1 / 28

Memory Standardization

Memory Standardization. Meliton Padilla. Overview. Introduction Related work Methodology Contribution Questions. Abstract. Model the change of memory requirements for cell phones. Related work. Introduction. Methodology. Contribution. Questions. Todays standards. Related work.

mcelroy
Download Presentation

Memory Standardization

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Memory Standardization Meliton Padilla

  2. Overview • Introduction • Related work • Methodology • Contribution • Questions

  3. Abstract • Model the change of memory requirements for cell phones Related work Introduction Methodology Contribution Questions

  4. Todays standards Related work Introduction Methodology Contribution Questions

  5. Original approach • Potential Issues • Noise from multiple posts • Not enough text to generate data • Limited amount of data access Related work Introduction Methodology Contribution Questions

  6. Product reviews Benefits • Less noise • Subject originated • Large sample sizes Related work Introduction Methodology Contribution Questions

  7. Main goal • Extract feature specification from textual reviews • Target memory for multiple devices • Allow product review monitoring to inform when a change needs to be made Related work Introduction Methodology Contribution Questions

  8. Related work Related work Introduction Methodology Contribution Questions

  9. Ganesan, K., Zhai, C., & Viegas, E. (2012, April). Micropinion generation: an unsupervised approach to generating ultra-concise summaries of opinions. InProceedings of the 21st international conference on World Wide Web (pp. 869-878). ACM. Key attributes • Compactness • Summaries should use as few words as possible (between 2-5) • Representativeness • Summaries should reflect major opinions in text • Readability - Summaries should be fairly well formed Related work Introduction Methodology Contribution Questions

  10. Micropinon • A set of short phrases expressing opinions on a specific topic or entity • Leading to a method of also creating reviews on character limited social sites Related work Introduction Methodology Contribution Questions

  11. Example Related work Introduction Methodology Contribution Questions

  12. Issues from textual anaylsis • Different types of grammar • Recreating a new sentence in order to capture original opinion (without using any original text) • How to tell the difference between a factual statement compared to an opinion Related work Introduction Methodology Contribution Questions

  13. solution • Similarity scores: sim(mi,mj) • Measured with Jaccard similarity measure (or cosine) • Allows control redundancy of the same opinion • Readability scores: Sread(mi,mj) - Measure well form structure of phrases (Microsoft Web N-gram) • Representativeness scores: Srep(mi,mj) • Measure how well a phrase represents the opinion from original text • Captured by a pointwise mutual information (PMI) function Related work Introduction Methodology Contribution Questions

  14. Example • Readability scores of phrases Related work Introduction Methodology Contribution Questions

  15. Pang, Bo, and Lillian Lee. "Opinion mining and sentiment analysis." Foundations and trends in information retrieval 2.1-2 (2008): 1-135. Key attributes • Generating feature-based summaries • Distinguishing positive and negative comments • Grouping the data together to make looking for features easier Related work Introduction Methodology Contribution Questions

  16. Example • Each summary should produce Related work Introduction Methodology Contribution Questions

  17. Issues • How to tell if a opinion is positive or negative • Natural language processing techniques • Assuring the feature chosen is relatable to the product and not repeated Related work Introduction Methodology Contribution Questions

  18. Solutions • Wordnet • System that helps find opinion words and frequent features • Part-of-Speech Tagging (POS) • Frequency of nouns, verb, adjective, etc. (Nlprocessor linguistic parser) • Orientation identification for opinion words - Only positive and negative orientations Related work Introduction Methodology Contribution Questions

  19. Example • Using Wordnet to create a positive/negative approach a bipolar cluster Related work Introduction Methodology Contribution Questions

  20. Methodology Related work Introduction Methodology Contribution Questions

  21. Key differences • Focus just on the memory features of a device • Include other electronic devices besides just cell phones, examples such as laptops, mp3s and cameras • Sample current and past reviews to see if a trend can be modeled from the data Related work Introduction Methodology Contribution Questions

  22. Processing techniques • Product reviews and previous data sets Related work Introduction Methodology Contribution Questions

  23. Processing techniques Data is filtered Related work Introduction Methodology Contribution Questions

  24. Processing techniques Steps needed • Collect large amount of data (may be separated by product type) • Extract opinion sentences and sort into a positive/negative category • Keep count of the positive to negative ratio • Use a similarity technique to measure the sweet spot of minimum required memory, in order to have a good product Related work Introduction Methodology Contribution Questions

  25. Processing techniques Potential issues • Getting current reviews from Amazon • Currently provided API to view a current URL review page for 24hours • Comparing different products based on memory capability's • Analyzing textual data Related work Introduction Methodology Contribution Questions

  26. Contribution • Being able to provide a way for consumers or manufacturers an easy method to decide on the memory required Related work Introduction Methodology Contribution Questions

  27. Questions?

  28. References • [1] Pang, B., & Lee, L. (2008). Opinion mining and sentiment analysis.Foundations and trends in information retrieval, 2(1-2), 1-135. • [2] Ganesan, Kavita. "Micropinions vs. Micro-reviews." Text Mining, Analytics & More:. N.p., n.d. Web. 12 Oct. 2016. • [3] Ganesan, K., Zhai, C., & Viegas, E. (2012, April). Micropinion generation: an unsupervised approach to generating ultra-concise summaries of opinions. InProceedings of the 21st international conference on World Wide Web (pp. 869-878). ACM. • [4] Qadir, A. (2009, September). Detecting opinion sentences specific to product features in customer reviews using typed dependency relations. InProceedings of the Workshop on Events in Emerging Text Types (pp. 38-43). Association for Computational Linguistics

More Related