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Mission: DR-NTU (Data) curates, stores, preserves, makes available and enables the download of digital data generated by the NTU research community. The repository develops and provides guidance for managing, sharing, and reusing research data to promote responsible data sharing in support of open science and research integrity.

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59,461 to 59,470 of 73,650 Results
Jul 19, 2020 - Python Scripts
Cheong, Siew Ann, 2020, "Histograms of Significant and Insignificant Log Bigram Rank Movements for the ACM-TWEB Corpus", https://doi.org/10.21979/N9/SSCUFT, DR-NTU (Data), V1
Python script to generate histograms of significant and insignificant log bigram rank movements for the ACM-TWEB corpus.
Python Source Code - 2.7 KB - MD5: 7aeec2ee4b41c6983453062e9ab99da3
Jul 19, 2020 - Python Scripts
Cheong, Siew Ann, 2020, "Histograms of Significant and Insignificant Log Word Rank Movements for the ACM-TWEB Corpus", https://doi.org/10.21979/N9/GS3XPB, DR-NTU (Data), V1
Python script to generate histograms of significant and insignificant log word rank movements for the ACM-TWEB corpus.
Python Source Code - 2.6 KB - MD5: 05efec365883d4bee360008a426a1d55
Jul 19, 2020 - Python Scripts
Cheong, Siew Ann, 2020, "Find Log Word Rank Movements of ACM-TWEB abstracts using ACM-TSEM corpus", https://doi.org/10.21979/N9/JVJ7IS, DR-NTU (Data), V1
Python script to compute the log word rank movements of words that appear more than once in each of the 224 ACM-TWEB abstracts, using the ACM-TSEM corpus.
Python Source Code - 969 B - MD5: ba5f8530738622a77636ed19b3337455
Jul 19, 2020 - Python Scripts
Cheong, Siew Ann, 2020, "Histogram of Bigram-Based Agreements Between TFIDF and RAKE for ACM-TWEB Corpus", https://doi.org/10.21979/N9/R3QTZ5, DR-NTU (Data), V1
Python script to plot the histogram comparing the bigram-based agreement between TFIDF and RAKE for the ACM-TWEB corpus.
Python Source Code - 1.2 KB - MD5: df9d6a9593bb3f098ab4512daec8e9c3
Jul 19, 2020 - Python Scripts
Cheong, Siew Ann, 2020, "Histogram of Bigram-Based Agreements Between TFIDF and LWRM2 for ACM-TWEB Corpus", https://doi.org/10.21979/N9/UBVH8Z, DR-NTU (Data), V1
Python script to plot the histogram comparing the bigram-based agreement between TFIDF and LWRM2 for the ACM-TWEB corpus.
Python Source Code - 1.2 KB - MD5: a0227789b704bc0512efda757f87d060
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