Presentation is loading. Please wait.

Presentation is loading. Please wait.

EventCube Aviation Safety Data Analysis System Fangbo Tao, Xiao Yu, Jiawei Han 08/10/13.

Similar presentations


Presentation on theme: "EventCube Aviation Safety Data Analysis System Fangbo Tao, Xiao Yu, Jiawei Han 08/10/13."— Presentation transcript:

1 EventCube Aviation Safety Data Analysis System Fangbo Tao, Xiao Yu, Jiawei Han 08/10/13

2 The data we focus: Huge Collection of Logs Following a normal approach and landing to runway 4 in roc; aircraft was taxied clear of the end of runway to the gate.several ground snow removal vehicles were operating to left of aircraft so we moved to the right side of ramp.…. Each Document

3 Power of Text-Rich Data Cubes Hierarchical Data CubeText Analysis

4 Power of Text-Rich Data Cubes Data CubeRich Text Efficient Summarization Powerful Text Mining

5 Power of Text-Rich Data Cube

6 Other features Contextual SearchHierarchical Dimension Selection : support multiple choices Similar Document Finding : based on Contextual Search Keyword Frequency DistributionMulti-gram Summarization

7 Contextual Search  Motivation:  Every word/concept may have equivalent word/concept  “SVM” = “Support Vector Machine”, “Alt” = “Altitude”  Connections between words  “Kernel Method” - “SVM”, “altitude” – “flight level”

8 Contextual Search  We develop a contextual search framework to build the word-net  Contains 4 different relationships:  A “Use” B: Equivalent terms, B is more common  A “RT” B: Related terms, not hierarchical  A “BT” B: B is the broader word  A “NT” B: B is the narrower word

9 Contextual Search  Step 1: Generate word-net when uploading dataset.  Step 2: Return the related terms when inputing.  Step 3: Automatically include the equivalent terms when searching.  Step 4: Operator Support “AND”/”OR”/”NOT”

10 Hierarchical Dimension Support  Multiple Choice Support  Each Dimension can support several levels  Powerful examples:  “B-737” VS. “B-747”  “Boeing” VS. “Airbus”

11 Document List Result  Using the default Mysql “natural language full text search”  Extract the title based on the most relevant part.  Show tags of dimension values for target dimensions  Highlight the keywords

12 Similar Document  Also contextual search  Step 1: Extract meaningful terms from the original report  Step 2: Using these terms as input, conduct contextual search.

13 Top Cells  Search all the cells in the targeted dimensions, find the most relevant cells  A multi-dimensional cell ranking

14 Single Dimension Distribution Based on Keywords

15  Using a offline + online framework to calculate the distribution.  If Offline:  Combination of keywords are exponential  If Online:  Retrieve the whole corpus every time.  Strategy:  Store the single keyword distribution in the database. [Offline]  Combine the single ones to a new distribution online. [Online]

16 Single Dimension Distribution Based on Keywords  Offline process:  Step1: Map equivalent terms into one.  Step2: Build both keyword reverse index and cell reverse index based on report  Step3: Compare these two reverse indexes and calculate the single term distribution.  Online process [with a list of terms and dimensions]  Step1: match each term into it’s equivalent term.  Step2: Calculate the combined distribution based on the independent assumption, for each dimension  Val(t1..tn) = 1 –π(1-val(ti));

17 Topic Distribution  Based on Topic Cube  Applying topic model.  Support comparison between different cells

18 Unigram/Multigram description  Based on Qiaozhu’s paper, “Automatic Labeling of Multinomial Topic Models”  Find multi-gram candidate from the whole text  Scoring it based on unigram  Adjust it based on it’s length

19 Thinking  Data Cube:  Efficient Summary  Highly Structured Data.  Rich Text:  Topic Analysis, keyword search  Common: ASRS, IMDB, Publication-Net, News…  Network (HIN)  Good at mining, contains structural information.  No information loss

20 Motivation of EventCube  Combine Data Cube with Rich Text.  Combine Summary with Keyword Search  Build a general search/analysis system for rich text cube data.  1. Aviation Safety Reporting Data  Time, Weather, Location, Model…Flight logs  2. Publication Data  Author, Conf, Time, Field, Affliation…Abstract  3. IMDB  Time, Country, Style, Director…Description

21 Thanks


Download ppt "EventCube Aviation Safety Data Analysis System Fangbo Tao, Xiao Yu, Jiawei Han 08/10/13."

Similar presentations


Ads by Google