csv
lcc-repdoc-corpus-tf-2013-2013.mm
lcc-repdoc-corpus-tf-2013-2013.mm.index
lcc-repdoc-corpus-tfidf-2013-2013.mm
lcc-repdoc-corpus-tfidf-2013-2013.mm.index

Note that the files prefixed with lcc- are dependent upon the output of the build_graphs module, since the author ids from the LCC author citation graph are used to filter down the author repdocs used to build the corpus.

TODO: add explanation of data files

Building All

To build all data files for a particular range of years, simply run:

python pipeline.py BuildDataset --start <int> --end <int> --local-scheduler

The start and end arguments can be omitted to build all data files for the whole dataset. In addition, a --workers <int> flag can be used to specify level of multiprocessing to be used. The dependency chain will limit this in some places throughout the processing, but it can provide a signficant speedup overall.

Input Data Format

Paper Format (V8)

The papers in the dataset are represented using a custom non-tabular format which allows for all papers to be stored in the same file in sequential blocks. This is the specification:

#index ---- index id of this paper
#* ---- paper title
#@ ---- authors (separated by semicolons)
#o ---- affiliations (separated by semicolons, and each affiliaiton corresponds to an author in order)
#t ---- year
#c ---- publication venue
#% ---- the id of references of this paper (there are multiple lines, with each indicating a reference)
#! ---- abstract

The following is an example:

#index 1083734
#* ArnetMiner: extraction and mining of academic social networks
#@ Jie Tang;Jing Zhang;Limin Yao;Juanzi Li;Li Zhang;Zhong Su
#o Tsinghua University, Beijing, China;Tsinghua University, Beijing, China;Tsinghua University, Beijing, China;Tsinghua University, Beijing, China;IBM, Beijing, China;IBM, Beijing, China
#t 2008
#c Proceedings of the 14th ACM SIGKDD international conference on Knowledge discovery and data mining
#% 197394
#% 220708
#% 280819
#% 387427
#% 464434
#% 643007
#% 722904
#% 760866
#% 766409
#% 769881
#% 769906
#% 788094
#% 805885
#% 809459
#% 817555
#% 874510
#% 879570
#% 879587
#% 939393
#% 956501
#% 989621
#% 1117023
#% 1250184
#! This paper addresses several key issues in the ArnetMiner system, which aims at extracting and mining academic social networks. Specifically, the system focuses on: 1) Extracting researcher profiles automatically from the Web; 2) Integrating the publication data into the network from existing digital libraries; 3) Modeling the entire academic network; and 4) Providing search services for the academic network. So far, 448,470 researcher profiles have been extracted using a unified tagging approach. We integrate publications from online Web databases and propose a probabilistic framework to deal with the name ambiguity problem. Furthermore, we propose a unified modeling approach to simultaneously model topical aspects of papers, authors, and publication venues. Search services such as expertise search and people association search have been provided based on the modeling results. In this paper, we describe the architecture and main features of the system. We also present the empirical evaluation of the proposed methods.

Name Disambiguation

From the data, it appears the AMiner group did not perform any name disambiguation. This has led to a dataset with quite a few duplicate author records. This package currently does not address these issues.

The most obvious examples are those where the first or second name is abbreviated with a single letter in one place and spelled out fully in another. Use of dots and/or hyphens in some places also leads to different entity mappings. Another case that is quite common is when hyphenated names are spelled in some places with the hyphen and in some without.

There are also simple common misspellings, although these are harder to detect, since an edit distance of 1 or 2 could just as easily be a completely different name. One case which might be differentiated is when the edit is a deletion of a letter in a string of one or more of that same letter. For instance, "Acharya" vs. "Acharyya". Here it likely the second spelling simply has an extraneous y.

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