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Python, Java implementation of TS-SS called from "A Hybrid Geometric Approach for Measuring Similarity Level Among Documents and Document Clustering"

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Vector_Similarity

  • Python, Java implementation of TS-SS called from "A Hybrid Geometric Approach for Measuring Similarity Level Among Documents and Document Clustering"
  • Also, I have summarized "A Hybrid Geometric Approach for Measuring Similarity Level Among Documents and Document Clustering"
  • I recommend TS-SS instead of Cosine distance or Euclidean distance.

The reasons are...

Cosine drawbacks

coise_drawback

Euclidean drawbacks

euclidean drawback

Triangle's Area Similarity (TS)

TS

Sector's Area Similarity (SS)

SS

TS-SS

TS_SS

Results

results

Conclusion

  • In biggest dataset, TS-SS outperforms Cosine with a significant difference, while in other datasets TS-SS outperforms Cosine slightly

  • Therefore, the significant better result of TS-SS in biggest dataset justifies the robustness and reliability of the model for big data and real world data where the variety of documents/texts are high

Reference

[1] A Hybrid Geometric Approach for Measuring Similarity Level Among Documents and Document Clustering [link1] [link2] [View Article]

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Python, Java implementation of TS-SS called from "A Hybrid Geometric Approach for Measuring Similarity Level Among Documents and Document Clustering"

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